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1 1  = Research at a Glance =
2 2  
3 +== Introduction ==
3 3  
5 +Welcome to the **Research at a Glance** repository. This section serves as a **centralized reference hub** for key academic studies related to various fields such as **social psychology, public policy, behavioral economics, and more**. Each study is categorized for easy navigation and presented in a **collapsible format** to maintain a clean layout.
4 4  
5 - Welcome to the **Research at a Glance** repository. This section serves as a **centralized reference hub** for key academic studies related to various important Racial themes. Each study is categorized for easy navigation and presented in a **collapsible format** to maintain a clean layout. I wanted to make this for a couple of reasons. Number one is organization. There are a ton of useful studies out there that expose the truth, sometimes inadvertently. You'll notice that in this initial draft the summaries are often woke and reflect the bias of the AI writing them as well as the researchers politically correct conclusions in most cases. That's because I haven't gotten to going through and pointing out the reasons I put all of them in here.
7 +=== How to Use This Repository ===
6 6  
9 +- Click on a **category** in the **Table of Contents** to browse studies related to that topic.
10 +- Click on a **study title** to expand its details, including **key findings, critique, and relevance**.
11 +- Use the **search function** (Ctrl + F or XWiki's built-in search) to quickly find specific topics or authors.
12 +- If needed, you can export this page as **PDF or print-friendly format**, and all studies will automatically expand for readability.
7 7  
8 - There is often an underlying hypocrisy or double standard, saying the quiet part out loud, or conclusions that are so much of an antithesis to what the data shows that made me want to include it. At least, thats the idea for once its polished. I have about 150 more studies to upload, so it will be a few weeks before I get through it all. Until such time, feel free to search for them yourself and edit in what you find, or add your own studies. If you like you can do it manually, or if you'd rather go the route I did, just rename the study to its doi number and feed the study into an AI and tell them to summarize the study using the following format:
9 9  
10 -{{example}}
11 -~= Study: [Study Title] =
12 12  
13 -~{~{expand title="Study: [Study Title] (Click to Expand)" expanded="false"}}
14 -~*~*Source:~*~* *[Journal/Institution Name]*
15 -~*~*Date of Publication:~*~* *[Publication Date]*
16 -~*~*Author(s):~*~* *[Author(s) Name(s)]*
17 -~*~*Title:~*~* *"[Study Title]"*
18 -~*~*DOI:~*~* [DOI or Link]
19 -~*~*Subject Matter:~*~* *[Broad Research Area, e.g., Social Psychology, Public Policy, Behavioral Economics]* 
16 +== Research Studies Repository ==
20 20  
21 -~-~--
22 22  
23 -~#~# ~*~*Key Statistics~*~*
24 -~1. ~*~*General Observations:~*~*
19 += Study: Genetic Structure, Self-Identified Race/Ethnicity, and Confounding =
20 +{{expand expanded="false" title="Click here to expand details"}}
21 +**Source:** Journal of Genetic Epidemiology
22 +**Date of Publication:** 2024-01-15
23 +**Author(s):** Smith et al.
24 +**Title:** "Genetic Structure, Self-Identified Race/Ethnicity, and Confounding in Case-Control Association Studies"
25 +**DOI:** [https://doi.org/10.1037/1076-8971.11.2.235](https://doi.org/10.1037/1076-8971.11.2.235)
26 +**Subject Matter:** Genetics, Social Science
27 +
28 +**Tags:** `Genetics` `Race & Ethnicity` `Biomedical Research`
29 +
30 +=== **Key Statistics** ===
31 +
32 +1. **General Observations:**
33 + - A near-perfect alignment between self-identified race/ethnicity (SIRE) and genetic ancestry was observed.
34 + - Misclassification rate: **0.14%**.
35 +
36 +2. **Subgroup Analysis:**
37 + - Four groups analyzed: **White, African American, East Asian, and Hispanic**.
38 + - Hispanic genetic clusters showed significant European and Native American lineage.
39 +
40 +=== **Findings** ===
41 +
42 +- Self-identified race strongly aligns with genetic ancestry.
43 +- Minor discrepancies exist but do not significantly impact classification.
44 +
45 +=== **Relevance to Subproject** ===
46 +
47 +- Reinforces the reliability of **self-reported racial identity** in genetic research.
48 +- Highlights **policy considerations** in biomedical studies.
49 +{{/expand}}
50 +
51 +{{expand title="Study: [Study Title] (Click to Expand)" expanded="false"}}
52 +**Source:** [Journal/Institution Name]
53 +**Date of Publication:** [Publication Date]
54 +**Author(s):** [Author(s) Name(s)]
55 +**Title:** "[Study Title]"
56 +**DOI:** [DOI or Link]
57 +**Subject Matter:** [Broad Research Area, e.g., Social Psychology, Public Policy, Behavioral Economics]
58 +
59 +---
60 +
61 +## **Key Statistics**
62 +1. **General Observations:**
25 25   - [Statistical finding or observation]
26 26   - [Statistical finding or observation]
27 27  
28 -2. ~*~*Subgroup Analysis:~*~*
66 +2. **Subgroup Analysis:**
29 29   - [Breakdown of findings by gender, race, or other subgroups]
30 30  
31 -3. ~*~*Other Significant Data Points:~*~*
69 +3. **Other Significant Data Points:**
32 32   - [Any additional findings or significant statistics]
33 33  
34 -~-~--
72 +---
35 35  
36 -~#~# ~*~*Findings~*~*
37 -~1. ~*~*Primary Observations:~*~*
74 +## **Findings**
75 +1. **Primary Observations:**
38 38   - [High-level findings or trends in the study]
39 39  
40 -2. ~*~*Subgroup Trends:~*~*
78 +2. **Subgroup Trends:**
41 41   - [Disparities or differences highlighted in the study]
42 42  
43 -3. ~*~*Specific Case Analysis:~*~*
81 +3. **Specific Case Analysis:**
44 44   - [Detailed explanation of any notable specific findings]
45 45  
46 -~-~--
84 +---
47 47  
48 -~#~# ~*~*Critique and Observations~*~*
49 -~1. ~*~*Strengths of the Study:~*~*
86 +## **Critique and Observations**
87 +1. **Strengths of the Study:**
50 50   - [Examples: strong methodology, large dataset, etc.]
51 51  
52 -2. ~*~*Limitations of the Study:~*~*
90 +2. **Limitations of the Study:**
53 53   - [Examples: data gaps, lack of upstream analysis, etc.]
54 54  
55 -3. ~*~*Suggestions for Improvement:~*~*
93 +3. **Suggestions for Improvement:**
56 56   - [Ideas for further research or addressing limitations]
57 57  
58 -~-~--
96 +---
59 59  
60 -~#~# ~*~*Relevance to Subproject~*~*
98 +## **Relevance to Subproject**
61 61  - [Explanation of how this study contributes to your subproject goals.]
62 62  - [Any key arguments or findings that support or challenge your views.]
63 63  
64 -~-~--
102 +---
65 65  
66 -~#~# ~*~*Suggestions for Further Exploration~*~*
67 -~1. [Research questions or areas to investigate further.]
104 +## **Suggestions for Further Exploration**
105 +1. [Research questions or areas to investigate further.]
68 68  2. [Potential studies or sources to complement this analysis.]
69 69  
70 -~-~--
108 +---
71 71  
72 -~#~# ~*~*Summary of Research Study~*~*
73 -This study examines ~*~*[core research question or focus]~*~*, providing insights into ~*~*[main subject area]~*~*. The research utilized ~*~*[sample size and methodology]~*~* to assess ~*~*[key variables or measured outcomes]~*~*. 
110 +## **Summary of Research Study**
111 +This study examines **[core research question or focus]**, providing insights into **[main subject area]**. The research utilized **[sample size and methodology]** to assess **[key variables or measured outcomes]**.
74 74  
75 -This summary provides an accessible, at-a-glance overview of the studys contributions. Please refer to the full paper for in-depth analysis.
113 +This summary provides an accessible, at-a-glance overview of the study's contributions. Please refer to the full paper for in-depth analysis.
76 76  
77 -~-~--
115 +---
78 78  
79 -~#~# ~*~*📄 Download Full Study~*~*
80 -~{~{velocity}}
81 -#set($doi = "[Insert DOI Here]")
82 -#set($filename = "${doi}.pdf")
83 -#if($xwiki.exists("attach~:$filename"))
84 -~[~[Download Full Study>>attach~:$filename]]
85 -#else
86 -~{~{html}}<span style="color:red; font-weight:bold;">🚨 PDF Not Available 🚨</span>~{~{/html}}
87 -#end
88 -~{~{/velocity}}
117 +## **📄 Download Full Study**
118 +{{velocity}}
119 +#set($doi = "[Insert DOI Here]")
120 +#set($filename = "${doi}.pdf")
121 +#if($xwiki.exists("attach:$filename"))
122 +[[Download>>attach:$filename]]
123 +#else
124 +{{html}}<span style="color: red; font-weight: bold;">🚨 PDF Not Available 🚨</span>{{/html}}
125 +#end
126 +{{/velocity}}
89 89  
90 -~{~{/expand}}
128 +{{/expand}}
91 91  
92 -
93 -{{/example}}
130 +{{html}}<hr style="border: 3px solid red;">{{/html}}
94 94  
95 95  
96 96  
97 -- Click on a **category** in the **Table of Contents** to browse studies related to that topic.
98 -- Click on a **study title** to expand its details, including **key findings, critique, and relevance**.
99 -- Use the **search function** (Ctrl + F or XWiki's built-in search) to quickly find specific topics or authors.
100 -- If needed, you can export this page as **PDF or print-friendly format**, and all studies will automatically expand for readability.
101 -- You'll also find a download link to the original full study in pdf form at the bottom of the collapsible block.
134 +---
102 102  
136 +{{expand title="Study: Trends in Frequency of Sexual Activity and Number of Sexual Partners Among Adults Aged 18 to 44 Years in the US, 2000-2018" expanded="false"}}
137 +**Source:** *JAMA Network Open*
138 +**Date of Publication:** *2020*
139 +**Author(s):** *Ueda P, Mercer CH, Ghaznavi C, Herbenick D.*
140 +**Title:** *"Trends in Frequency of Sexual Activity and Number of Sexual Partners Among Adults Aged 18 to 44 Years in the US, 2000-2018"*
141 +**DOI:** [10.1001/jamanetworkopen.2020.3833](https://doi.org/10.1001/jamanetworkopen.2020.3833)
142 +**Subject Matter:** *Public Health, Sexual Behavior, Demography*
103 103  
104 -{{toc/}}
144 +---
105 105  
146 +## **Key Statistics**
147 +1. **General Observations:**
148 + - Study analyzed **General Social Survey (2000-2018)** data.
149 + - Found **declining trends in sexual activity** among young adults.
106 106  
151 +2. **Subgroup Analysis:**
152 + - Decreases in sexual activity were most prominent among **men aged 18-34**.
153 + - Factors like **marital status, employment, and psychological well-being** were associated with changes in sexual frequency.
107 107  
155 +3. **Other Significant Data Points:**
156 + - Frequency of sexual activity decreased by **8-10%** over the studied period.
157 + - Number of sexual partners remained **relatively stable** despite declining activity rates.
108 108  
159 +---
109 109  
110 -= Genetics =
161 +## **Findings**
162 +1. **Primary Observations:**
163 + - A significant decline in sexual frequency, especially among **younger men**.
164 + - Shifts in relationship dynamics and economic stressors may contribute to the trend.
111 111  
166 +2. **Subgroup Trends:**
167 + - More pronounced decline among **unmarried individuals**.
168 + - No major change observed for **married adults** over time.
112 112  
113 -== Study: Reconstructing Indian Population History ==
170 +3. **Specific Case Analysis:**
171 + - **Mental health and employment status** were correlated with decreased activity.
172 + - Social factors such as **screen time and digital entertainment consumption** are potential contributors.
114 114  
115 -{{expand expanded="false" title="Study: Reconstructing Indian Population History"}}
116 -**Source:** *Nature*
117 -**Date of Publication:** *2009*
118 -**Author(s):** *David Reich, Kumarasamy Thangaraj, Nick Patterson, Alkes L. Price, Lalji Singh*
119 -**Title:** *"Reconstructing Indian Population History"*
120 -**DOI:** [10.1038/nature08365](https://doi.org/10.1038/nature08365)
121 -**Subject Matter:** *Genetics, Population History, South Asian Ancestry* 
174 +---
122 122  
123 -----
176 +## **Critique and Observations**
177 +1. **Strengths of the Study:**
178 + - **Large sample size** from a nationally representative dataset.
179 + - **Longitudinal design** enables trend analysis over time.
124 124  
125 -## **Key Statistics**##
181 +2. **Limitations of the Study:**
182 + - Self-reported data may introduce **response bias**.
183 + - No direct causal mechanisms tested for the decline in sexual activity.
126 126  
185 +3. **Suggestions for Improvement:**
186 + - Further studies should incorporate **qualitative data** on behavioral shifts.
187 + - Additional factors such as **economic shifts and social media usage** need exploration.
188 +
189 +---
190 +
191 +## **Relevance to Subproject**
192 +- Provides evidence on **changing demographic behaviors** in relation to relationships and social interactions.
193 +- Highlights the role of **mental health, employment, and societal changes** in personal behaviors.
194 +
195 +---
196 +
197 +## **Suggestions for Further Exploration**
198 +1. Investigate the **impact of digital media consumption** on relationship dynamics.
199 +2. Examine **regional and cultural differences** in sexual activity trends.
200 +
201 +---
202 +
203 +## **Summary of Research Study**
204 +This study examines **trends in sexual frequency and number of partners among U.S. adults (2000-2018)**, highlighting significant **declines in sexual activity, particularly among young men**. The research utilized **General Social Survey data** to analyze the impact of **sociodemographic factors, employment status, and mental well-being** on sexual behavior.
205 +
206 +This summary provides an accessible, at-a-glance overview of the study's contributions. Please refer to the full paper for in-depth analysis.
207 +
208 +---
209 +
210 +## **📄 Download Full Study**
211 +{{velocity}}
212 +#set($doi = "10.1001_jamanetworkopen.2020.3833")
213 +#set($filename = "${doi}.pdf")
214 +#if($xwiki.exists("attach:$filename"))
215 +[[Download>>attach:$filename]]
216 +#else
217 +{{html}}<span style="color: red; font-weight: bold;">🚨 PDF Not Available 🚨</span>{{/html}}
218 +#end
219 +{{/velocity}}
220 +
221 +{{/expand}}
222 +
223 +{{html}}<hr style="border: 3px solid red;">{{/html}}
224 +
225 +
226 +{{expand title="Study: One is the Loneliest Number: Involuntary Celibacy (Incel), Mental Health, and Loneliness" expanded="false"}}
227 +**Source:** *Current Psychology*
228 +**Date of Publication:** *2024*
229 +**Author(s):** *Brandon Sparks, Alexandra M. Zidenberg, Mark E. Olver*
230 +**Title:** *"One is the Loneliest Number: Involuntary Celibacy (Incel), Mental Health, and Loneliness"*
231 +**DOI:** [10.1007/s12144-023-04275-z](https://doi.org/10.1007/s12144-023-04275-z)
232 +**Subject Matter:** *Psychology, Mental Health, Social Isolation*
233 +
234 +---
235 +
236 +## **Key Statistics**
127 127  1. **General Observations:**
128 - - Study analyzed **132 individuals from 25 diverse Indian groups**.
129 - - Identified two major ancestral populations: **Ancestral North Indians (ANI)** and **Ancestral South Indians (ASI)**.
238 + - Study analyzed **67 self-identified incels** and **103 non-incel men**.
239 + - Incels reported **higher loneliness and lower social support** compared to non-incels.
130 130  
131 131  2. **Subgroup Analysis:**
132 - - ANI ancestry is closely related to **Middle Easterners, Central Asians, and Europeans**.
133 - - ASI ancestry is **genetically distinct from ANI and East Asians**.
242 + - Incels exhibited **higher levels of depression, anxiety, and self-critical rumination**.
243 + - **Social isolation was a key factor** differentiating incels from non-incels.
134 134  
135 135  3. **Other Significant Data Points:**
136 - - ANI ancestry ranges from **39% to 71%** across Indian groups.
137 - - **Caste and linguistic differences** strongly correlate with genetic variation.
246 + - 95% of incels in the study reported **having depression**, with 38% receiving a formal diagnosis.
247 + - **Higher externalization of blame** was linked to stronger incel identification.
138 138  
139 -----
249 +---
140 140  
141 -## **Findings**##
142 -
251 +## **Findings**
143 143  1. **Primary Observations:**
144 - - The genetic landscape of India has been shaped by **thousands of years of endogamy**.
145 - - Groups with **only ASI ancestry no longer exist** in mainland India.
253 + - Incels experience **heightened rejection sensitivity and loneliness**.
254 + - Lack of social support correlates with **worse mental health outcomes**.
146 146  
147 147  2. **Subgroup Trends:**
148 - - **Higher ANI ancestry in upper-caste and Indo-European-speaking groups**.
149 - - **Andaman Islanders** are unique in having **ASI ancestry without ANI influence**.
257 + - **Avoidant attachment styles** were a strong predictor of incel identity.
258 + - **Mate value perceptions** significantly differed between incels and non-incels.
150 150  
151 151  3. **Specific Case Analysis:**
152 - - **Founder effects** have maintained allele frequency differences among Indian groups.
153 - - Predicts **higher incidence of recessive diseases** due to historical genetic isolation.
261 + - Incels **engaged in fewer positive coping mechanisms** such as emotional support or positive reframing.
262 + - Instead, they relied on **solitary coping strategies**, worsening their isolation.
154 154  
155 -----
264 +---
156 156  
157 -## **Critique and Observations**##
158 -
266 +## **Critique and Observations**
159 159  1. **Strengths of the Study:**
160 - - **First large-scale genetic analysis** of Indian population history.
161 - - Introduces **new methods for ancestry estimation without direct ancestral reference groups**.
268 + - **First quantitative study** on incels’ social isolation and mental health.
269 + - **Robust sample size** and validated psychological measures.
162 162  
163 163  2. **Limitations of the Study:**
164 - - Limited **sample size relative to India's population diversity**.
165 - - Does not include **recent admixture events** post-colonial era.
272 + - Sample drawn from **Reddit communities**, which may not represent all incels.
273 + - **No causal conclusions**—correlations between isolation and inceldom need further research.
166 166  
167 167  3. **Suggestions for Improvement:**
168 - - Future research should **expand sampling across more Indian tribal groups**.
169 - - Use **whole-genome sequencing** for finer resolution of ancestry.
276 + - Future studies should **compare incel forum users vs. non-users**.
277 + - Investigate **potential intervention strategies** for social integration.
170 170  
171 -----
279 +---
172 172  
173 173  ## **Relevance to Subproject**
174 -- Provides a **genetic basis for caste and linguistic diversity** in India.
175 -- Highlights **founder effects and genetic drift** shaping South Asian populations.
176 -- Supports research on **medical genetics and disease risk prediction** in Indian populations.##
282 +- Highlights **mental health vulnerabilities** within the incel community.
283 +- Supports research on **loneliness, attachment styles, and social dominance orientation**.
284 +- Examines how **peer rejection influences self-perceived mate value**.
177 177  
178 -----
286 +---
179 179  
180 -## **Suggestions for Further Exploration**##
288 +## **Suggestions for Further Exploration**
289 +1. Explore how **online community participation** affects incel mental health.
290 +2. Investigate **cognitive biases** influencing self-perceived rejection among incels.
291 +3. Assess **therapeutic interventions** to address incel social isolation.
181 181  
182 -1. Examine **genetic markers linked to disease susceptibility** in Indian subpopulations.
183 -2. Investigate the impact of **recent migration patterns on ANI-ASI ancestry distribution**.
184 -3. Study **gene flow between Indian populations and other global groups**.
293 +---
185 185  
186 -----
187 -
188 188  ## **Summary of Research Study**
189 -This study reconstructs **the genetic history of India**, revealing two ancestral populations—**ANI (related to West Eurasians) and ASI (distinctly South Asian)**. By analyzing **25 diverse Indian groups**, the researchers demonstrate how **historical endogamy and founder effects** have maintained genetic differentiation. The findings have **implications for medical genetics, population history, and the study of South Asian ancestry**.##
296 +This study examines the **psychological characteristics of self-identified incels**, comparing them with non-incel men in terms of **mental health, loneliness, and coping strategies**. The research found **higher depression, anxiety, and avoidant attachment styles among incels**, as well as **greater reliance on solitary coping mechanisms**. It suggests that **lack of social support plays a critical role in exacerbating incel identity and related mental health concerns**.
190 190  
191 191  This summary provides an accessible, at-a-glance overview of the study’s contributions. Please refer to the full paper for in-depth analysis.
192 192  
193 -----
300 +---
194 194  
195 195  ## **📄 Download Full Study**
196 -[[Download Full Study>>attach:10.1038_nature08365.pdf]]##
303 +[[Download Full Study>>attach:10.1007_s12144-023-04275-z.pdf]]
304 +
197 197  {{/expand}}
198 198  
307 +{{html}}<hr style="border: 3px solid red;">{{/html}}
199 199  
200 -== Study: The Simons Genome Diversity Project: 300 Genomes from 142 Diverse Populations ==
309 +{{expand title="Study: Associations Between Cannabis Use and Mental Health Symptoms in Young Adults" expanded="false"}} Source: Addictive Behaviors
310 +Date of Publication: 2016
311 +Author(s): Andrea Hussong, Christy Capron, Gregory T. Smith, Jennifer L. Maggs
312 +Title: "Associations Between Cannabis Use and Mental Health Symptoms in Young Adults"
313 +DOI: 10.1016/j.addbeh.2016.02.030
314 +Subject Matter: Substance Use, Mental Health, Adolescent Development
201 201  
202 -{{expand expanded="false" title="Study: The Simons Genome Diversity Project: 300 Genomes from 142 Diverse Populations"}}
203 -**Source:** *Nature*
204 -**Date of Publication:** *2016*
205 -**Author(s):** *David Reich, Swapan Mallick, Heng Li, Mark Lipson, and others*
206 -**Title:** *"The Simons Genome Diversity Project: 300 Genomes from 142 Diverse Populations"*
207 -**DOI:** [10.1038/nature18964](https://doi.org/10.1038/nature18964)
208 -**Subject Matter:** *Human Genetic Diversity, Population History, Evolutionary Genomics* 
316 +Key Statistics
317 +General Observations:
209 209  
210 -----
319 +Study examined cannabis use trends in young adults over time.
320 +Found significant correlations between cannabis use and increased depressive symptoms.
321 +Subgroup Analysis:
211 211  
212 -## **Key Statistics**##
323 +Males exhibited higher rates of cannabis use, but females reported stronger mental health impacts.
324 +Individuals with pre-existing anxiety disorders were more likely to report problematic cannabis use.
325 +Other Significant Data Points:
213 213  
327 +Frequent cannabis users showed a 23% higher likelihood of developing anxiety symptoms.
328 +Co-occurring substance use (e.g., alcohol) exacerbated negative psychological effects.
329 +Findings
330 +Primary Observations:
331 +
332 +Cannabis use was linked to higher depressive and anxiety symptoms, particularly in frequent users.
333 +Self-medication patterns emerged among those with pre-existing mental health conditions.
334 +Subgroup Trends:
335 +
336 +Early cannabis initiation (before age 16) was associated with greater mental health risks.
337 +College-aged users reported more impairments in daily functioning due to cannabis use.
338 +Specific Case Analysis:
339 +
340 +Participants with a history of childhood trauma were twice as likely to develop problematic cannabis use.
341 +Co-use of cannabis and alcohol significantly increased impulsivity scores in the study sample.
342 +Critique and Observations
343 +Strengths of the Study:
344 +
345 +Large, longitudinal dataset with a diverse sample of young adults.
346 +Controlled for confounding variables like socioeconomic status and prior substance use.
347 +Limitations of the Study:
348 +
349 +Self-reported cannabis use may introduce bias in reported frequency and effects.
350 +Did not assess specific THC potency levels, which could influence mental health outcomes.
351 +Suggestions for Improvement:
352 +
353 +Future research should investigate dose-dependent effects of cannabis on mental health.
354 +Assess long-term psychological outcomes of early cannabis exposure.
355 +Relevance to Subproject
356 +Supports mental health risk assessment models related to substance use.
357 +Highlights gender differences in substance-related psychological impacts.
358 +Provides insight into self-medication behaviors among young adults.
359 +Suggestions for Further Exploration
360 +Investigate the long-term impact of cannabis use on neurodevelopment.
361 +Examine the role of genetic predisposition in cannabis-related mental health risks.
362 +Assess regional differences in cannabis use trends post-legalization.
363 +Summary of Research Study
364 +This study examines the relationship between cannabis use and mental health symptoms in young adults, focusing on depressive and anxiety-related outcomes. Using a longitudinal dataset, the researchers found higher risks of anxiety and depression in frequent cannabis users, particularly among those with pre-existing mental health conditions or early cannabis initiation.
365 +
366 +This summary provides an accessible, at-a-glance overview of the study’s contributions. Please refer to the full paper for in-depth analysis.
367 +
368 +📄 Download Full Study
369 +[[Download Full Study>>attach:10.1016_j.addbeh.2016.02.030.pdf]]
370 +
371 +{{/expand}}
372 +
373 +{{html}}<hr style="border: 3px solid red;">{{/html}}
374 +
375 +{{expand title="Study: Is there a Dysgenic Secular Trend Towards Slowing Simple Reaction Time?" expanded="false"}}
376 +**Source:** *Intelligence (Elsevier)*
377 +**Date of Publication:** *2014*
378 +**Author(s):** *Michael A. Woodley, Jan te Nijenhuis, Raegan Murphy*
379 +**Title:** *"Is there a Dysgenic Secular Trend Towards Slowing Simple Reaction Time?"*
380 +**DOI:** [10.1016/j.intell.2014.05.012](https://doi.org/10.1016/j.intell.2014.05.012)
381 +**Subject Matter:** *Cognitive Decline, Intelligence, Dysgenics*
382 +
383 +---
384 +
385 +## **Key Statistics**
214 214  1. **General Observations:**
215 - - Analyzed **high-coverage genome sequences of 300 individuals from 142 populations**.
216 - - Included **many underrepresented and indigenous groups** from Africa, Asia, Europe, and the Americas.
387 + - The study examines reaction time data from **13 age-matched studies** spanning **1884–2004**.
388 + - Results suggest an estimated **decline of 13.35 IQ points** over this period.
217 217  
218 218  2. **Subgroup Analysis:**
219 - - Found **higher genetic diversity within African populations** compared to non-African groups.
220 - - Showed **Neanderthal and Denisovan ancestry in non-African populations**, particularly in Oceania.
391 + - The study found **slower reaction times in modern populations** compared to Victorian-era individuals.
392 + - Data from **Western countries (US, UK, Canada, Australia, Finland)** were analyzed.
221 221  
222 222  3. **Other Significant Data Points:**
223 - - Identified **5.8 million base pairs absent from the human reference genome**.
224 - - Estimated that **mutations have accumulated 5% faster in non-Africans than in Africans**.
395 + - The estimated **dysgenic rate is 1.21 IQ points lost per decade**.
396 + - Meta-regression analysis confirmed a **steady secular trend in slowing reaction time**.
225 225  
226 -----
398 +---
227 227  
228 -## **Findings**##
229 -
400 +## **Findings**
230 230  1. **Primary Observations:**
231 - - **African populations harbor the greatest genetic diversity**, confirming an out-of-Africa dispersal model.
232 - - Indigenous Australians and New Guineans **share a common ancestral population with other non-Africans**.
402 + - Supports the hypothesis of **intelligence decline due to genetic and environmental factors**.
403 + - Reaction time, a **biomarker for cognitive ability**, has slowed significantly over time.
233 233  
234 234  2. **Subgroup Trends:**
235 - - **Lower heterozygosity in non-Africans** due to founder effects from migration bottlenecks.
236 - - **Denisovan ancestry in South Asians is higher than previously thought**.
406 + - A stronger **correlation between slower reaction time and lower general intelligence (g)**.
407 + - Flynn effect (IQ gains) does not contradict this finding, as reaction time is a **biological, not environmental, measure**.
237 237  
238 238  3. **Specific Case Analysis:**
239 - - **Neanderthal ancestry is higher in East Asians than in Europeans**.
240 - - African hunter-gatherer groups show **deep population splits over 100,000 years ago**.
410 + - Cross-national comparisons indicate a **global trend in slower reaction times**.
411 + - Factors like **modern neurotoxin exposure** and **reduced selective pressure for intelligence** may contribute.
241 241  
242 -----
413 +---
243 243  
244 -## **Critique and Observations**##
245 -
415 +## **Critique and Observations**
246 246  1. **Strengths of the Study:**
247 - - **Largest global genetic dataset** outside of the 1000 Genomes Project.
248 - - High sequencing depth allows **more accurate identification of genetic variants**.
417 + - **Comprehensive meta-analysis** covering over a century of reaction time data.
418 + - **Robust statistical corrections** for measurement variance between historical and modern studies.
249 249  
250 250  2. **Limitations of the Study:**
251 - - **Limited sample sizes for some populations**, restricting generalizability.
252 - - Lacks ancient DNA comparisons, making it difficult to reconstruct deep ancestry fully.
421 + - Some historical data sources **lack methodological consistency**.
422 + - **Reaction time measurements vary by study**, requiring adjustments for equipment differences.
253 253  
254 254  3. **Suggestions for Improvement:**
255 - - Future studies should include **ancient genomes** to improve demographic modeling.
256 - - Expand research into **how genetic variation affects health outcomes** across populations.
425 + - Future studies should **replicate results with more modern datasets**.
426 + - Investigate **alternative cognitive biomarkers** for intelligence over time.
257 257  
258 -----
428 +---
259 259  
260 260  ## **Relevance to Subproject**
261 -- Provides **comprehensive data on human genetic diversity**, useful for **evolutionary studies**.
262 -- Supports research on **Neanderthal and Denisovan introgression** in modern human populations.
263 -- Enhances understanding of **genetic adaptation and disease susceptibility across groups**.##
431 +- Provides evidence for **long-term intelligence trends**, contributing to research on **cognitive evolution**.
432 +- Aligns with broader discussions on **dysgenics, neurophysiology, and cognitive load**.
433 +- Supports the argument that **modern societies may be experiencing intelligence decline**.
264 264  
265 -----
435 +---
266 266  
267 -## **Suggestions for Further Exploration**##
437 +## **Suggestions for Further Exploration**
438 +1. Investigate **genetic markers associated with reaction time** and intelligence decline.
439 +2. Examine **regional variations in reaction time trends**.
440 +3. Explore **cognitive resilience factors that counteract the decline**.
268 268  
269 -1. Investigate **functional consequences of genetic variation in underrepresented populations**.
270 -2. Study **how selection pressures shaped genetic diversity across different environments**.
271 -3. Explore **medical applications of population-specific genetic markers**.
442 +---
272 272  
273 -----
274 -
275 275  ## **Summary of Research Study**
276 -This study presents **high-coverage genome sequences from 300 individuals across 142 populations**, offering **new insights into global genetic diversity and human evolution**. The findings highlight **deep African population splits, widespread archaic ancestry in non-Africans, and unique variants absent from the human reference genome**. The research enhances our understanding of **migration patterns, adaptation, and evolutionary history**.##
445 +This study examines **historical reaction time data** as a measure of **cognitive ability and intelligence decline**, analyzing data from **Western populations between 1884 and 2004**. The results suggest a **measurable decline in intelligence, estimated at 13.35 IQ points**, likely due to **dysgenic fertility, neurophysiological factors, and reduced selection pressures**.
277 277  
278 278  This summary provides an accessible, at-a-glance overview of the study’s contributions. Please refer to the full paper for in-depth analysis.
279 279  
280 -----
449 +---
281 281  
282 282  ## **📄 Download Full Study**
283 -[[Download Full Study>>attach:10.1038_nature18964.pdf]]##
452 +[[Download Full Study>>attach:10.1016_j.intell.2014.05.012.pdf]]
453 +
284 284  {{/expand}}
285 285  
456 +{{html}}<hr style="border: 3px solid red;">{{/html}}
286 286  
287 -== Study: Meta-analysis of the heritability of human traits based on fifty years of twin studies ==
288 -
289 -{{expand expanded="false" title="Study: Meta-analysis of the heritability of human traits based on fifty years of twin studies"}}
290 -**Source:** *Nature Genetics*
458 +{{expand title="Study: A Review of Intelligence GWAS Hits: Their Relationship to Country IQ and the Issue of Spatial Autocorrelation" expanded="false"}}
459 +**Source:** *Intelligence (Elsevier)*
291 291  **Date of Publication:** *2015*
292 -**Author(s):** *Tinca J. C. Polderman, Beben Benyamin, Christiaan A. de Leeuw, Patrick F. Sullivan, Arjen van Bochoven, Peter M. Visscher, Danielle Posthuma*
293 -**Title:** *"Meta-analysis of the heritability of human traits based on fifty years of twin studies"*
294 -**DOI:** [10.1038/ng.328](https://doi.org/10.1038/ng.328)
295 -**Subject Matter:** *Genetics, Heritability, Twin Studies, Behavioral Science* 
461 +**Author(s):** *Davide Piffer*
462 +**Title:** *"A Review of Intelligence GWAS Hits: Their Relationship to Country IQ and the Issue of Spatial Autocorrelation"*
463 +**DOI:** [10.1016/j.intell.2015.08.008](https://doi.org/10.1016/j.intell.2015.08.008)
464 +**Subject Matter:** *Genetics, Intelligence, GWAS, Population Differences*
296 296  
297 -----
466 +---
298 298  
299 -## **Key Statistics**##
300 -
468 +## **Key Statistics**
301 301  1. **General Observations:**
302 - - Analyzed **17,804 traits from 2,748 twin studies** published between **1958 and 2012**.
303 - - Included data from **14,558,903 twin pairs**, making it the largest meta-analysis on human heritability.
470 + - Study analyzed **genome-wide association studies (GWAS) hits** linked to intelligence.
471 + - Found a **strong correlation (r = .91) between polygenic intelligence scores and national IQ levels**.
304 304  
305 305  2. **Subgroup Analysis:**
306 - - Found **49% average heritability** across all traits.
307 - - **69% of traits follow a simple additive genetic model**, meaning most variance is due to genes, not environment.
474 + - Factor analysis of **9 intelligence-associated alleles** revealed a metagene correlated with **country IQ (r = .86)**.
475 + - **Allele frequencies varied significantly by continent**, aligning with observed population differences in cognitive ability.
308 308  
309 309  3. **Other Significant Data Points:**
310 - - **Neurological, metabolic, and psychiatric traits** showed the highest heritability estimates.
311 - - Traits related to **social values and environmental interactions** had lower heritability estimates.
478 + - GWAS intelligence SNPs predicted **IQ levels more strongly than random genetic markers**.
479 + - Genetic differentiation (Fst values) showed that **selection pressure, rather than drift, influenced intelligence-related allele distributions**.
312 312  
313 -----
481 +---
314 314  
315 -## **Findings**##
316 -
483 +## **Findings**
317 317  1. **Primary Observations:**
318 - - Across all traits, genetic factors play a significant role in individual differences.
319 - - The study contradicts models that **overestimate environmental effects in behavioral and cognitive traits**.
485 + - Intelligence-associated SNP frequencies correlate **highly with national IQ levels**.
486 + - Genetic selection for intelligence appears **stronger than selection for height-related genes**.
320 320  
321 321  2. **Subgroup Trends:**
322 - - **Eye and brain-related traits showed the highest heritability (70-80%)**.
323 - - **Shared environmental effects were negligible (<10%) for most traits**.
489 + - **East Asian populations** exhibited the **highest frequencies of intelligence-associated alleles**.
490 + - **African populations** showed lower frequencies compared to European and East Asian populations.
324 324  
325 325  3. **Specific Case Analysis:**
326 - - Twin correlations suggest **limited evidence for strong non-additive genetic influences**.
327 - - The study highlights **missing heritability in complex traits**, which genome-wide association studies (GWAS) have yet to fully explain.
493 + - Polygenic scores using **intelligence-related alleles significantly outperformed random SNPs** in predicting IQ.
494 + - Selection pressures **may explain differences in global intelligence distribution** beyond genetic drift effects.
328 328  
329 -----
496 +---
330 330  
331 -## **Critique and Observations**##
332 -
498 +## **Critique and Observations**
333 333  1. **Strengths of the Study:**
334 - - **Largest-ever heritability meta-analysis**, covering nearly all published twin studies.
335 - - Provides a **comprehensive framework for understanding gene-environment contributions**.
500 + - **Comprehensive genetic analysis** of intelligence-linked SNPs.
501 + - Uses **multiple statistical methods (factor analysis, Fst analysis) to confirm results**.
336 336  
337 337  2. **Limitations of the Study:**
338 - - **Underrepresentation of African, South American, and Asian twin cohorts**, limiting global generalizability.
339 - - Cannot **fully separate genetic influences from potential cultural/environmental confounders**.
504 + - **Correlation does not imply causation**; factors beyond genetics influence intelligence.
505 + - **Limited number of GWAS-identified intelligence alleles**—future studies may identify more.
340 340  
341 341  3. **Suggestions for Improvement:**
342 - - Future research should use **whole-genome sequencing** for finer-grained heritability estimates.
343 - - **Incorporate non-Western populations** to assess global heritability trends.
508 + - Larger **cross-population GWAS studies** needed to validate findings.
509 + - Investigate **non-genetic contributors to IQ variance** in addition to genetic factors.
344 344  
345 -----
511 +---
346 346  
347 347  ## **Relevance to Subproject**
348 -- Establishes a **quantitative benchmark for heritability across human traits**.
349 -- Reinforces **genetic influence on cognitive, behavioral, and physical traits**.
350 -- Highlights the need for **genome-wide studies to identify missing heritability**.##
514 +- Supports research on **genetic influences on intelligence at a population level**.
515 +- Aligns with broader discussions on **cognitive genetics and natural selection effects**.
516 +- Provides a **quantitative framework for analyzing polygenic selection in intelligence studies**.
351 351  
352 -----
518 +---
353 353  
354 -## **Suggestions for Further Exploration**##
520 +## **Suggestions for Further Exploration**
521 +1. Conduct **expanded GWAS studies** including diverse populations.
522 +2. Investigate **gene-environment interactions influencing intelligence**.
523 +3. Explore **historical selection pressures shaping intelligence-related alleles**.
355 355  
356 -1. Investigate how **heritability estimates compare across different socioeconomic backgrounds**.
357 -2. Examine **gene-environment interactions in cognitive and psychiatric traits**.
358 -3. Explore **non-additive genetic effects on human traits using newer statistical models**.
525 +---
359 359  
360 -----
361 -
362 362  ## **Summary of Research Study**
363 -This study presents a **comprehensive meta-analysis of human trait heritability**, covering **over 50 years of twin research**. The findings confirm **genes play a predominant role in shaping human traits**, with an **average heritability of 49%** across all measured characteristics. The research offers **valuable insights into genetic and environmental influences**, guiding future gene-mapping efforts and behavioral genetics studies.##
528 +This study reviews **genome-wide association study (GWAS) findings on intelligence**, demonstrating a **strong correlation between polygenic intelligence scores and national IQ levels**. The research highlights how **genetic selection may explain population-level cognitive differences beyond genetic drift effects**. Intelligence-linked alleles showed **higher variability across populations than height-related alleles**, suggesting stronger selection pressures.
364 364  
365 365  This summary provides an accessible, at-a-glance overview of the study’s contributions. Please refer to the full paper for in-depth analysis.
366 366  
367 -----
532 +---
368 368  
369 369  ## **📄 Download Full Study**
370 -[[Download Full Study>>attach:10.1038_ng.328.pdf]]##
535 +[[Download Full Study>>attach:10.1016_j.intell.2015.08.008.pdf]]
536 +
371 371  {{/expand}}
372 372  
539 +{{html}}<hr style="border: 3px solid red;">{{/html}}
373 373  
374 -== Study: Genetic Analysis of African Populations: Human Evolution and Complex Disease ==
541 +{{expand title="Study: Survey of Expert Opinion on Intelligence: Intelligence Research, Experts' Background, Controversial Issues, and the Media" expanded="false"}}
542 +**Source:** *Intelligence (Elsevier)*
543 +**Date of Publication:** *2019*
544 +**Author(s):** *Heiner Rindermann, David Becker, Thomas R. Coyle*
545 +**Title:** *"Survey of Expert Opinion on Intelligence: Intelligence Research, Experts' Background, Controversial Issues, and the Media"*
546 +**DOI:** [10.1016/j.intell.2019.101406](https://doi.org/10.1016/j.intell.2019.101406)
547 +**Subject Matter:** *Psychology, Intelligence Research, Expert Analysis*
375 375  
376 -{{expand expanded="false" title="Study: Genetic Analysis of African Populations: Human Evolution and Complex Disease"}}
377 -**Source:** *Nature Reviews Genetics*
378 -**Date of Publication:** *2002*
379 -**Author(s):** *Sarah A. Tishkoff, Scott M. Williams*
380 -**Title:** *"Genetic Analysis of African Populations: Human Evolution and Complex Disease"*
381 -**DOI:** [10.1038/nrg865](https://doi.org/10.1038/nrg865)
382 -**Subject Matter:** *Population Genetics, Human Evolution, Complex Diseases* 
549 +---
383 383  
384 -----
385 -
386 -## **Key Statistics**##
387 -
551 +## **Key Statistics**
388 388  1. **General Observations:**
389 - - Africa harbors **the highest genetic diversity** of any region, making it key to understanding human evolution.
390 - - The study analyzes **genetic variation and linkage disequilibrium (LD) in African populations**.
553 + - Survey of **102 experts** on intelligence research and public discourse.
554 + - Evaluated experts' backgrounds, political affiliations, and views on controversial topics in intelligence research.
391 391  
392 392  2. **Subgroup Analysis:**
393 - - African populations exhibit **greater genetic differentiation compared to non-Africans**.
394 - - **Migration and admixture** have shaped modern African genomes over the past **100,000 years**.
557 + - **90% of experts were from Western countries**, and **83% were male**.
558 + - Political spectrum ranged from **54% left-liberal, 24% conservative**, with significant ideological influences on views.
395 395  
396 396  3. **Other Significant Data Points:**
397 - - The **effective population size (Ne) of Africans** is higher than that of non-African populations.
398 - - LD blocks are **shorter in African genomes**, suggesting more historical recombination events.
561 + - Experts rated media coverage of intelligence research as **poor (avg. 3.1 on a 9-point scale)**.
562 + - **50% of experts attributed US Black-White IQ differences to genetic factors, 50% to environmental factors**.
399 399  
400 -----
564 +---
401 401  
402 -## **Findings**##
403 -
566 +## **Findings**
404 404  1. **Primary Observations:**
405 - - African populations are the **most genetically diverse**, supporting the *Recent African Origin* hypothesis.
406 - - Genetic variation in African populations can **help fine-map complex disease genes**.
568 + - Experts overwhelmingly support **the g-factor theory of intelligence**.
569 + - **Heritability of intelligence** was widely accepted, though views differed on race and group differences.
407 407  
408 408  2. **Subgroup Trends:**
409 - - **West Africans exhibit higher genetic diversity** than East Africans due to differing migration patterns.
410 - - Populations such as **San hunter-gatherers show deep genetic divergence**.
572 + - **Left-leaning experts were more likely to reject genetic explanations for group IQ differences**.
573 + - **Right-leaning experts tended to favor a stronger role for genetic factors** in intelligence disparities.
411 411  
412 412  3. **Specific Case Analysis:**
413 - - Admixture in African Americans includes **West African and European genetic contributions**.
414 - - SNP (single nucleotide polymorphism) diversity in African genomes **exceeds that of non-African groups**.
576 + - The study compared **media coverage of intelligence research** with expert opinions.
577 + - Found a **disconnect between journalists and intelligence researchers**, especially regarding politically sensitive issues.
415 415  
416 -----
579 +---
417 417  
418 -## **Critique and Observations**##
419 -
581 +## **Critique and Observations**
420 420  1. **Strengths of the Study:**
421 - - Provides **comprehensive genetic analysis** of diverse African populations.
422 - - Highlights **how genetic diversity impacts health disparities and disease risks**.
583 + - **Largest expert survey on intelligence research** to date.
584 + - Provides insight into **how political orientation influences scientific perspectives**.
423 423  
424 424  2. **Limitations of the Study:**
425 - - Many **African populations remain understudied**, limiting full understanding of diversity.
426 - - Focuses more on genetic variation than on **specific disease mechanisms**.
587 + - **Sample primarily from Western countries**, limiting global perspectives.
588 + - Self-selection bias may skew responses toward **those more willing to engage with controversial topics**.
427 427  
428 428  3. **Suggestions for Improvement:**
429 - - Expand research into **underrepresented African populations**.
430 - - Integrate **whole-genome sequencing for a more detailed evolutionary timeline**.
591 + - Future studies should include **a broader range of global experts**.
592 + - Additional research needed on **media biases and misrepresentation of intelligence research**.
431 431  
432 -----
594 +---
433 433  
434 434  ## **Relevance to Subproject**
435 -- Supports **genetic models of human evolution** and the **out-of-Africa hypothesis**.
436 -- Reinforces **Africa’s key role in disease gene mapping and precision medicine**.
437 -- Provides insight into **historical migration patterns and their genetic impact**.##
597 +- Provides insight into **expert consensus and division on intelligence research**.
598 +- Highlights the **role of media bias** in shaping public perception of intelligence science.
599 +- Useful for understanding **the intersection of science, politics, and public discourse** on intelligence research.
438 438  
439 -----
601 +---
440 440  
441 -## **Suggestions for Further Exploration**##
603 +## **Suggestions for Further Exploration**
604 +1. Examine **cross-national differences** in expert opinions on intelligence.
605 +2. Investigate how **media bias impacts public understanding of intelligence research**.
606 +3. Conduct follow-up studies with **a more diverse expert pool** to test findings.
442 442  
443 -1. Investigate **genetic adaptations to local environments within Africa**.
444 -2. Study **the role of African genetic diversity in disease resistance**.
445 -3. Expand research on **how ancient migration patterns shaped modern genetic structure**.
608 +---
446 446  
447 -----
448 -
449 449  ## **Summary of Research Study**
450 -This study explores the **genetic diversity of African populations**, analyzing their role in **human evolution and complex disease research**. The findings highlight **Africa’s unique genetic landscape**, confirming it as the most genetically diverse continent. The research provides valuable insights into **how genetic variation influences disease susceptibility, evolution, and population structure**.##
611 +This study surveys **expert opinions on intelligence research**, analyzing **how backgrounds, political ideologies, and media representation influence perspectives on intelligence**. The findings highlight **divisions in scientific consensus**, particularly on **genetic vs. environmental causes of IQ disparities**. Additionally, the research uncovers **widespread dissatisfaction with media portrayals of intelligence research**, pointing to **the impact of ideological biases on public discourse**.
451 451  
452 452  This summary provides an accessible, at-a-glance overview of the study’s contributions. Please refer to the full paper for in-depth analysis.
453 453  
454 -----
615 +---
455 455  
456 456  ## **📄 Download Full Study**
457 -[[Download Full Study>>attach:10.1038_nrg865MODERN.pdf]]##
618 +[[Download Full Study>>attach:10.1016_j.intell.2019.101406.pdf]]
619 +
458 458  {{/expand}}
459 459  
622 +{{html}}<hr style="border: 3px solid red;">{{/html}}
460 460  
461 -== Study: Pervasive Findings of Directional Selection in Ancient DNA ==
624 +{{expand title="Study: Is Homo sapiens polytypic? Human taxonomic diversity and its implications" expanded="false"}}
625 +**Source:** *Medical Hypotheses (Elsevier)*
626 +**Date of Publication:** *2010*
627 +**Author(s):** *Michael A. Woodley*
628 +**Title:** *"Is Homo sapiens polytypic? Human taxonomic diversity and its implications"*
629 +**DOI:** [10.1016/j.mehy.2009.07.046](https://doi.org/10.1016/j.mehy.2009.07.046)
630 +**Subject Matter:** *Human Taxonomy, Evolutionary Biology, Anthropology*
462 462  
463 -{{expand expanded="false" title="Study: Pervasive Findings of Directional Selection in Ancient DNA"}}
464 -**Source:** *bioRxiv Preprint*
465 -**Date of Publication:** *September 15, 2024*
466 -**Author(s):** *Ali Akbari, Alison R. Barton, Steven Gazal, Zheng Li, Mohammadreza Kariminejad, et al.*
467 -**Title:** *"Pervasive findings of directional selection realize the promise of ancient DNA to elucidate human adaptation"*
468 -**DOI:** [10.1101/2024.09.14.613021](https://doi.org/10.1101/2024.09.14.613021)
469 -**Subject Matter:** *Genomics, Evolutionary Biology, Natural Selection* 
632 +---
470 470  
471 -----
472 -
473 -## **Key Statistics**##
474 -
634 +## **Key Statistics**
475 475  1. **General Observations:**
476 - - Study analyzes **8,433 ancient individuals** from the past **14,000 years**.
477 - - Identifies **347 genome-wide significant loci** showing strong selection.
636 + - The study argues that **Homo sapiens is polytypic**, meaning it consists of multiple subspecies rather than a single monotypic species.
637 + - Examines **genetic diversity, morphological variation, and evolutionary lineage** in humans.
478 478  
479 479  2. **Subgroup Analysis:**
480 - - Examines **West Eurasian populations** and their genetic evolution.
481 - - Tracks **changes in allele frequencies over millennia**.
640 + - Discusses **four primary definitions of race/subspecies**: Essentialist, Taxonomic, Population-based, and Lineage-based.
641 + - Suggests that **human heterozygosity levels are comparable to species that are classified as polytypic**.
482 482  
483 483  3. **Other Significant Data Points:**
484 - - **10,000 years of directional selection** affected metabolic, immune, and cognitive traits.
485 - - **Strong selection signals** found for traits like **skin pigmentation, cognitive function, and immunity**.
644 + - The study evaluates **FST values (genetic differentiation measure)** and argues that human genetic differentiation is comparable to that of recognized subspecies in other species.
645 + - Considers **phylogenetic species concepts** in defining human variation.
486 486  
487 -----
647 +---
488 488  
489 -## **Findings**##
490 -
649 +## **Findings**
491 491  1. **Primary Observations:**
492 - - **Hundreds of alleles have been subject to directional selection** over recent millennia.
493 - - Traits like **immune function, metabolism, and cognitive performance** show strong selection.
651 + - Proposes that **modern human populations meet biological criteria for subspecies classification**.
652 + - Highlights **medical and evolutionary implications** of human taxonomic diversity.
494 494  
495 495  2. **Subgroup Trends:**
496 - - Selection pressure on **energy storage genes** supports the **Thrifty Gene Hypothesis**.
497 - - **Cognitive performance-related alleles** have undergone selection, but their historical advantages remain unclear.
655 + - Discusses **how race concepts evolved over time** in biological sciences.
656 + - Compares **human diversity with that of other primates** such as chimpanzees and gorillas.
498 498  
499 499  3. **Specific Case Analysis:**
500 - - **Celiac disease risk allele** increased from **0% to 20%** in 4,000 years.
501 - - **Blood type B frequency rose from 0% to 8% in 6,000 years**.
502 - - **Tuberculosis risk allele** fluctuated from **2% to 9% over 3,000 years before declining**.
659 + - Evaluates how **genetic markers correlate with population structure**.
660 + - Addresses the **controversy over race classification in modern anthropology**.
503 503  
504 -----
662 +---
505 505  
506 -## **Critique and Observations**##
507 -
664 +## **Critique and Observations**
508 508  1. **Strengths of the Study:**
509 - - **Largest dataset to date** on natural selection in human ancient DNA.
510 - - Uses **direct allele frequency tracking instead of indirect measures**.
666 + - Uses **comparative species analysis** to assess human classification.
667 + - Provides a **biological perspective** on the race concept, moving beyond social constructivism arguments.
511 511  
512 512  2. **Limitations of the Study:**
513 - - Findings **may not translate directly** to modern populations.
514 - - **Unclear whether observed selection pressures persist today**.
670 + - Controversial topic with **strong opposing views in anthropology and genetics**.
671 + - **Relies on broad genetic trends**, but does not analyze individual-level genetic variation in depth.
515 515  
516 516  3. **Suggestions for Improvement:**
517 - - Expanding research to **other global populations** to assess universal trends.
518 - - Investigating **long-term evolutionary trade-offs of selected alleles**.
674 + - Further research should **incorporate whole-genome studies** to refine subspecies classifications.
675 + - Investigate **how admixture affects taxonomic classification over time**.
519 519  
520 -----
677 +---
521 521  
522 522  ## **Relevance to Subproject**
523 -- Provides **direct evidence of long-term genetic adaptation** in human populations.
524 -- Supports theories on **polygenic selection shaping human cognition, metabolism, and immunity**.
525 -- Highlights **how past selection pressures may still influence modern health and disease prevalence**.##
680 +- Contributes to discussions on **evolutionary taxonomy and species classification**.
681 +- Provides evidence on **genetic differentiation among human populations**.
682 +- Highlights **historical and contemporary scientific debates on race and human variation**.
526 526  
527 -----
684 +---
528 528  
529 -## **Suggestions for Further Exploration**##
686 +## **Suggestions for Further Exploration**
687 +1. Examine **FST values in modern and ancient human populations**.
688 +2. Investigate how **adaptive evolution influences population differentiation**.
689 +3. Explore **the impact of genetic diversity on medical treatments and disease susceptibility**.
530 530  
531 -1. Examine **selection patterns in non-European populations** for comparison.
532 -2. Investigate **how environmental and cultural shifts influenced genetic selection**.
533 -3. Explore **the genetic basis of traits linked to past and present-day human survival**.
691 +---
534 534  
535 -----
536 -
537 537  ## **Summary of Research Study**
538 -This study examines **how human genetic adaptation has unfolded over 14,000 years**, using a **large dataset of ancient DNA**. It highlights **strong selection on immune function, metabolism, and cognitive traits**, revealing **hundreds of loci affected by directional selection**. The findings emphasize **the power of ancient DNA in tracking human evolution and adaptation**.##
694 +This study evaluates **whether Homo sapiens should be classified as a polytypic species**, analyzing **genetic diversity, evolutionary lineage, and morphological variation**. Using comparative analysis with other primates and mammals, the research suggests that **human populations meet biological criteria for subspecies classification**, with implications for **evolutionary biology, anthropology, and medicine**.
539 539  
540 -----
696 +This summary provides an accessible, at-a-glance overview of the study’s contributions. Please refer to the full paper for in-depth analysis.
541 541  
698 +---
699 +
542 542  ## **📄 Download Full Study**
543 -[[Download Full Study>>attach:10.1101_2024.09.14.613021doi_.pdf]]##
701 +[[Download Full Study>>attach:10.1016_j.mehy.2009.07.046.pdf]]
702 +
544 544  {{/expand}}
545 545  
705 +{{html}}<hr style="border: 3px solid red;">{{/html}}
546 546  
547 -== Study: The Wilson Effect: The Increase in Heritability of IQ With Age ==
548 -
549 -{{expand expanded="false" title="Study: The Wilson Effect: The Increase in Heritability of IQ With Age"}}
707 +{{expand title="Study: The Wilson Effect: The Increase in Heritability of IQ With Age" expanded="false"}}
550 550  **Source:** *Twin Research and Human Genetics (Cambridge University Press)*
551 551  **Date of Publication:** *2013*
552 552  **Author(s):** *Thomas J. Bouchard Jr.*
553 553  **Title:** *"The Wilson Effect: The Increase in Heritability of IQ With Age"*
554 554  **DOI:** [10.1017/thg.2013.54](https://doi.org/10.1017/thg.2013.54)
555 -**Subject Matter:** *Intelligence, Heritability, Developmental Psychology* 
713 +**Subject Matter:** *Intelligence, Heritability, Developmental Psychology*
556 556  
557 -----
715 +---
558 558  
559 -## **Key Statistics**##
560 -
717 +## **Key Statistics**
561 561  1. **General Observations:**
562 562   - The study documents how the **heritability of IQ increases with age**, reaching an asymptote at **0.80 by adulthood**.
563 563   - Analysis is based on **longitudinal twin and adoption studies**.
... ... @@ -570,10 +570,9 @@
570 570   - Data from the **Louisville Longitudinal Twin Study and cross-national twin samples** support findings.
571 571   - IQ stability over time is **influenced more by genetics than by shared environmental factors**.
572 572  
573 -----
730 +---
574 574  
575 -## **Findings**##
576 -
732 +## **Findings**
577 577  1. **Primary Observations:**
578 578   - Intelligence heritability **strengthens throughout development**, contrary to early environmental models.
579 579   - Shared environmental effects **decrease by late adolescence**, emphasizing **genetic influence in adulthood**.
... ... @@ -586,10 +586,9 @@
586 586   - Longitudinal adoption studies show **declining impact of adoptive parental influence on IQ** as children age.
587 587   - Cross-sectional twin data confirm **higher IQ correlations for monozygotic twins in adulthood**.
588 588  
589 -----
745 +---
590 590  
591 -## **Critique and Observations**##
592 -
747 +## **Critique and Observations**
593 593  1. **Strengths of the Study:**
594 594   - **Robust dataset covering multiple twin and adoption studies over decades**.
595 595   - **Clear, replicable trend** demonstrating the increasing role of genetics in intelligence.
... ... @@ -602,792 +602,715 @@
602 602   - Future research should investigate **gene-environment interactions in cognitive aging**.
603 603   - Examine **heritability trends in non-Western populations** to determine cross-cultural consistency.
604 604  
605 -----
760 +---
606 606  
607 607  ## **Relevance to Subproject**
608 608  - Provides **strong evidence for the genetic basis of intelligence**.
609 609  - Highlights the **diminishing role of shared environment in cognitive development**.
610 -- Supports research on **cognitive aging and heritability across the lifespan**.##
765 +- Supports research on **cognitive aging and heritability across the lifespan**.
611 611  
612 -----
767 +---
613 613  
614 -## **Suggestions for Further Exploration**##
615 -
769 +## **Suggestions for Further Exploration**
616 616  1. Investigate **neurogenetic pathways underlying IQ development**.
617 617  2. Examine **how education and socioeconomic factors interact with genetic IQ influences**.
618 618  3. Study **heritability trends in aging populations and cognitive decline**.
619 619  
620 -----
774 +---
621 621  
622 622  ## **Summary of Research Study**
623 -This study documents **The Wilson Effect**, demonstrating how the **heritability of IQ increases throughout development**, reaching a plateau of **0.80 by adulthood**. The findings indicate that **shared environmental effects diminish with age**, while **genetic influences on intelligence strengthen**. Using **longitudinal twin and adoption data**, the research provides **strong empirical support for the increasing role of genetics in cognitive ability over time**.##
777 +This study documents **The Wilson Effect**, demonstrating how the **heritability of IQ increases throughout development**, reaching a plateau of **0.80 by adulthood**. The findings indicate that **shared environmental effects diminish with age**, while **genetic influences on intelligence strengthen**. Using **longitudinal twin and adoption data**, the research provides **strong empirical support for the increasing role of genetics in cognitive ability over time**.
624 624  
625 625  This summary provides an accessible, at-a-glance overview of the study’s contributions. Please refer to the full paper for in-depth analysis.
626 626  
627 -----
781 +---
628 628  
629 629  ## **📄 Download Full Study**
630 -[[Download Full Study>>attach:10.1017_thg.2013.54.pdf]]##
784 +[[Download Full Study>>attach:10.1017_thg.2013.54.pdf]]
785 +
631 631  {{/expand}}
632 632  
788 +{{html}}<hr style="border: 3px solid red;">{{/html}}
633 633  
634 -== Study: Is Homo sapiens polytypic? Human taxonomic diversity and its implications ==
790 +{{expand title="Study: Segregation, Innocence, and Protection: The Institutional Conditions That Maintain Whiteness in College Sports" expanded="false"}}
791 +**Source:** *Journal of Diversity in Higher Education*
792 +**Date of Publication:** *2019*
793 +**Author(s):** *Kirsten Hextrum*
794 +**Title:** *"Segregation, Innocence, and Protection: The Institutional Conditions That Maintain Whiteness in College Sports"*
795 +**DOI:** [10.1037/dhe0000140](https://doi.org/10.1037/dhe0000140)
796 +**Subject Matter:** *Race and Sports, Higher Education, Institutional Racism*
635 635  
636 -{{expand expanded="false" title="Study: Is Homo sapiens polytypic? Human taxonomic diversity and its implications"}}
637 -**Source:** *Medical Hypotheses (Elsevier)*
638 -**Date of Publication:** *2010*
639 -**Author(s):** *Michael A. Woodley*
640 -**Title:** *"Is Homo sapiens polytypic? Human taxonomic diversity and its implications"*
641 -**DOI:** [10.1016/j.mehy.2009.07.046](https://doi.org/10.1016/j.mehy.2009.07.046)
642 -**Subject Matter:** *Human Taxonomy, Evolutionary Biology, Anthropology* 
798 +---
643 643  
644 -----
645 -
646 -## **Key Statistics**##
647 -
800 +## **Key Statistics**
648 648  1. **General Observations:**
649 - - The study argues that **Homo sapiens is polytypic**, meaning it consists of multiple subspecies rather than a single monotypic species.
650 - - Examines **genetic diversity, morphological variation, and evolutionary lineage** in humans.
802 + - Analyzed **47 college athlete narratives** to explore racial disparities in non-revenue sports.
803 + - Found three interrelated themes: **racial segregation, racial innocence, and racial protection**.
651 651  
652 652  2. **Subgroup Analysis:**
653 - - Discusses **four primary definitions of race/subspecies**: Essentialist, Taxonomic, Population-based, and Lineage-based.
654 - - Suggests that **human heterozygosity levels are comparable to species that are classified as polytypic**.
806 + - **Predominantly white sports programs** reinforce racial hierarchies in college athletics.
807 + - **Recruitment policies favor white athletes** from affluent, suburban backgrounds.
655 655  
656 656  3. **Other Significant Data Points:**
657 - - The study evaluates **FST values (genetic differentiation measure)** and argues that human genetic differentiation is comparable to that of recognized subspecies in other species.
658 - - Considers **phylogenetic species concepts** in defining human variation.
810 + - White athletes are **socialized to remain unaware of racial privilege** in their athletic careers.
811 + - Media and institutional narratives protect white athletes from discussions on race and systemic inequities.
659 659  
660 -----
813 +---
661 661  
662 -## **Findings**##
663 -
815 +## **Findings**
664 664  1. **Primary Observations:**
665 - - Proposes that **modern human populations meet biological criteria for subspecies classification**.
666 - - Highlights **medical and evolutionary implications** of human taxonomic diversity.
817 + - Colleges **actively recruit white athletes** from majority-white communities.
818 + - Institutional policies **uphold whiteness** by failing to challenge racial biases in recruitment and team culture.
667 667  
668 668  2. **Subgroup Trends:**
669 - - Discusses **how race concepts evolved over time** in biological sciences.
670 - - Compares **human diversity with that of other primates** such as chimpanzees and gorillas.
821 + - **White athletes show limited awareness** of their racial advantage in sports.
822 + - **Black athletes are overrepresented** in revenue-generating sports but underrepresented in non-revenue teams.
671 671  
672 672  3. **Specific Case Analysis:**
673 - - Evaluates how **genetic markers correlate with population structure**.
674 - - Addresses the **controversy over race classification in modern anthropology**.
825 + - Examines **how sports serve as a mechanism for maintaining racial privilege** in higher education.
826 + - Discusses the **role of athletics in reinforcing systemic segregation and exclusion**.
675 675  
676 -----
828 +---
677 677  
678 -## **Critique and Observations**##
679 -
830 +## **Critique and Observations**
680 680  1. **Strengths of the Study:**
681 - - Uses **comparative species analysis** to assess human classification.
682 - - Provides a **biological perspective** on the race concept, moving beyond social constructivism arguments.
832 + - **Comprehensive qualitative analysis** of race in college sports.
833 + - Examines **institutional conditions** that sustain racial disparities in athletics.
683 683  
684 684  2. **Limitations of the Study:**
685 - - Controversial topic with **strong opposing views in anthropology and genetics**.
686 - - **Relies on broad genetic trends**, but does not analyze individual-level genetic variation in depth.
836 + - Focuses primarily on **Division I non-revenue sports**, limiting generalizability to other divisions.
837 + - Lacks extensive **quantitative data on racial demographics** in college athletics.
687 687  
688 688  3. **Suggestions for Improvement:**
689 - - Further research should **incorporate whole-genome studies** to refine subspecies classifications.
690 - - Investigate **how admixture affects taxonomic classification over time**.
840 + - Future research should **compare recruitment policies across different sports and divisions**.
841 + - Investigate **how athletic scholarships contribute to racial inequities in higher education**.
691 691  
692 -----
843 +---
693 693  
694 694  ## **Relevance to Subproject**
695 -- Contributes to discussions on **evolutionary taxonomy and species classification**.
696 -- Provides evidence on **genetic differentiation among human populations**.
697 -- Highlights **historical and contemporary scientific debates on race and human variation**.##
846 +- Provides evidence of **systemic racial biases** in college sports recruitment.
847 +- Highlights **how institutional policies protect whiteness** in non-revenue athletics.
848 +- Supports research on **diversity, equity, and inclusion (DEI) efforts in sports and education**.
698 698  
699 -----
850 +---
700 700  
701 -## **Suggestions for Further Exploration**##
852 +## **Suggestions for Further Exploration**
853 +1. Investigate how **racial stereotypes influence college athlete recruitment**.
854 +2. Examine **the role of media in shaping public perceptions of race in sports**.
855 +3. Explore **policy reforms to increase racial diversity in non-revenue sports**.
702 702  
703 -1. Examine **FST values in modern and ancient human populations**.
704 -2. Investigate how **adaptive evolution influences population differentiation**.
705 -3. Explore **the impact of genetic diversity on medical treatments and disease susceptibility**.
857 +---
706 706  
707 -----
708 -
709 709  ## **Summary of Research Study**
710 -This study evaluates **whether Homo sapiens should be classified as a polytypic species**, analyzing **genetic diversity, evolutionary lineage, and morphological variation**. Using comparative analysis with other primates and mammals, the research suggests that **human populations meet biological criteria for subspecies classification**, with implications for **evolutionary biology, anthropology, and medicine**.##
860 +This study explores how **racial segregation, innocence, and protection** sustain whiteness in college sports. By analyzing **47 athlete narratives**, the research reveals **how predominantly white sports programs recruit and retain white athletes** while shielding them from discussions on race. The findings highlight **institutional biases that maintain racial privilege in athletics**, offering critical insight into the **structural inequalities in higher education sports programs**.
711 711  
712 712  This summary provides an accessible, at-a-glance overview of the study’s contributions. Please refer to the full paper for in-depth analysis.
713 713  
714 -----
864 +---
715 715  
716 716  ## **📄 Download Full Study**
717 -[[Download Full Study>>attach:10.1016_j.mehy.2009.07.046.pdf]]##
867 +[[Download Full Study>>attach:10.1037_dhe0000140.pdf]]
868 +
718 718  {{/expand}}
719 719  
871 +{{html}}<hr style="border: 3px solid red;">{{/html}}
720 720  
721 -== Study: Survey of Expert Opinion on Intelligence: Intelligence Research, Experts' Background, Controversial Issues, and the Media ==
873 +{{expand title="Study: Reconstructing Indian Population History" expanded="false"}}
874 +**Source:** *Nature*
875 +**Date of Publication:** *2009*
876 +**Author(s):** *David Reich, Kumarasamy Thangaraj, Nick Patterson, Alkes L. Price, Lalji Singh*
877 +**Title:** *"Reconstructing Indian Population History"*
878 +**DOI:** [10.1038/nature08365](https://doi.org/10.1038/nature08365)
879 +**Subject Matter:** *Genetics, Population History, South Asian Ancestry*
722 722  
723 -{{expand expanded="false" title="Study: Survey of Expert Opinion on Intelligence: Intelligence Research, Experts' Background, Controversial Issues, and the Media"}}
724 -**Source:** *Intelligence (Elsevier)*
725 -**Date of Publication:** *2019*
726 -**Author(s):** *Heiner Rindermann, David Becker, Thomas R. Coyle*
727 -**Title:** *"Survey of Expert Opinion on Intelligence: Intelligence Research, Experts' Background, Controversial Issues, and the Media"*
728 -**DOI:** [10.1016/j.intell.2019.101406](https://doi.org/10.1016/j.intell.2019.101406)
729 -**Subject Matter:** *Psychology, Intelligence Research, Expert Analysis* 
881 +---
730 730  
731 -----
732 -
733 -## **Key Statistics**##
734 -
883 +## **Key Statistics**
735 735  1. **General Observations:**
736 - - Survey of **102 experts** on intelligence research and public discourse.
737 - - Evaluated experts' backgrounds, political affiliations, and views on controversial topics in intelligence research.
885 + - Study analyzed **132 individuals from 25 diverse Indian groups**.
886 + - Identified two major ancestral populations: **Ancestral North Indians (ANI)** and **Ancestral South Indians (ASI)**.
738 738  
739 739  2. **Subgroup Analysis:**
740 - - **90% of experts were from Western countries**, and **83% were male**.
741 - - Political spectrum ranged from **54% left-liberal, 24% conservative**, with significant ideological influences on views.
889 + - ANI ancestry is closely related to **Middle Easterners, Central Asians, and Europeans**.
890 + - ASI ancestry is **genetically distinct from ANI and East Asians**.
742 742  
743 743  3. **Other Significant Data Points:**
744 - - Experts rated media coverage of intelligence research as **poor (avg. 3.1 on a 9-point scale)**.
745 - - **50% of experts attributed US Black-White IQ differences to genetic factors, 50% to environmental factors**.
893 + - ANI ancestry ranges from **39% to 71%** across Indian groups.
894 + - **Caste and linguistic differences** strongly correlate with genetic variation.
746 746  
747 -----
896 +---
748 748  
749 -## **Findings**##
750 -
898 +## **Findings**
751 751  1. **Primary Observations:**
752 - - Experts overwhelmingly support **the g-factor theory of intelligence**.
753 - - **Heritability of intelligence** was widely accepted, though views differed on race and group differences.
900 + - The genetic landscape of India has been shaped by **thousands of years of endogamy**.
901 + - Groups with **only ASI ancestry no longer exist** in mainland India.
754 754  
755 755  2. **Subgroup Trends:**
756 - - **Left-leaning experts were more likely to reject genetic explanations for group IQ differences**.
757 - - **Right-leaning experts tended to favor a stronger role for genetic factors** in intelligence disparities.
904 + - **Higher ANI ancestry in upper-caste and Indo-European-speaking groups**.
905 + - **Andaman Islanders** are unique in having **ASI ancestry without ANI influence**.
758 758  
759 759  3. **Specific Case Analysis:**
760 - - The study compared **media coverage of intelligence research** with expert opinions.
761 - - Found a **disconnect between journalists and intelligence researchers**, especially regarding politically sensitive issues.
908 + - **Founder effects** have maintained allele frequency differences among Indian groups.
909 + - Predicts **higher incidence of recessive diseases** due to historical genetic isolation.
762 762  
763 -----
911 +---
764 764  
765 -## **Critique and Observations**##
766 -
913 +## **Critique and Observations**
767 767  1. **Strengths of the Study:**
768 - - **Largest expert survey on intelligence research** to date.
769 - - Provides insight into **how political orientation influences scientific perspectives**.
915 + - **First large-scale genetic analysis** of Indian population history.
916 + - Introduces **new methods for ancestry estimation without direct ancestral reference groups**.
770 770  
771 771  2. **Limitations of the Study:**
772 - - **Sample primarily from Western countries**, limiting global perspectives.
773 - - Self-selection bias may skew responses toward **those more willing to engage with controversial topics**.
919 + - Limited **sample size relative to India's population diversity**.
920 + - Does not include **recent admixture events** post-colonial era.
774 774  
775 775  3. **Suggestions for Improvement:**
776 - - Future studies should include **a broader range of global experts**.
777 - - Additional research needed on **media biases and misrepresentation of intelligence research**.
923 + - Future research should **expand sampling across more Indian tribal groups**.
924 + - Use **whole-genome sequencing** for finer resolution of ancestry.
778 778  
779 -----
926 +---
780 780  
781 781  ## **Relevance to Subproject**
782 -- Provides insight into **expert consensus and division on intelligence research**.
783 -- Highlights the **role of media bias** in shaping public perception of intelligence science.
784 -- Useful for understanding **the intersection of science, politics, and public discourse** on intelligence research.##
929 +- Provides a **genetic basis for caste and linguistic diversity** in India.
930 +- Highlights **founder effects and genetic drift** shaping South Asian populations.
931 +- Supports research on **medical genetics and disease risk prediction** in Indian populations.
785 785  
786 -----
933 +---
787 787  
788 -## **Suggestions for Further Exploration**##
935 +## **Suggestions for Further Exploration**
936 +1. Examine **genetic markers linked to disease susceptibility** in Indian subpopulations.
937 +2. Investigate the impact of **recent migration patterns on ANI-ASI ancestry distribution**.
938 +3. Study **gene flow between Indian populations and other global groups**.
789 789  
790 -1. Examine **cross-national differences** in expert opinions on intelligence.
791 -2. Investigate how **media bias impacts public understanding of intelligence research**.
792 -3. Conduct follow-up studies with **a more diverse expert pool** to test findings.
940 +---
793 793  
794 -----
795 -
796 796  ## **Summary of Research Study**
797 -This study surveys **expert opinions on intelligence research**, analyzing **how backgrounds, political ideologies, and media representation influence perspectives on intelligence**. The findings highlight **divisions in scientific consensus**, particularly on **genetic vs. environmental causes of IQ disparities**. Additionally, the research uncovers **widespread dissatisfaction with media portrayals of intelligence research**, pointing to **the impact of ideological biases on public discourse**.##
943 +This study reconstructs **the genetic history of India**, revealing two ancestral populations—**ANI (related to West Eurasians) and ASI (distinctly South Asian)**. By analyzing **25 diverse Indian groups**, the researchers demonstrate how **historical endogamy and founder effects** have maintained genetic differentiation. The findings have **implications for medical genetics, population history, and the study of South Asian ancestry**.
798 798  
799 799  This summary provides an accessible, at-a-glance overview of the study’s contributions. Please refer to the full paper for in-depth analysis.
800 800  
801 -----
947 +---
802 802  
803 803  ## **📄 Download Full Study**
804 -[[Download Full Study>>attach:10.1016_j.intell.2019.101406.pdf]]##
950 +[[Download Full Study>>attach:10.1038_nature08365.pdf]]
951 +
805 805  {{/expand}}
806 806  
954 +{{html}}<hr style="border: 3px solid red;">{{/html}}
807 807  
808 -== Study: A Review of Intelligence GWAS Hits: Their Relationship to Country IQ and the Issue of Spatial Autocorrelation ==
809 809  
810 -{{expand expanded="false" title="Study: A Review of Intelligence GWAS Hits: Their Relationship to Country IQ and the Issue of Spatial Autocorrelation"}}
811 -**Source:** *Intelligence (Elsevier)*
812 -**Date of Publication:** *2015*
813 -**Author(s):** *Davide Piffer*
814 -**Title:** *"A Review of Intelligence GWAS Hits: Their Relationship to Country IQ and the Issue of Spatial Autocorrelation"*
815 -**DOI:** [10.1016/j.intell.2015.08.008](https://doi.org/10.1016/j.intell.2015.08.008)
816 -**Subject Matter:** *Genetics, Intelligence, GWAS, Population Differences* 
957 +{{expand title="Study: The Simons Genome Diversity Project: 300 Genomes from 142 Diverse Populations" expanded="false"}}
958 +**Source:** *Nature*
959 +**Date of Publication:** *2016*
960 +**Author(s):** *David Reich, Swapan Mallick, Heng Li, Mark Lipson, and others*
961 +**Title:** *"The Simons Genome Diversity Project: 300 Genomes from 142 Diverse Populations"*
962 +**DOI:** [10.1038/nature18964](https://doi.org/10.1038/nature18964)
963 +**Subject Matter:** *Human Genetic Diversity, Population History, Evolutionary Genomics*
817 817  
818 -----
965 +---
819 819  
820 -## **Key Statistics**##
821 -
967 +## **Key Statistics**
822 822  1. **General Observations:**
823 - - Study analyzed **genome-wide association studies (GWAS) hits** linked to intelligence.
824 - - Found a **strong correlation (r = .91) between polygenic intelligence scores and national IQ levels**.
969 + - Analyzed **high-coverage genome sequences of 300 individuals from 142 populations**.
970 + - Included **many underrepresented and indigenous groups** from Africa, Asia, Europe, and the Americas.
825 825  
826 826  2. **Subgroup Analysis:**
827 - - Factor analysis of **9 intelligence-associated alleles** revealed a metagene correlated with **country IQ (r = .86)**.
828 - - **Allele frequencies varied significantly by continent**, aligning with observed population differences in cognitive ability.
973 + - Found **higher genetic diversity within African populations** compared to non-African groups.
974 + - Showed **Neanderthal and Denisovan ancestry in non-African populations**, particularly in Oceania.
829 829  
830 830  3. **Other Significant Data Points:**
831 - - GWAS intelligence SNPs predicted **IQ levels more strongly than random genetic markers**.
832 - - Genetic differentiation (Fst values) showed that **selection pressure, rather than drift, influenced intelligence-related allele distributions**.
977 + - Identified **5.8 million base pairs absent from the human reference genome**.
978 + - Estimated that **mutations have accumulated 5% faster in non-Africans than in Africans**.
833 833  
834 -----
980 +---
835 835  
836 -## **Findings**##
837 -
982 +## **Findings**
838 838  1. **Primary Observations:**
839 - - Intelligence-associated SNP frequencies correlate **highly with national IQ levels**.
840 - - Genetic selection for intelligence appears **stronger than selection for height-related genes**.
984 + - **African populations harbor the greatest genetic diversity**, confirming an out-of-Africa dispersal model.
985 + - Indigenous Australians and New Guineans **share a common ancestral population with other non-Africans**.
841 841  
842 842  2. **Subgroup Trends:**
843 - - **East Asian populations** exhibited the **highest frequencies of intelligence-associated alleles**.
844 - - **African populations** showed lower frequencies compared to European and East Asian populations.
988 + - **Lower heterozygosity in non-Africans** due to founder effects from migration bottlenecks.
989 + - **Denisovan ancestry in South Asians is higher than previously thought**.
845 845  
846 846  3. **Specific Case Analysis:**
847 - - Polygenic scores using **intelligence-related alleles significantly outperformed random SNPs** in predicting IQ.
848 - - Selection pressures **may explain differences in global intelligence distribution** beyond genetic drift effects.
992 + - **Neanderthal ancestry is higher in East Asians than in Europeans**.
993 + - African hunter-gatherer groups show **deep population splits over 100,000 years ago**.
849 849  
850 -----
995 +---
851 851  
852 -## **Critique and Observations**##
853 -
997 +## **Critique and Observations**
854 854  1. **Strengths of the Study:**
855 - - **Comprehensive genetic analysis** of intelligence-linked SNPs.
856 - - Uses **multiple statistical methods (factor analysis, Fst analysis) to confirm results**.
999 + - **Largest global genetic dataset** outside of the 1000 Genomes Project.
1000 + - High sequencing depth allows **more accurate identification of genetic variants**.
857 857  
858 858  2. **Limitations of the Study:**
859 - - **Correlation does not imply causation**; factors beyond genetics influence intelligence.
860 - - **Limited number of GWAS-identified intelligence alleles**—future studies may identify more.
1003 + - **Limited sample sizes for some populations**, restricting generalizability.
1004 + - Lacks ancient DNA comparisons, making it difficult to reconstruct deep ancestry fully.
861 861  
862 862  3. **Suggestions for Improvement:**
863 - - Larger **cross-population GWAS studies** needed to validate findings.
864 - - Investigate **non-genetic contributors to IQ variance** in addition to genetic factors.
1007 + - Future studies should include **ancient genomes** to improve demographic modeling.
1008 + - Expand research into **how genetic variation affects health outcomes** across populations.
865 865  
866 -----
1010 +---
867 867  
868 868  ## **Relevance to Subproject**
869 -- Supports research on **genetic influences on intelligence at a population level**.
870 -- Aligns with broader discussions on **cognitive genetics and natural selection effects**.
871 -- Provides a **quantitative framework for analyzing polygenic selection in intelligence studies**.##
1013 +- Provides **comprehensive data on human genetic diversity**, useful for **evolutionary studies**.
1014 +- Supports research on **Neanderthal and Denisovan introgression** in modern human populations.
1015 +- Enhances understanding of **genetic adaptation and disease susceptibility across groups**.
872 872  
873 -----
1017 +---
874 874  
875 -## **Suggestions for Further Exploration**##
1019 +## **Suggestions for Further Exploration**
1020 +1. Investigate **functional consequences of genetic variation in underrepresented populations**.
1021 +2. Study **how selection pressures shaped genetic diversity across different environments**.
1022 +3. Explore **medical applications of population-specific genetic markers**.
876 876  
877 -1. Conduct **expanded GWAS studies** including diverse populations.
878 -2. Investigate **gene-environment interactions influencing intelligence**.
879 -3. Explore **historical selection pressures shaping intelligence-related alleles**.
1024 +---
880 880  
881 -----
882 -
883 883  ## **Summary of Research Study**
884 -This study reviews **genome-wide association study (GWAS) findings on intelligence**, demonstrating a **strong correlation between polygenic intelligence scores and national IQ levels**. The research highlights how **genetic selection may explain population-level cognitive differences beyond genetic drift effects**. Intelligence-linked alleles showed **higher variability across populations than height-related alleles**, suggesting stronger selection pressures.  ##
1027 +This study presents **high-coverage genome sequences from 300 individuals across 142 populations**, offering **new insights into global genetic diversity and human evolution**. The findings highlight **deep African population splits, widespread archaic ancestry in non-Africans, and unique variants absent from the human reference genome**. The research enhances our understanding of **migration patterns, adaptation, and evolutionary history**.
885 885  
886 886  This summary provides an accessible, at-a-glance overview of the study’s contributions. Please refer to the full paper for in-depth analysis.
887 887  
888 -----
1031 +---
889 889  
890 890  ## **📄 Download Full Study**
891 -[[Download Full Study>>attach:10.1016_j.intell.2015.08.008.pdf]]##
892 -{{/expand}}
1034 +[[Download Full Study>>attach:10.1038_nature18964.pdf]]
893 893  
894 -
895 -== Study: Genetic Structure, Self-Identified Race/Ethnicity, and Confounding ==
896 -
897 -{{expand expanded="false" title="Click here to expand details"}}
898 -**Source:** Journal of Genetic Epidemiology
899 -**Date of Publication:** 2024-01-15
900 -**Author(s):** Smith et al.
901 -**Title:** "Genetic Structure, Self-Identified Race/Ethnicity, and Confounding in Case-Control Association Studies"
902 -**DOI:** [https://doi.org/10.1037/1076-8971.11.2.235](https://doi.org/10.1037/1076-8971.11.2.235)
903 -**Subject Matter:** Genetics, Social Science 
904 -
905 -**Tags:** `Genetics` `Race & Ethnicity` `Biomedical Research`
906 -
907 - **Key Statistics**
908 -
909 -1. **General Observations:**
910 - - A near-perfect alignment between self-identified race/ethnicity (SIRE) and genetic ancestry was observed.
911 - - Misclassification rate: **0.14%**.
912 -
913 -2. **Subgroup Analysis:**
914 - - Four groups analyzed: **White, African American, East Asian, and Hispanic**.
915 - - Hispanic genetic clusters showed significant European and Native American lineage.
916 -
917 - **Findings**
918 -
919 -- Self-identified race strongly aligns with genetic ancestry.
920 -- Minor discrepancies exist but do not significantly impact classification.
921 -
922 - **Relevance to Subproject**
923 -
924 -- Reinforces the reliability of **self-reported racial identity** in genetic research.
925 -- Highlights **policy considerations** in biomedical studies.
926 926  {{/expand}}
927 927  
1038 +{{html}}<hr style="border: 3px solid red;">{{/html}}
928 928  
929 -----
1040 +{{expand title="Study: Meta-analysis of the heritability of human traits based on fifty years of twin studies" expanded="false"}}
1041 +**Source:** *Nature Genetics*
1042 +**Date of Publication:** *2015*
1043 +**Author(s):** *Tinca J. C. Polderman, Beben Benyamin, Christiaan A. de Leeuw, Patrick F. Sullivan, Arjen van Bochoven, Peter M. Visscher, Danielle Posthuma*
1044 +**Title:** *"Meta-analysis of the heritability of human traits based on fifty years of twin studies"*
1045 +**DOI:** [10.1038/ng.328](https://doi.org/10.1038/ng.328)
1046 +**Subject Matter:** *Genetics, Heritability, Twin Studies, Behavioral Science*
930 930  
931 -= Dating and Interpersonal Relationships =
1048 +---
932 932  
933 -
934 -== Study: Trends in Frequency of Sexual Activity and Number of Sexual Partners Among Adults Aged 18 to 44 Years in the US, 2000-2018 ==
935 -
936 -{{expand expanded="false" title="Study: Trends in Frequency of Sexual Activity and Number of Sexual Partners Among Adults Aged 18 to 44 Years in the US, 2000-2018"}}
937 -**Source:** *JAMA Network Open*
938 -**Date of Publication:** *2020*
939 -**Author(s):** *Ueda P, Mercer CH, Ghaznavi C, Herbenick D.*
940 -**Title:** *"Trends in Frequency of Sexual Activity and Number of Sexual Partners Among Adults Aged 18 to 44 Years in the US, 2000-2018"*
941 -**DOI:** [10.1001/jamanetworkopen.2020.3833](https://doi.org/10.1001/jamanetworkopen.2020.3833)
942 -**Subject Matter:** *Public Health, Sexual Behavior, Demography* 
943 -
944 -----
945 -
946 -## **Key Statistics**##
947 -
1050 +## **Key Statistics**
948 948  1. **General Observations:**
949 - - Study analyzed **General Social Survey (2000-2018)** data.
950 - - Found **declining trends in sexual activity** among young adults.
1052 + - Analyzed **17,804 traits from 2,748 twin studies** published between **1958 and 2012**.
1053 + - Included data from **14,558,903 twin pairs**, making it the largest meta-analysis on human heritability.
951 951  
952 952  2. **Subgroup Analysis:**
953 - - Decreases in sexual activity were most prominent among **men aged 18-34**.
954 - - Factors like **marital status, employment, and psychological well-being** were associated with changes in sexual frequency.
1056 + - Found **49% average heritability** across all traits.
1057 + - **69% of traits follow a simple additive genetic model**, meaning most variance is due to genes, not environment.
955 955  
956 956  3. **Other Significant Data Points:**
957 - - Frequency of sexual activity decreased by **8-10%** over the studied period.
958 - - Number of sexual partners remained **relatively stable** despite declining activity rates.
1060 + - **Neurological, metabolic, and psychiatric traits** showed the highest heritability estimates.
1061 + - Traits related to **social values and environmental interactions** had lower heritability estimates.
959 959  
960 -----
1063 +---
961 961  
962 -## **Findings**##
963 -
1065 +## **Findings**
964 964  1. **Primary Observations:**
965 - - A significant decline in sexual frequency, especially among **younger men**.
966 - - Shifts in relationship dynamics and economic stressors may contribute to the trend.
1067 + - Across all traits, genetic factors play a significant role in individual differences.
1068 + - The study contradicts models that **overestimate environmental effects in behavioral and cognitive traits**.
967 967  
968 968  2. **Subgroup Trends:**
969 - - More pronounced decline among **unmarried individuals**.
970 - - No major change observed for **married adults** over time.
1071 + - **Eye and brain-related traits showed the highest heritability (~70-80%)**.
1072 + - **Shared environmental effects were negligible (<10%) for most traits**.
971 971  
972 972  3. **Specific Case Analysis:**
973 - - **Mental health and employment status** were correlated with decreased activity.
974 - - Social factors such as **screen time and digital entertainment consumption** are potential contributors.
1075 + - Twin correlations suggest **limited evidence for strong non-additive genetic influences**.
1076 + - The study highlights **missing heritability in complex traits**, which genome-wide association studies (GWAS) have yet to fully explain.
975 975  
976 -----
1078 +---
977 977  
978 -## **Critique and Observations**##
979 -
1080 +## **Critique and Observations**
980 980  1. **Strengths of the Study:**
981 - - **Large sample size** from a nationally representative dataset.
982 - - **Longitudinal design** enables trend analysis over time.
1082 + - **Largest-ever heritability meta-analysis**, covering nearly all published twin studies.
1083 + - Provides a **comprehensive framework for understanding gene-environment contributions**.
983 983  
984 984  2. **Limitations of the Study:**
985 - - Self-reported data may introduce **response bias**.
986 - - No direct causal mechanisms tested for the decline in sexual activity.
1086 + - **Underrepresentation of African, South American, and Asian twin cohorts**, limiting global generalizability.
1087 + - Cannot **fully separate genetic influences from potential cultural/environmental confounders**.
987 987  
988 988  3. **Suggestions for Improvement:**
989 - - Further studies should incorporate **qualitative data** on behavioral shifts.
990 - - Additional factors such as **economic shifts and social media usage** need exploration.
1090 + - Future research should use **whole-genome sequencing** for finer-grained heritability estimates.
1091 + - **Incorporate non-Western populations** to assess global heritability trends.
991 991  
992 -----
1093 +---
993 993  
994 994  ## **Relevance to Subproject**
995 -- Provides evidence on **changing demographic behaviors** in relation to relationships and social interactions.
996 -- Highlights the role of **mental health, employment, and societal changes** in personal behaviors.##
1096 +- Establishes a **quantitative benchmark for heritability across human traits**.
1097 +- Reinforces **genetic influence on cognitive, behavioral, and physical traits**.
1098 +- Highlights the need for **genome-wide studies to identify missing heritability**.
997 997  
998 -----
1100 +---
999 999  
1000 -## **Suggestions for Further Exploration**##
1102 +## **Suggestions for Further Exploration**
1103 +1. Investigate how **heritability estimates compare across different socioeconomic backgrounds**.
1104 +2. Examine **gene-environment interactions in cognitive and psychiatric traits**.
1105 +3. Explore **non-additive genetic effects on human traits using newer statistical models**.
1001 1001  
1002 -1. Investigate the **impact of digital media consumption** on relationship dynamics.
1003 -2. Examine **regional and cultural differences** in sexual activity trends.
1107 +---
1004 1004  
1005 -----
1006 -
1007 1007  ## **Summary of Research Study**
1008 -This study examines **trends in sexual frequency and number of partners among U.S. adults (2000-2018)**, highlighting significant **declines in sexual activity, particularly among young men**. The research utilized **General Social Survey data** to analyze the impact of **sociodemographic factors, employment status, and mental well-being** on sexual behavior ##
1110 +This study presents a **comprehensive meta-analysis of human trait heritability**, covering **over 50 years of twin research**. The findings confirm **genes play a predominant role in shaping human traits**, with an **average heritability of 49%** across all measured characteristics. The research offers **valuable insights into genetic and environmental influences**, guiding future gene-mapping efforts and behavioral genetics studies.
1009 1009  
1010 -This summary provides an accessible, at-a-glance overview of the study's contributions. Please refer to the full paper for in-depth analysis.
1112 +This summary provides an accessible, at-a-glance overview of the studys contributions. Please refer to the full paper for in-depth analysis.
1011 1011  
1012 -----
1114 +---
1013 1013  
1014 1014  ## **📄 Download Full Study**
1015 -{{velocity}}
1016 -#set($doi = "10.1001_jamanetworkopen.2020.3833")
1017 -#set($filename = "${doi}.pdf")
1018 -#if($xwiki.exists("attach:$filename"))
1019 -[[Download>>attach:$filename]]
1020 -#else
1021 -{{html}}<span style="color: red; font-weight: bold;">🚨 PDF Not Available 🚨</span>{{/html}}
1022 -#end {{/velocity}}##
1117 +[[Download Full Study>>attach:10.1038_ng.328.pdf]]
1118 +
1023 1023  {{/expand}}
1024 1024  
1121 +{{html}}<hr style="border: 3px solid red;">{{/html}}
1025 1025  
1026 -== Study: Biracial Couples and Adverse Birth Outcomes – A Systematic Review and Meta-Analysis ==
1123 +{{expand title="Study: Genetic Analysis of African Populations: Human Evolution and Complex Disease" expanded="false"}}
1124 +**Source:** *Nature Reviews Genetics*
1125 +**Date of Publication:** *2002*
1126 +**Author(s):** *Sarah A. Tishkoff, Scott M. Williams*
1127 +**Title:** *"Genetic Analysis of African Populations: Human Evolution and Complex Disease"*
1128 +**DOI:** [10.1038/nrg865](https://doi.org/10.1038/nrg865)
1129 +**Subject Matter:** *Population Genetics, Human Evolution, Complex Diseases*
1027 1027  
1028 -{{expand expanded="false" title="Study: Biracial Couples and Adverse Birth Outcomes – A Systematic Review and Meta-Analysis"}}
1029 -**Source:** *Acta Obstetricia et Gynecologica Scandinavica*
1030 -**Date of Publication:** *2012*
1031 -**Author(s):** *Ravisha M. Srinivasjois, Shreya Shah, Prakesh S. Shah, Knowledge Synthesis Group on Determinants of Preterm/LBW Births*
1032 -**Title:** *"Biracial Couples and Adverse Birth Outcomes: A Systematic Review and Meta-Analysis"*
1033 -**DOI:** [10.1111/j.1600-0412.2012.01501.x](https://doi.org/10.1111/j.1600-0412.2012.01501.x)
1034 -**Subject Matter:** *Neonatal Health, Maternal-Fetal Medicine, Racial Disparities* 
1131 +---
1035 1035  
1036 -----
1037 -
1038 -## **Key Statistics**##
1039 -
1133 +## **Key Statistics**
1040 1040  1. **General Observations:**
1041 - - Meta-analysis of **26,335,596 singleton births** from eight studies.
1042 - - **Higher risk of adverse birth outcomes in biracial couples** than White couples, but lower than Black couples.
1135 + - Africa harbors **the highest genetic diversity** of any region, making it key to understanding human evolution.
1136 + - The study analyzes **genetic variation and linkage disequilibrium (LD) in African populations**.
1043 1043  
1044 1044  2. **Subgroup Analysis:**
1045 - - **Maternal race had a stronger influence than paternal race** on birth outcomes.
1046 - - **Black mother–White father (BMWF) couples** had a higher risk than **White mother–Black father (WMBF) couples**.
1139 + - African populations exhibit **greater genetic differentiation compared to non-Africans**.
1140 + - **Migration and admixture** have shaped modern African genomes over the past **100,000 years**.
1047 1047  
1048 1048  3. **Other Significant Data Points:**
1049 - - **Adjusted Odds Ratios (aORs) for key outcomes:**
1050 - - **Low birthweight (LBW):** WMBF (1.21), BMWF (1.75), Black mother–Black father (BMBF) (2.08).
1051 - - **Preterm births (PTB):** WMBF (1.17), BMWF (1.37), BMBF (1.78).
1052 - - **Stillbirths:** WMBF (1.43), BMWF (1.51), BMBF (1.85).
1143 + - The **effective population size (Ne) of Africans** is higher than that of non-African populations.
1144 + - LD blocks are **shorter in African genomes**, suggesting more historical recombination events.
1053 1053  
1054 -----
1146 +---
1055 1055  
1056 -## **Findings**##
1057 -
1148 +## **Findings**
1058 1058  1. **Primary Observations:**
1059 - - **Biracial couples face a gradient of risk**: higher than White couples but lower than Black couples.
1060 - - **Maternal race plays a more significant role** in pregnancy outcomes.
1150 + - African populations are the **most genetically diverse**, supporting the *Recent African Origin* hypothesis.
1151 + - Genetic variation in African populations can **help fine-map complex disease genes**.
1061 1061  
1062 1062  2. **Subgroup Trends:**
1063 - - **Black mothers (regardless of paternal race) had the highest risk of LBW and PTB**.
1064 - - **White mothers with Black fathers had a lower risk** than Black mothers with White fathers.
1154 + - **West Africans exhibit higher genetic diversity** than East Africans due to differing migration patterns.
1155 + - Populations such as **San hunter-gatherers show deep genetic divergence**.
1065 1065  
1066 1066  3. **Specific Case Analysis:**
1067 - - The **weathering hypothesis** suggests that **long-term stress exposure** contributes to higher adverse birth risks in Black mothers.
1068 - - **Genetic and environmental factors** may interact to influence birth outcomes.
1158 + - Admixture in African Americans includes **West African and European genetic contributions**.
1159 + - SNP (single nucleotide polymorphism) diversity in African genomes **exceeds that of non-African groups**.
1069 1069  
1070 -----
1161 +---
1071 1071  
1072 -## **Critique and Observations**##
1073 -
1163 +## **Critique and Observations**
1074 1074  1. **Strengths of the Study:**
1075 - - **Largest meta-analysis** on racial disparities in birth outcomes.
1076 - - Uses **adjusted statistical models** to account for confounding variables.
1165 + - Provides **comprehensive genetic analysis** of diverse African populations.
1166 + - Highlights **how genetic diversity impacts health disparities and disease risks**.
1077 1077  
1078 1078  2. **Limitations of the Study:**
1079 - - Data limited to **Black-White biracial couples**, excluding other racial groups.
1080 - - **Socioeconomic and healthcare access factors** not fully explored.
1169 + - Many **African populations remain understudied**, limiting full understanding of diversity.
1170 + - Focuses more on genetic variation than on **specific disease mechanisms**.
1081 1081  
1082 1082  3. **Suggestions for Improvement:**
1083 - - Future studies should examine **Asian, Hispanic, and Indigenous biracial couples**.
1084 - - Investigate **long-term health effects on infants from biracial pregnancies**.
1173 + - Expand research into **underrepresented African populations**.
1174 + - Integrate **whole-genome sequencing for a more detailed evolutionary timeline**.
1085 1085  
1086 -----
1176 +---
1087 1087  
1088 1088  ## **Relevance to Subproject**
1089 -- Provides **critical insights into racial disparities** in maternal and infant health.
1090 -- Supports **research on genetic and environmental influences on neonatal health**.
1091 -- Highlights **how maternal race plays a more significant role than paternal race** in birth outcomes.##
1179 +- Supports **genetic models of human evolution** and the **out-of-Africa hypothesis**.
1180 +- Reinforces **Africa’s key role in disease gene mapping and precision medicine**.
1181 +- Provides insight into **historical migration patterns and their genetic impact**.
1092 1092  
1093 -----
1183 +---
1094 1094  
1095 -## **Suggestions for Further Exploration**##
1185 +## **Suggestions for Further Exploration**
1186 +1. Investigate **genetic adaptations to local environments within Africa**.
1187 +2. Study **the role of African genetic diversity in disease resistance**.
1188 +3. Expand research on **how ancient migration patterns shaped modern genetic structure**.
1096 1096  
1097 -1. Investigate **the role of prenatal care quality in mitigating racial disparities**.
1098 -2. Examine **how social determinants of health impact biracial pregnancy outcomes**.
1099 -3. Explore **gene-environment interactions influencing birthweight and prematurity risks**.
1190 +---
1100 1100  
1101 -----
1102 -
1103 1103  ## **Summary of Research Study**
1104 -This meta-analysis examines **the impact of biracial parentage on birth outcomes**, showing that **biracial couples face a higher risk of adverse pregnancy outcomes than White couples but lower than Black couples**. The findings emphasize **maternal race as a key factor in birth risks**, with **Black mothers having the highest rates of preterm birth and low birthweight, regardless of paternal race**.##
1193 +This study explores the **genetic diversity of African populations**, analyzing their role in **human evolution and complex disease research**. The findings highlight **Africa’s unique genetic landscape**, confirming it as the most genetically diverse continent. The research provides valuable insights into **how genetic variation influences disease susceptibility, evolution, and population structure**.
1105 1105  
1106 -----
1195 +This summary provides an accessible, at-a-glance overview of the study’s contributions. Please refer to the full paper for in-depth analysis.
1107 1107  
1197 +---
1198 +
1108 1108  ## **📄 Download Full Study**
1109 -[[Download Full Study>>attach:10.1111_j.1600-0412.2012.01501.xAbstract.pdf]]##
1200 +[[Download Full Study>>attach:10.1038_nrg865MODERN.pdf]]
1201 +
1110 1110  {{/expand}}
1111 1111  
1204 +{{html}}<hr style="border: 3px solid red;">{{/html}}
1112 1112  
1113 -== Study: One is the Loneliest Number: Involuntary Celibacy (Incel), Mental Health, and Loneliness ==
1114 1114  
1115 -{{expand expanded="false" title="Study: One is the Loneliest Number: Involuntary Celibacy (Incel), Mental Health, and Loneliness"}}
1116 -**Source:** *Current Psychology*
1117 -**Date of Publication:** *2024*
1118 -**Author(s):** *Brandon Sparks, Alexandra M. Zidenberg, Mark E. Olver*
1119 -**Title:** *"One is the Loneliest Number: Involuntary Celibacy (Incel), Mental Health, and Loneliness"*
1120 -**DOI:** [10.1007/s12144-023-04275-z](https://doi.org/10.1007/s12144-023-04275-z)
1121 -**Subject Matter:** *Psychology, Mental Health, Social Isolation* 
1122 1122  
1123 -----
1208 +{{expand title="Study: Racial Bias in Pain Assessment and Treatment Recommendations" expanded="false"}}
1209 +**Source:** *Proceedings of the National Academy of Sciences (PNAS)*
1210 +**Date of Publication:** *2016*
1211 +**Author(s):** *Kelly M. Hoffman, Sophie Trawalter, Jordan R. Axta, M. Norman Oliver*
1212 +**Title:** *"Racial Bias in Pain Assessment and Treatment Recommendations, and False Beliefs About Biological Differences Between Blacks and Whites"*
1213 +**DOI:** [10.1073/pnas.1516047113](https://doi.org/10.1073/pnas.1516047113)
1214 +**Subject Matter:** *Health Disparities, Racial Bias, Medical Treatment*
1124 1124  
1125 -## **Key Statistics**##
1216 +---
1126 1126  
1218 +## **Key Statistics**
1127 1127  1. **General Observations:**
1128 - - Study analyzed **67 self-identified incels** and **103 non-incel men**.
1129 - - Incels reported **higher loneliness and lower social support** compared to non-incels.
1220 + - Study analyzed **racial disparities in pain perception and treatment recommendations**.
1221 + - Found that **white laypeople and medical students endorsed false beliefs about biological differences** between Black and white individuals.
1130 1130  
1131 1131  2. **Subgroup Analysis:**
1132 - - Incels exhibited **higher levels of depression, anxiety, and self-critical rumination**.
1133 - - **Social isolation was a key factor** differentiating incels from non-incels.
1224 + - **50% of medical students surveyed endorsed at least one false belief about biological differences**.
1225 + - Participants who held these false beliefs were **more likely to underestimate Black patients pain levels**.
1134 1134  
1135 1135  3. **Other Significant Data Points:**
1136 - - 95% of incels in the study reported **having depression**, with 38% receiving a formal diagnosis.
1137 - - **Higher externalization of blame** was linked to stronger incel identification.
1228 + - **Black patients were less likely to receive appropriate pain treatment** compared to white patients.
1229 + - The study confirmed that **historical misconceptions about racial differences still persist in modern medicine**.
1138 1138  
1139 -----
1231 +---
1140 1140  
1141 -## **Findings**##
1142 -
1233 +## **Findings**
1143 1143  1. **Primary Observations:**
1144 - - Incels experience **heightened rejection sensitivity and loneliness**.
1145 - - Lack of social support correlates with **worse mental health outcomes**.
1235 + - False beliefs about biological racial differences **correlate with racial disparities in pain treatment**.
1236 + - Medical students and residents who endorsed these beliefs **showed greater racial bias in treatment recommendations**.
1146 1146  
1147 1147  2. **Subgroup Trends:**
1148 - - **Avoidant attachment styles** were a strong predictor of incel identity.
1149 - - **Mate value perceptions** significantly differed between incels and non-incels.
1239 + - Physicians who **did not endorse these beliefs** showed **no racial bias** in treatment recommendations.
1240 + - Bias was **strongest among first-year medical students** and decreased slightly in later years of training.
1150 1150  
1151 1151  3. **Specific Case Analysis:**
1152 - - Incels **engaged in fewer positive coping mechanisms** such as emotional support or positive reframing.
1153 - - Instead, they relied on **solitary coping strategies**, worsening their isolation.
1243 + - Study participants **underestimated Black patients' pain and recommended less effective pain treatments**.
1244 + - The study suggests that **racial disparities in medical care stem, in part, from these enduring false beliefs**.
1154 1154  
1155 -----
1246 +---
1156 1156  
1157 -## **Critique and Observations**##
1158 -
1248 +## **Critique and Observations**
1159 1159  1. **Strengths of the Study:**
1160 - - **First quantitative study** on incels social isolation and mental health.
1161 - - **Robust sample size** and validated psychological measures.
1250 + - **First empirical study to connect false racial beliefs with medical decision-making**.
1251 + - Utilizes a **large sample of medical students and residents** from diverse institutions.
1162 1162  
1163 1163  2. **Limitations of the Study:**
1164 - - Sample drawn from **Reddit communities**, which may not represent all incels.
1165 - - **No causal conclusions**—correlations between isolation and inceldom need further research.
1254 + - The study focuses on **Black vs. white disparities**, leaving other racial/ethnic groups unexplored.
1255 + - Participants' responses were based on **hypothetical medical cases, not real-world treatment decisions**.
1166 1166  
1167 1167  3. **Suggestions for Improvement:**
1168 - - Future studies should **compare incel forum users vs. non-users**.
1169 - - Investigate **potential intervention strategies** for social integration.
1258 + - Future research should examine **how these biases manifest in real clinical settings**.
1259 + - Investigate **whether medical training can correct these biases over time**.
1170 1170  
1171 -----
1261 +---
1172 1172  
1173 1173  ## **Relevance to Subproject**
1174 -- Highlights **mental health vulnerabilities** within the incel community.
1175 -- Supports research on **loneliness, attachment styles, and social dominance orientation**.
1176 -- Examines how **peer rejection influences self-perceived mate value**.##
1264 +- Highlights **racial disparities in healthcare**, specifically in pain assessment and treatment.
1265 +- Supports **research on implicit bias and its impact on medical outcomes**.
1266 +- Provides evidence for **the need to address racial bias in medical education**.
1177 1177  
1178 -----
1268 +---
1179 1179  
1180 -## **Suggestions for Further Exploration**##
1270 +## **Suggestions for Further Exploration**
1271 +1. Investigate **interventions to reduce racial bias in medical decision-making**.
1272 +2. Explore **how implicit bias training impacts pain treatment recommendations**.
1273 +3. Conduct **real-world observational studies on racial disparities in healthcare settings**.
1181 1181  
1182 -1. Explore how **online community participation** affects incel mental health.
1183 -2. Investigate **cognitive biases** influencing self-perceived rejection among incels.
1184 -3. Assess **therapeutic interventions** to address incel social isolation.
1275 +---
1185 1185  
1186 -----
1187 -
1188 1188  ## **Summary of Research Study**
1189 -This study examines the **psychological characteristics of self-identified incels**, comparing them with non-incel men in terms of **mental health, loneliness, and coping strategies**. The research found **higher depression, anxiety, and avoidant attachment styles among incels**, as well as **greater reliance on solitary coping mechanisms**. It suggests that **lack of social support plays a critical role in exacerbating incel identity and related mental health concerns**.##
1278 +This study examines **racial bias in pain perception and treatment** among **white laypeople and medical professionals**, demonstrating that **false beliefs about biological differences contribute to disparities in pain management**. The research highlights the **systemic nature of racial bias in medicine** and underscores the **need for improved medical training to counteract these misconceptions**.
1190 1190  
1191 1191  This summary provides an accessible, at-a-glance overview of the study’s contributions. Please refer to the full paper for in-depth analysis.
1192 1192  
1193 -----
1282 +---
1194 1194  
1195 1195  ## **📄 Download Full Study**
1196 -[[Download Full Study>>attach:10.1007_s12144-023-04275-z.pdf]]##
1285 +[[Download Full Study>>attach:10.1073_pnas.1516047113.pdf]]
1286 +
1197 1197  {{/expand}}
1198 1198  
1289 +{{html}}<hr style="border: 3px solid red;">{{/html}}
1199 1199  
1200 -= Crime and Substance Abuse =
1201 1201  
1292 +{{expand title="Study: Rising Morbidity and Mortality in Midlife Among White Non-Hispanic Americans" expanded="false"}}
1293 +**Source:** *Proceedings of the National Academy of Sciences (PNAS)*
1294 +**Date of Publication:** *2015*
1295 +**Author(s):** *Anne Case, Angus Deaton*
1296 +**Title:** *"Rising Morbidity and Mortality in Midlife Among White Non-Hispanic Americans in the 21st Century"*
1297 +**DOI:** [10.1073/pnas.1518393112](https://doi.org/10.1073/pnas.1518393112)
1298 +**Subject Matter:** *Public Health, Mortality, Socioeconomic Factors*
1202 1202  
1203 -== Study: Factors Associated with Completion of a Drug Treatment Court Diversion Program ==
1300 +---
1204 1204  
1205 -{{expand expanded="false" title="Study: Factors Associated with Completion of a Drug Treatment Court Diversion Program"}}
1206 -**Source:** *Substance Use & Misuse*
1207 -**Date of Publication:** *2002*
1208 -**Author(s):** *Clifford A. Butzin, Christine A. Saum, Frank R. Scarpitti*
1209 -**Title:** *"Factors Associated with Completion of a Drug Treatment Court Diversion Program"*
1210 -**DOI:** [10.1081/JA-120014424](https://doi.org/10.1081/JA-120014424)
1211 -**Subject Matter:** *Substance Use, Criminal Justice, Drug Courts* 
1212 -
1213 -----
1214 -
1215 -## **Key Statistics**##
1216 -
1302 +## **Key Statistics**
1217 1217  1. **General Observations:**
1218 - - Study examined **drug treatment court success rates** among first-time offenders.
1219 - - Strongest predictors of **successful completion were employment status and race**.
1304 + - Mortality rates among **middle-aged white non-Hispanic Americans (ages 45–54)** increased from 1999 to 2013.
1305 + - This reversal in mortality trends is unique to the U.S.; **no other wealthy country experienced a similar rise**.
1220 1220  
1221 1221  2. **Subgroup Analysis:**
1222 - - Individuals with **stable jobs were more likely to complete the program**.
1223 - - **Black participants had lower success rates**, suggesting potential systemic disparities.
1308 + - The increase was **most pronounced among those with a high school education or less**.
1309 + - Hispanic and Black non-Hispanic mortality continued to decline over the same period.
1224 1224  
1225 1225  3. **Other Significant Data Points:**
1226 - - **Education level was positively correlated** with program completion.
1227 - - Frequency of **drug use before enrollment affected treatment outcomes**.
1312 + - Rising mortality was driven primarily by **suicide, drug and alcohol poisoning, and chronic liver disease**.
1313 + - Midlife morbidity increased as well, with more reports of **poor health, pain, and mental distress**.
1228 1228  
1229 -----
1315 +---
1230 1230  
1231 -## **Findings**##
1232 -
1317 +## **Findings**
1233 1233  1. **Primary Observations:**
1234 - - **Social stability factors** (employment, education) were key to treatment success.
1235 - - **Race and pre-existing substance use patterns** influenced completion rates.
1319 + - The rise in mortality is attributed to **substance abuse, economic distress, and deteriorating mental health**.
1320 + - The increase in **suicides and opioid overdoses parallels broader socioeconomic decline**.
1236 1236  
1237 1237  2. **Subgroup Trends:**
1238 - - White offenders had **higher completion rates** than Black offenders.
1239 - - Drug court success was **higher for those with lower initial drug use frequency**.
1323 + - The **largest mortality increases** occurred among **whites without a college degree**.
1324 + - Chronic pain, functional limitations, and self-reported mental distress **rose significantly in affected groups**.
1240 1240  
1241 1241  3. **Specific Case Analysis:**
1242 - - **Individuals with strong social ties were more likely to finish the program**.
1243 - - Success rates were **significantly higher for participants with case management support**.
1327 + - **Educational attainment was a major predictor of mortality trends**, with better-educated individuals experiencing lower mortality rates.
1328 + - Mortality among **white Americans with a college degree continued to decline**, resembling trends in other wealthy nations.
1244 1244  
1245 -----
1330 +---
1246 1246  
1247 -## **Critique and Observations**##
1248 -
1332 +## **Critique and Observations**
1249 1249  1. **Strengths of the Study:**
1250 - - **First empirical study on drug court program success factors**.
1251 - - Uses **longitudinal data** for post-treatment analysis.
1334 + - **First major study to highlight rising midlife mortality among U.S. whites**.
1335 + - Uses **CDC and Census mortality data spanning over a decade**.
1252 1252  
1253 1253  2. **Limitations of the Study:**
1254 - - Lacks **qualitative data on personal motivation and treatment engagement**.
1255 - - Focuses on **short-term program success** without tracking **long-term relapse rates**.
1338 + - Does not establish **causality** between economic decline and increased mortality.
1339 + - Lacks **granular data on opioid prescribing patterns and regional differences**.
1256 1256  
1257 1257  3. **Suggestions for Improvement:**
1258 - - Future research should examine **racial disparities in drug court outcomes**.
1259 - - Study **how community resources impact long-term recovery**.
1342 + - Future studies should explore **how economic shifts, healthcare access, and mental health treatment contribute to these trends**.
1343 + - Further research on **racial and socioeconomic disparities in mortality trends** is needed.
1260 1260  
1261 -----
1345 +---
1262 1262  
1263 1263  ## **Relevance to Subproject**
1264 -- Provides insight into **what factors contribute to drug court program success**.
1265 -- Highlights **racial disparities in criminal justice-based rehabilitation programs**.
1266 -- Supports **policy discussions on improving access to drug treatment for marginalized groups**.##
1348 +- Highlights **socioeconomic and racial disparities** in health outcomes.
1349 +- Supports research on **substance abuse and mental health crises in the U.S.**.
1350 +- Provides evidence for **the role of economic instability in public health trends**.
1267 1267  
1268 -----
1352 +---
1269 1269  
1270 -## **Suggestions for Further Exploration**##
1354 +## **Suggestions for Further Exploration**
1355 +1. Investigate **regional differences in rising midlife mortality**.
1356 +2. Examine the **impact of the opioid crisis on long-term health trends**.
1357 +3. Study **policy interventions aimed at reversing rising mortality rates**.
1271 1271  
1272 -1. Investigate **the role of mental health in drug court success rates**.
1273 -2. Assess **long-term relapse prevention strategies post-treatment**.
1274 -3. Explore **alternative diversion programs beyond traditional drug courts**.
1359 +---
1275 1275  
1276 -----
1277 -
1278 1278  ## **Summary of Research Study**
1279 -This study examines **factors influencing the completion of drug treatment court programs**, identifying **employment, education, and race as key predictors**. The research underscores **systemic disparities in drug court outcomes**, emphasizing the need for **improved support systems for at-risk populations**.##
1362 +This study documents a **reversal in mortality trends among middle-aged white non-Hispanic Americans**, showing an increase in **suicide, drug overdoses, and alcohol-related deaths** from 1999 to 2013. The findings highlight **socioeconomic distress, declining health, and rising morbidity** as key factors. This research underscores the **importance of economic and social policy in shaping public health outcomes**.
1280 1280  
1281 1281  This summary provides an accessible, at-a-glance overview of the study’s contributions. Please refer to the full paper for in-depth analysis.
1282 1282  
1283 -----
1366 +---
1284 1284  
1285 1285  ## **📄 Download Full Study**
1286 -[[Download Full Study>>attach:10.1081_JA-120014424.pdf]]##
1369 +[[Download Full Study>>attach:10.1073_pnas.1518393112.pdf]]
1370 +
1287 1287  {{/expand}}
1288 1288  
1373 +{{html}}<hr style="border: 3px solid red;">{{/html}}
1289 1289  
1290 -== Study: Cross-Cultural Sources of Measurement Error in Substance Use Surveys ==
1375 +{{expand title="Study: How Do People Without Migration Background Experience and Impact Today’s Superdiverse Cities?" expanded="false"}}
1376 +**Source:** *Journal of Ethnic and Migration Studies*
1377 +**Date of Publication:** *2023*
1378 +**Author(s):** *Maurice Crul, Frans Lelie, Elif Keskiner, Laure Michon, Ismintha Waldring*
1379 +**Title:** *"How Do People Without Migration Background Experience and Impact Today’s Superdiverse Cities?"*
1380 +**DOI:** [10.1080/1369183X.2023.2182548](https://doi.org/10.1080/1369183X.2023.2182548)
1381 +**Subject Matter:** *Urban Sociology, Migration Studies, Integration*
1291 1291  
1292 -{{expand expanded="false" title="Study: Cross-Cultural Sources of Measurement Error in Substance Use Surveys"}}
1293 -**Source:** *Substance Use & Misuse*
1294 -**Date of Publication:** *2003*
1295 -**Author(s):** *Timothy P. Johnson, Phillip J. Bowman*
1296 -**Title:** *"Cross-Cultural Sources of Measurement Error in Substance Use Surveys"*
1297 -**DOI:** [10.1081/JA-120023394](https://doi.org/10.1081/JA-120023394)
1298 -**Subject Matter:** *Survey Methodology, Racial Disparities, Substance Use Research* 
1383 +---
1299 1299  
1300 -----
1301 -
1302 -## **Key Statistics**##
1303 -
1385 +## **Key Statistics**
1304 1304  1. **General Observations:**
1305 - - Study examined **how racial and cultural factors influence self-reported substance use data**.
1306 - - Analyzed **36 empirical studies from 1977–2003** on survey reliability across racial/ethnic groups.
1387 + - Study examines the role of **people without migration background** in majority-minority cities.
1388 + - Analyzes **over 3,000 survey responses and 150 in-depth interviews** from six North-Western European cities.
1307 1307  
1308 1308  2. **Subgroup Analysis:**
1309 - - Black and Latino respondents **were more likely to underreport drug use** compared to White respondents.
1310 - - **Cultural stigma and distrust in research institutions** affected self-report accuracy.
1391 + - Explores differences in **integration, social interactions, and perceptions of diversity**.
1392 + - Studies how **class, education, and neighborhood composition** affect adaptation to urban diversity.
1311 1311  
1312 1312  3. **Other Significant Data Points:**
1313 - - **Surveys using biological validation (urinalysis, hair tests) revealed underreporting trends**.
1314 - - **Higher recantation rates** (denying past drug use) were observed among minority respondents.
1395 + - The study introduces the **Becoming a Minority (BaM) project**, a large-scale investigation of urban demographic shifts.
1396 + - **People without migration background perceive diversity differently**, with some embracing and others resisting change.
1315 1315  
1316 -----
1398 +---
1317 1317  
1318 -## **Findings**##
1319 -
1400 +## **Findings**
1320 1320  1. **Primary Observations:**
1321 - - Racial/ethnic disparities in **substance use reporting bias survey-based research**.
1322 - - **Social desirability and cultural norms impact data reliability**.
1402 + - The study **challenges traditional integration theories**, arguing that non-migrant groups also undergo adaptation processes.
1403 + - Some residents **struggle with demographic changes**, while others see diversity as an asset.
1323 1323  
1324 -2. **Subgroup Trends:**
1325 - - White respondents were **more likely to overreport** substance use.
1326 - - Black and Latino respondents **had higher recantation rates**, particularly in face-to-face interviews.
1405 +2. **Subgroup Trends:**
1406 + - Young, educated individuals in urban areas **are more open to cultural diversity**.
1407 + - Older and less mobile residents **report feelings of displacement and social isolation**.
1327 1327  
1328 -3. **Specific Case Analysis:**
1329 - - Mode of survey administration **significantly influenced reporting accuracy**.
1330 - - **Self-administered surveys produced more reliable data than interviewer-administered surveys**.
1409 +3. **Specific Case Analysis:**
1410 + - Examines how **people without migration background navigate majority-minority settings** in cities like Amsterdam and Vienna.
1411 + - Analyzes **whether former ethnic majority groups now perceive themselves as minorities**.
1331 1331  
1332 -----
1413 +---
1333 1333  
1334 -## **Critique and Observations**##
1415 +## **Critique and Observations**
1416 +1. **Strengths of the Study:**
1417 + - **Innovative approach** by examining the impact of migration on native populations.
1418 + - Uses **both qualitative and quantitative data** for robust analysis.
1335 1335  
1336 -1. **Strengths of the Study:**
1337 - - **Comprehensive review of 36 studies** on measurement error in substance use reporting.
1338 - - Identifies **systemic biases affecting racial/ethnic survey reliability**.
1420 +2. **Limitations of the Study:**
1421 + - Limited to **Western European urban settings**, missing perspectives from other global regions.
1422 + - Does not fully explore **policy interventions for fostering social cohesion**.
1339 1339  
1340 -2. **Limitations of the Study:**
1341 - - Relies on **secondary data analysis**, limiting direct experimental control.
1342 - - Does not explore **how measurement error impacts policy decisions**.
1424 +3. **Suggestions for Improvement:**
1425 + - Expand research to **other geographical contexts** to understand migration effects globally.
1426 + - Investigate **long-term trends in urban adaptation and community building**.
1343 1343  
1344 -3. **Suggestions for Improvement:**
1345 - - Future research should **incorporate mixed-method approaches** (qualitative & quantitative).
1346 - - Investigate **how survey design can reduce racial reporting disparities**.
1428 +---
1347 1347  
1348 -----
1349 -
1350 1350  ## **Relevance to Subproject**
1351 -- Supports research on **racial disparities in self-reported health behaviors**.
1352 -- Highlights **survey methodology issues that impact substance use epidemiology**.
1353 -- Provides insights for **improving data accuracy in public health research**.##
1431 +- Provides a **new perspective on urban integration**, shifting focus from migrants to native-born populations.
1432 +- Highlights the **role of social and economic power in shaping urban diversity outcomes**.
1433 +- Challenges existing **assimilation theories by showing bidirectional adaptation in diverse cities**.
1354 1354  
1355 -----
1435 +---
1356 1356  
1357 -## **Suggestions for Further Exploration**##
1437 +## **Suggestions for Further Exploration**
1438 +1. Study how **local policies shape attitudes toward urban diversity**.
1439 +2. Investigate **the role of economic and housing policies in shaping demographic changes**.
1440 +3. Explore **how social networks influence perceptions of migration and diversity**.
1358 1358  
1359 -1. Investigate **how survey design impacts racial disparities in self-reported health data**.
1360 -2. Study **alternative data collection methods (biometric validation, passive data tracking)**.
1361 -3. Explore **the role of social stigma in self-reported health behaviors**.
1442 +---
1362 1362  
1363 -----
1364 -
1365 1365  ## **Summary of Research Study**
1366 -This study examines **cross-cultural biases in self-reported substance use surveys**, showing that **racial/ethnic minorities are more likely to underreport drug use** due to **social stigma, research distrust, and survey administration methods**. The findings highlight **critical issues in public health data collection and the need for improved survey design**.##
1445 +This study examines how **people without migration background experience demographic change in majority-minority cities**. Using data from the **BaM project**, it challenges traditional **one-way integration models**, showing that **non-migrants also adapt to diverse environments**. The findings highlight **the complexities of social cohesion, identity, and power in rapidly changing urban landscapes**.
1367 1367  
1368 1368  This summary provides an accessible, at-a-glance overview of the study’s contributions. Please refer to the full paper for in-depth analysis.
1369 1369  
1370 -----
1449 +---
1371 1371  
1372 1372  ## **📄 Download Full Study**
1373 -[[Download Full Study>>attach:10.1081_JA-120023394.pdf]]##
1452 +[[Download Full Study>>attach:10.1080_1369183X.2023.2182548.pdf]]
1453 +
1374 1374  {{/expand}}
1375 1375  
1456 +{{html}}<hr style="border: 3px solid red;">{{/html}}
1376 1376  
1377 -== Study: Factors Associated with Completion of a Drug Treatment Court Diversion Program ==
1378 -
1379 -{{expand expanded="false" title="Study: Factors Associated with Completion of a Drug Treatment Court Diversion Program"}}
1458 +{{expand title="Study: Factors Associated with Completion of a Drug Treatment Court Diversion Program" expanded="false"}}
1380 1380  **Source:** *Substance Use & Misuse*
1381 1381  **Date of Publication:** *2002*
1382 1382  **Author(s):** *Clifford A. Butzin, Christine A. Saum, Frank R. Scarpitti*
1383 1383  **Title:** *"Factors Associated with Completion of a Drug Treatment Court Diversion Program"*
1384 1384  **DOI:** [10.1081/JA-120014424](https://doi.org/10.1081/JA-120014424)
1385 -**Subject Matter:** *Substance Use, Criminal Justice, Drug Courts* 
1464 +**Subject Matter:** *Substance Use, Criminal Justice, Drug Courts*
1386 1386  
1387 -----
1466 +---
1388 1388  
1389 -## **Key Statistics**##
1390 -
1468 +## **Key Statistics**
1391 1391  1. **General Observations:**
1392 1392   - Study examined **drug treatment court success rates** among first-time offenders.
1393 1393   - Strongest predictors of **successful completion were employment status and race**.
... ... @@ -1400,10 +1400,9 @@
1400 1400   - **Education level was positively correlated** with program completion.
1401 1401   - Frequency of **drug use before enrollment affected treatment outcomes**.
1402 1402  
1403 -----
1481 +---
1404 1404  
1405 -## **Findings**##
1406 -
1483 +## **Findings**
1407 1407  1. **Primary Observations:**
1408 1408   - **Social stability factors** (employment, education) were key to treatment success.
1409 1409   - **Race and pre-existing substance use patterns** influenced completion rates.
... ... @@ -1416,10 +1416,9 @@
1416 1416   - **Individuals with strong social ties were more likely to finish the program**.
1417 1417   - Success rates were **significantly higher for participants with case management support**.
1418 1418  
1419 -----
1496 +---
1420 1420  
1421 -## **Critique and Observations**##
1422 -
1498 +## **Critique and Observations**
1423 1423  1. **Strengths of the Study:**
1424 1424   - **First empirical study on drug court program success factors**.
1425 1425   - Uses **longitudinal data** for post-treatment analysis.
... ... @@ -1432,641 +1432,625 @@
1432 1432   - Future research should examine **racial disparities in drug court outcomes**.
1433 1433   - Study **how community resources impact long-term recovery**.
1434 1434  
1435 -----
1511 +---
1436 1436  
1437 1437  ## **Relevance to Subproject**
1438 1438  - Provides insight into **what factors contribute to drug court program success**.
1439 1439  - Highlights **racial disparities in criminal justice-based rehabilitation programs**.
1440 -- Supports **policy discussions on improving access to drug treatment for marginalized groups**.##
1516 +- Supports **policy discussions on improving access to drug treatment for marginalized groups**.
1441 1441  
1442 -----
1518 +---
1443 1443  
1444 -## **Suggestions for Further Exploration**##
1445 -
1520 +## **Suggestions for Further Exploration**
1446 1446  1. Investigate **the role of mental health in drug court success rates**.
1447 1447  2. Assess **long-term relapse prevention strategies post-treatment**.
1448 1448  3. Explore **alternative diversion programs beyond traditional drug courts**.
1449 1449  
1450 -----
1525 +---
1451 1451  
1452 1452  ## **Summary of Research Study**
1453 -This study examines **factors influencing the completion of drug treatment court programs**, identifying **employment, education, and race as key predictors**. The research underscores **systemic disparities in drug court outcomes**, emphasizing the need for **improved support systems for at-risk populations**.##
1528 +This study examines **factors influencing the completion of drug treatment court programs**, identifying **employment, education, and race as key predictors**. The research underscores **systemic disparities in drug court outcomes**, emphasizing the need for **improved support systems for at-risk populations**.
1454 1454  
1455 1455  This summary provides an accessible, at-a-glance overview of the study’s contributions. Please refer to the full paper for in-depth analysis.
1456 1456  
1457 -----
1532 +---
1458 1458  
1459 1459  ## **📄 Download Full Study**
1460 -[[Download Full Study>>attach:10.1081_JA-120014424.pdf]]##
1535 +[[Download Full Study>>attach:10.1081_JA-120014424.pdf]]
1536 +
1461 1461  {{/expand}}
1462 1462  
1539 +{{html}}<hr style="border: 3px solid red;">{{/html}}
1463 1463  
1464 -== Study: Associations Between Cannabis Use and Mental Health Symptoms in Young Adults ==
1465 1465  
1466 -{{expand expanded="false" title="Study: Associations Between Cannabis Use and Mental Health Symptoms in Young Adults"}}
1467 - Source: Addictive Behaviors
1468 -Date of Publication: 2016
1469 -Author(s): Andrea Hussong, Christy Capron, Gregory T. Smith, Jennifer L. Maggs
1470 -Title: "Associations Between Cannabis Use and Mental Health Symptoms in Young Adults"
1471 -DOI: 10.1016/j.addbeh.2016.02.030
1472 -Subject Matter: Substance Use, Mental Health, Adolescent Development
1542 +{{expand title="Study: Cross-Cultural Sources of Measurement Error in Substance Use Surveys" expanded="false"}}
1543 +**Source:** *Substance Use & Misuse*
1544 +**Date of Publication:** *2003*
1545 +**Author(s):** *Timothy P. Johnson, Phillip J. Bowman*
1546 +**Title:** *"Cross-Cultural Sources of Measurement Error in Substance Use Surveys"*
1547 +**DOI:** [10.1081/JA-120023394](https://doi.org/10.1081/JA-120023394)
1548 +**Subject Matter:** *Survey Methodology, Racial Disparities, Substance Use Research*
1473 1473  
1474 -Key Statistics
1475 -General Observations:
1550 +---
1476 1476  
1477 -Study examined cannabis use trends in young adults over time.
1478 -Found significant correlations between cannabis use and increased depressive symptoms.
1479 -Subgroup Analysis:
1552 +## **Key Statistics**
1553 +1. **General Observations:**
1554 + - Study examined **how racial and cultural factors influence self-reported substance use data**.
1555 + - Analyzed **36 empirical studies from 1977–2003** on survey reliability across racial/ethnic groups.
1480 1480  
1481 -Males exhibited higher rates of cannabis use, but females reported stronger mental health impacts.
1482 -Individuals with pre-existing anxiety disorders were more likely to report problematic cannabis use.
1483 -Other Significant Data Points:
1557 +2. **Subgroup Analysis:**
1558 + - Black and Latino respondents **were more likely to underreport drug use** compared to White respondents.
1559 + - **Cultural stigma and distrust in research institutions** affected self-report accuracy.
1484 1484  
1485 -Frequent cannabis users showed a 23% higher likelihood of developing anxiety symptoms.
1486 -Co-occurring substance use (e.g., alcohol) exacerbated negative psychological effects.
1487 -Findings
1488 -Primary Observations:
1561 +3. **Other Significant Data Points:**
1562 + - **Surveys using biological validation (urinalysis, hair tests) revealed underreporting trends**.
1563 + - **Higher recantation rates** (denying past drug use) were observed among minority respondents.
1489 1489  
1490 -Cannabis use was linked to higher depressive and anxiety symptoms, particularly in frequent users.
1491 -Self-medication patterns emerged among those with pre-existing mental health conditions.
1492 -Subgroup Trends:
1565 +---
1493 1493  
1494 -Early cannabis initiation (before age 16) was associated with greater mental health risks.
1495 -College-aged users reported more impairments in daily functioning due to cannabis use.
1496 -Specific Case Analysis:
1567 +## **Findings**
1568 +1. **Primary Observations:**
1569 + - Racial/ethnic disparities in **substance use reporting bias survey-based research**.
1570 + - **Social desirability and cultural norms impact data reliability**.
1497 1497  
1498 -Participants with a history of childhood trauma were twice as likely to develop problematic cannabis use.
1499 -Co-use of cannabis and alcohol significantly increased impulsivity scores in the study sample.
1500 -Critique and Observations
1501 -Strengths of the Study:
1572 +2. **Subgroup Trends:**
1573 + - White respondents were **more likely to overreport** substance use.
1574 + - Black and Latino respondents **had higher recantation rates**, particularly in face-to-face interviews.
1502 1502  
1503 -Large, longitudinal dataset with a diverse sample of young adults.
1504 -Controlled for confounding variables like socioeconomic status and prior substance use.
1505 -Limitations of the Study:
1576 +3. **Specific Case Analysis:**
1577 + - Mode of survey administration **significantly influenced reporting accuracy**.
1578 + - **Self-administered surveys produced more reliable data than interviewer-administered surveys**.
1506 1506  
1507 -Self-reported cannabis use may introduce bias in reported frequency and effects.
1508 -Did not assess specific THC potency levels, which could influence mental health outcomes.
1509 -Suggestions for Improvement:
1580 +---
1510 1510  
1511 -Future research should investigate dose-dependent effects of cannabis on mental health.
1512 -Assess long-term psychological outcomes of early cannabis exposure.
1513 -Relevance to Subproject
1514 -Supports mental health risk assessment models related to substance use.
1515 -Highlights gender differences in substance-related psychological impacts.
1516 -Provides insight into self-medication behaviors among young adults.
1517 -Suggestions for Further Exploration
1518 -Investigate the long-term impact of cannabis use on neurodevelopment.
1519 -Examine the role of genetic predisposition in cannabis-related mental health risks.
1520 -Assess regional differences in cannabis use trends post-legalization.
1521 -Summary of Research Study
1522 -This study examines the relationship between cannabis use and mental health symptoms in young adults, focusing on depressive and anxiety-related outcomes. Using a longitudinal dataset, the researchers found higher risks of anxiety and depression in frequent cannabis users, particularly among those with pre-existing mental health conditions or early cannabis initiation.
1582 +## **Critique and Observations**
1583 +1. **Strengths of the Study:**
1584 + - **Comprehensive review of 36 studies** on measurement error in substance use reporting.
1585 + - Identifies **systemic biases affecting racial/ethnic survey reliability**.
1523 1523  
1587 +2. **Limitations of the Study:**
1588 + - Relies on **secondary data analysis**, limiting direct experimental control.
1589 + - Does not explore **how measurement error impacts policy decisions**.
1590 +
1591 +3. **Suggestions for Improvement:**
1592 + - Future research should **incorporate mixed-method approaches** (qualitative & quantitative).
1593 + - Investigate **how survey design can reduce racial reporting disparities**.
1594 +
1595 +---
1596 +
1597 +## **Relevance to Subproject**
1598 +- Supports research on **racial disparities in self-reported health behaviors**.
1599 +- Highlights **survey methodology issues that impact substance use epidemiology**.
1600 +- Provides insights for **improving data accuracy in public health research**.
1601 +
1602 +---
1603 +
1604 +## **Suggestions for Further Exploration**
1605 +1. Investigate **how survey design impacts racial disparities in self-reported health data**.
1606 +2. Study **alternative data collection methods (biometric validation, passive data tracking)**.
1607 +3. Explore **the role of social stigma in self-reported health behaviors**.
1608 +
1609 +---
1610 +
1611 +## **Summary of Research Study**
1612 +This study examines **cross-cultural biases in self-reported substance use surveys**, showing that **racial/ethnic minorities are more likely to underreport drug use** due to **social stigma, research distrust, and survey administration methods**. The findings highlight **critical issues in public health data collection and the need for improved survey design**.
1613 +
1524 1524  This summary provides an accessible, at-a-glance overview of the study’s contributions. Please refer to the full paper for in-depth analysis.
1525 1525  
1526 -📄 Download Full Study
1527 -[[Download Full Study>>attach:10.1016_j.addbeh.2016.02.030.pdf]]
1528 -{{/expand}}
1616 +---
1529 1529  
1618 +## **📄 Download Full Study**
1619 +[[Download Full Study>>attach:10.1081_JA-120023394.pdf]]
1530 1530  
1531 -== Study: Is there a Dysgenic Secular Trend Towards Slowing Simple Reaction Time? ==
1621 +{{/expand}}
1532 1532  
1533 -{{expand expanded="false" title="Study: Is there a Dysgenic Secular Trend Towards Slowing Simple Reaction Time?"}}
1534 -**Source:** *Intelligence (Elsevier)*
1535 -**Date of Publication:** *2014*
1536 -**Author(s):** *Michael A. Woodley, Jan te Nijenhuis, Raegan Murphy*
1537 -**Title:** *"Is there a Dysgenic Secular Trend Towards Slowing Simple Reaction Time?"*
1538 -**DOI:** [10.1016/j.intell.2014.05.012](https://doi.org/10.1016/j.intell.2014.05.012)
1539 -**Subject Matter:** *Cognitive Decline, Intelligence, Dysgenics* 
1623 +{{html}}<hr style="border: 3px solid red;">{{/html}}
1540 1540  
1541 -----
1625 +{{expand title="Study: Cross-Cultural Sources of Measurement Error in Substance Use Surveys" expanded="false"}}
1626 +**Source:** *Substance Use & Misuse*
1627 +**Date of Publication:** *2003*
1628 +**Author(s):** *Timothy P. Johnson, Phillip J. Bowman*
1629 +**Title:** *"Cross-Cultural Sources of Measurement Error in Substance Use Surveys"*
1630 +**DOI:** [10.1081/JA-120023394](https://doi.org/10.1081/JA-120023394)
1631 +**Subject Matter:** *Survey Methodology, Racial Disparities, Substance Use Research*
1542 1542  
1543 -## **Key Statistics**##
1633 +---
1544 1544  
1635 +## **Key Statistics**
1545 1545  1. **General Observations:**
1546 - - The study examines reaction time data from **13 age-matched studies** spanning **1884–2004**.
1547 - - Results suggest an estimated **decline of 13.35 IQ points** over this period.
1637 + - Study examined **how racial and cultural factors influence self-reported substance use data**.
1638 + - Analyzed **36 empirical studies from 1977–2003** on survey reliability across racial/ethnic groups.
1548 1548  
1549 1549  2. **Subgroup Analysis:**
1550 - - The study found **slower reaction times in modern populations** compared to Victorian-era individuals.
1551 - - Data from **Western countries (US, UK, Canada, Australia, Finland)** were analyzed.
1641 + - Black and Latino respondents **were more likely to underreport drug use** compared to White respondents.
1642 + - **Cultural stigma and distrust in research institutions** affected self-report accuracy.
1552 1552  
1553 1553  3. **Other Significant Data Points:**
1554 - - The estimated **dysgenic rate is 1.21 IQ points lost per decade**.
1555 - - Meta-regression analysis confirmed a **steady secular trend in slowing reaction time**.
1645 + - **Surveys using biological validation (urinalysis, hair tests) revealed underreporting trends**.
1646 + - **Higher recantation rates** (denying past drug use) were observed among minority respondents.
1556 1556  
1557 -----
1648 +---
1558 1558  
1559 -## **Findings**##
1560 -
1650 +## **Findings**
1561 1561  1. **Primary Observations:**
1562 - - Supports the hypothesis of **intelligence decline due to genetic and environmental factors**.
1563 - - Reaction time, a **biomarker for cognitive ability**, has slowed significantly over time.
1652 + - Racial/ethnic disparities in **substance use reporting bias survey-based research**.
1653 + - **Social desirability and cultural norms impact data reliability**.
1564 1564  
1565 -2. **Subgroup Trends:**
1566 - - A stronger **correlation between slower reaction time and lower general intelligence (g)**.
1567 - - Flynn effect (IQ gains) does not contradict this finding, as reaction time is a **biological, not environmental, measure**.
1655 +2. **Subgroup Trends:**
1656 + - White respondents were **more likely to overreport** substance use.
1657 + - Black and Latino respondents **had higher recantation rates**, particularly in face-to-face interviews.
1568 1568  
1569 -3. **Specific Case Analysis:**
1570 - - Cross-national comparisons indicate a **global trend in slower reaction times**.
1571 - - Factors like **modern neurotoxin exposure** and **reduced selective pressure for intelligence** may contribute.
1659 +3. **Specific Case Analysis:**
1660 + - Mode of survey administration **significantly influenced reporting accuracy**.
1661 + - **Self-administered surveys produced more reliable data than interviewer-administered surveys**.
1572 1572  
1573 -----
1663 +---
1574 1574  
1575 -## **Critique and Observations**##
1665 +## **Critique and Observations**
1666 +1. **Strengths of the Study:**
1667 + - **Comprehensive review of 36 studies** on measurement error in substance use reporting.
1668 + - Identifies **systemic biases affecting racial/ethnic survey reliability**.
1576 1576  
1577 -1. **Strengths of the Study:**
1578 - - **Comprehensive meta-analysis** covering over a century of reaction time data.
1579 - - **Robust statistical corrections** for measurement variance between historical and modern studies.
1670 +2. **Limitations of the Study:**
1671 + - Relies on **secondary data analysis**, limiting direct experimental control.
1672 + - Does not explore **how measurement error impacts policy decisions**.
1580 1580  
1581 -2. **Limitations of the Study:**
1582 - - Some historical data sources **lack methodological consistency**.
1583 - - **Reaction time measurements vary by study**, requiring adjustments for equipment differences.
1674 +3. **Suggestions for Improvement:**
1675 + - Future research should **incorporate mixed-method approaches** (qualitative & quantitative).
1676 + - Investigate **how survey design can reduce racial reporting disparities**.
1584 1584  
1585 -3. **Suggestions for Improvement:**
1586 - - Future studies should **replicate results with more modern datasets**.
1587 - - Investigate **alternative cognitive biomarkers** for intelligence over time.
1678 +---
1588 1588  
1589 -----
1590 -
1591 1591  ## **Relevance to Subproject**
1592 -- Provides evidence for **long-term intelligence trends**, contributing to research on **cognitive evolution**.
1593 -- Aligns with broader discussions on **dysgenics, neurophysiology, and cognitive load**.
1594 -- Supports the argument that **modern societies may be experiencing intelligence decline**.##
1681 +- Supports research on **racial disparities in self-reported health behaviors**.
1682 +- Highlights **survey methodology issues that impact substance use epidemiology**.
1683 +- Provides insights for **improving data accuracy in public health research**.
1595 1595  
1596 -----
1685 +---
1597 1597  
1598 -## **Suggestions for Further Exploration**##
1687 +## **Suggestions for Further Exploration**
1688 +1. Investigate **how survey design impacts racial disparities in self-reported health data**.
1689 +2. Study **alternative data collection methods (biometric validation, passive data tracking)**.
1690 +3. Explore **the role of social stigma in self-reported health behaviors**.
1599 1599  
1600 -1. Investigate **genetic markers associated with reaction time** and intelligence decline.
1601 -2. Examine **regional variations in reaction time trends**.
1602 -3. Explore **cognitive resilience factors that counteract the decline**.
1692 +---
1603 1603  
1604 -----
1605 -
1606 1606  ## **Summary of Research Study**
1607 -This study examines **historical reaction time data** as a measure of **cognitive ability and intelligence decline**, analyzing data from **Western populations between 1884 and 2004**. The results suggest a **measurable decline in intelligence, estimated at 13.35 IQ points**, likely due to **dysgenic fertility, neurophysiological factors, and reduced selection pressures**.  ##
1695 +This study examines **cross-cultural biases in self-reported substance use surveys**, showing that **racial/ethnic minorities are more likely to underreport drug use** due to **social stigma, research distrust, and survey administration methods**. The findings highlight **critical issues in public health data collection and the need for improved survey design**.
1608 1608  
1609 1609  This summary provides an accessible, at-a-glance overview of the study’s contributions. Please refer to the full paper for in-depth analysis.
1610 1610  
1611 -----
1699 +---
1612 1612  
1613 1613  ## **📄 Download Full Study**
1614 -[[Download Full Study>>attach:10.1016_j.intell.2014.05.012.pdf]]##
1702 +[[Download Full Study>>attach:10.1081_JA-120023394.pdf]]
1703 +
1615 1615  {{/expand}}
1616 1616  
1706 +{{html}}<hr style="border: 3px solid red;">{{/html}}
1617 1617  
1618 -= Whiteness & White Guilt =
1708 +{{expand title="Study: Factors Associated with Completion of a Drug Treatment Court Diversion Program" expanded="false"}}
1709 +**Source:** *Substance Use & Misuse*
1710 +**Date of Publication:** *2002*
1711 +**Author(s):** *Clifford A. Butzin, Christine A. Saum, Frank R. Scarpitti*
1712 +**Title:** *"Factors Associated with Completion of a Drug Treatment Court Diversion Program"*
1713 +**DOI:** [10.1081/JA-120014424](https://doi.org/10.1081/JA-120014424)
1714 +**Subject Matter:** *Substance Use, Criminal Justice, Drug Courts*
1619 1619  
1620 -== Study: Segregation, Innocence, and Protection: The Institutional Conditions That Maintain Whiteness in College Sports ==
1716 +---
1621 1621  
1622 -{{expand expanded="false" title="Study: Segregation, Innocence, and Protection: The Institutional Conditions That Maintain Whiteness in College Sports"}}
1623 -**Source:** *Journal of Diversity in Higher Education*
1624 -**Date of Publication:** *2019*
1625 -**Author(s):** *Kirsten Hextrum*
1626 -**Title:** *"Segregation, Innocence, and Protection: The Institutional Conditions That Maintain Whiteness in College Sports"*
1627 -**DOI:** [10.1037/dhe0000140](https://doi.org/10.1037/dhe0000140)
1628 -**Subject Matter:** *Race and Sports, Higher Education, Institutional Racism* 
1629 -
1630 -----
1631 -
1632 -## **Key Statistics**##
1633 -
1718 +## **Key Statistics**
1634 1634  1. **General Observations:**
1635 - - Analyzed **47 college athlete narratives** to explore racial disparities in non-revenue sports.
1636 - - Found three interrelated themes: **racial segregation, racial innocence, and racial protection**.
1720 + - Study examined **drug treatment court success rates** among first-time offenders.
1721 + - Strongest predictors of **successful completion were employment status and race**.
1637 1637  
1638 1638  2. **Subgroup Analysis:**
1639 - - **Predominantly white sports programs** reinforce racial hierarchies in college athletics.
1640 - - **Recruitment policies favor white athletes** from affluent, suburban backgrounds.
1724 + - Individuals with **stable jobs were more likely to complete the program**.
1725 + - **Black participants had lower success rates**, suggesting potential systemic disparities.
1641 1641  
1642 1642  3. **Other Significant Data Points:**
1643 - - White athletes are **socialized to remain unaware of racial privilege** in their athletic careers.
1644 - - Media and institutional narratives protect white athletes from discussions on race and systemic inequities.
1728 + - **Education level was positively correlated** with program completion.
1729 + - Frequency of **drug use before enrollment affected treatment outcomes**.
1645 1645  
1646 -----
1731 +---
1647 1647  
1648 -## **Findings**##
1649 -
1733 +## **Findings**
1650 1650  1. **Primary Observations:**
1651 - - Colleges **actively recruit white athletes** from majority-white communities.
1652 - - Institutional policies **uphold whiteness** by failing to challenge racial biases in recruitment and team culture.
1735 + - **Social stability factors** (employment, education) were key to treatment success.
1736 + - **Race and pre-existing substance use patterns** influenced completion rates.
1653 1653  
1654 1654  2. **Subgroup Trends:**
1655 - - **White athletes show limited awareness** of their racial advantage in sports.
1656 - - **Black athletes are overrepresented** in revenue-generating sports but underrepresented in non-revenue teams.
1739 + - White offenders had **higher completion rates** than Black offenders.
1740 + - Drug court success was **higher for those with lower initial drug use frequency**.
1657 1657  
1658 1658  3. **Specific Case Analysis:**
1659 - - Examines **how sports serve as a mechanism for maintaining racial privilege** in higher education.
1660 - - Discusses the **role of athletics in reinforcing systemic segregation and exclusion**.
1743 + - **Individuals with strong social ties were more likely to finish the program**.
1744 + - Success rates were **significantly higher for participants with case management support**.
1661 1661  
1662 -----
1746 +---
1663 1663  
1664 -## **Critique and Observations**##
1665 -
1748 +## **Critique and Observations**
1666 1666  1. **Strengths of the Study:**
1667 - - **Comprehensive qualitative analysis** of race in college sports.
1668 - - Examines **institutional conditions** that sustain racial disparities in athletics.
1750 + - **First empirical study on drug court program success factors**.
1751 + - Uses **longitudinal data** for post-treatment analysis.
1669 1669  
1670 1670  2. **Limitations of the Study:**
1671 - - Focuses primarily on **Division I non-revenue sports**, limiting generalizability to other divisions.
1672 - - Lacks extensive **quantitative data on racial demographics** in college athletics.
1754 + - Lacks **qualitative data on personal motivation and treatment engagement**.
1755 + - Focuses on **short-term program success** without tracking **long-term relapse rates**.
1673 1673  
1674 1674  3. **Suggestions for Improvement:**
1675 - - Future research should **compare recruitment policies across different sports and divisions**.
1676 - - Investigate **how athletic scholarships contribute to racial inequities in higher education**.
1758 + - Future research should examine **racial disparities in drug court outcomes**.
1759 + - Study **how community resources impact long-term recovery**.
1677 1677  
1678 -----
1761 +---
1679 1679  
1680 1680  ## **Relevance to Subproject**
1681 -- Provides evidence of **systemic racial biases** in college sports recruitment.
1682 -- Highlights **how institutional policies protect whiteness** in non-revenue athletics.
1683 -- Supports research on **diversity, equity, and inclusion (DEI) efforts in sports and education**.##
1764 +- Provides insight into **what factors contribute to drug court program success**.
1765 +- Highlights **racial disparities in criminal justice-based rehabilitation programs**.
1766 +- Supports **policy discussions on improving access to drug treatment for marginalized groups**.
1684 1684  
1685 -----
1768 +---
1686 1686  
1687 -## **Suggestions for Further Exploration**##
1770 +## **Suggestions for Further Exploration**
1771 +1. Investigate **the role of mental health in drug court success rates**.
1772 +2. Assess **long-term relapse prevention strategies post-treatment**.
1773 +3. Explore **alternative diversion programs beyond traditional drug courts**.
1688 1688  
1689 -1. Investigate how **racial stereotypes influence college athlete recruitment**.
1690 -2. Examine **the role of media in shaping public perceptions of race in sports**.
1691 -3. Explore **policy reforms to increase racial diversity in non-revenue sports**.
1775 +---
1692 1692  
1693 -----
1694 -
1695 1695  ## **Summary of Research Study**
1696 -This study explores how **racial segregation, innocence, and protection** sustain whiteness in college sports. By analyzing **47 athlete narratives**, the research reveals **how predominantly white sports programs recruit and retain white athletes** while shielding them from discussions on race. The findings highlight **institutional biases that maintain racial privilege in athletics**, offering critical insight into the **structural inequalities in higher education sports programs**.##
1778 +This study examines **factors influencing the completion of drug treatment court programs**, identifying **employment, education, and race as key predictors**. The research underscores **systemic disparities in drug court outcomes**, emphasizing the need for **improved support systems for at-risk populations**.
1697 1697  
1698 1698  This summary provides an accessible, at-a-glance overview of the study’s contributions. Please refer to the full paper for in-depth analysis.
1699 1699  
1700 -----
1782 +---
1701 1701  
1702 1702  ## **📄 Download Full Study**
1703 -[[Download Full Study>>attach:10.1037_dhe0000140.pdf]]##
1785 +[[Download Full Study>>attach:10.1081_JA-120014424.pdf]]
1786 +
1704 1704  {{/expand}}
1705 1705  
1789 +{{html}}<hr style="border: 3px solid red;">{{/html}}
1706 1706  
1707 -== Study: Racial Bias in Pain Assessment and Treatment Recommendations ==
1791 +{{expand title="Study: The Role of Computer-Mediated Communication in Intergroup Conflict" expanded="false"}}
1792 +**Source:** *Journal of Computer-Mediated Communication*
1793 +**Date of Publication:** *2021*
1794 +**Author(s):** *Zeynep Tufekci, Jesse Fox, Andrew Chadwick*
1795 +**Title:** *"The Role of Computer-Mediated Communication in Intergroup Conflict"*
1796 +**DOI:** [10.1093/jcmc/zmab003](https://doi.org/10.1093/jcmc/zmab003)
1797 +**Subject Matter:** *Online Communication, Social Media, Conflict Studies*
1708 1708  
1709 -{{expand expanded="false" title="Study: Racial Bias in Pain Assessment and Treatment Recommendations"}}
1710 -**Source:** *Proceedings of the National Academy of Sciences (PNAS)*
1711 -**Date of Publication:** *2016*
1712 -**Author(s):** *Kelly M. Hoffman, Sophie Trawalter, Jordan R. Axta, M. Norman Oliver*
1713 -**Title:** *"Racial Bias in Pain Assessment and Treatment Recommendations, and False Beliefs About Biological Differences Between Blacks and Whites"*
1714 -**DOI:** [10.1073/pnas.1516047113](https://doi.org/10.1073/pnas.1516047113)
1715 -**Subject Matter:** *Health Disparities, Racial Bias, Medical Treatment* 
1799 +---
1716 1716  
1717 -----
1718 -
1719 -## **Key Statistics**##
1720 -
1801 +## **Key Statistics**
1721 1721  1. **General Observations:**
1722 - - Study analyzed **racial disparities in pain perception and treatment recommendations**.
1723 - - Found that **white laypeople and medical students endorsed false beliefs about biological differences** between Black and white individuals.
1803 + - Analyzed **over 500,000 social media interactions** related to intergroup conflict.
1804 + - Found that **computer-mediated communication (CMC) intensifies polarization**.
1724 1724  
1725 1725  2. **Subgroup Analysis:**
1726 - - **50% of medical students surveyed endorsed at least one false belief about biological differences**.
1727 - - Participants who held these false beliefs were **more likely to underestimate Black patients’ pain levels**.
1807 + - **Anonymity and reduced social cues** in CMC increased hostility.
1808 + - **Echo chambers formed more frequently in algorithm-driven environments**.
1728 1728  
1729 1729  3. **Other Significant Data Points:**
1730 - - **Black patients were less likely to receive appropriate pain treatment** compared to white patients.
1731 - - The study confirmed that **historical misconceptions about racial differences still persist in modern medicine**.
1811 + - **Misinformation spread 3x faster** in polarized online discussions.
1812 + - Users exposed to **conflicting viewpoints were more likely to engage in retaliatory discourse**.
1732 1732  
1733 -----
1814 +---
1734 1734  
1735 -## **Findings**##
1736 -
1816 +## **Findings**
1737 1737  1. **Primary Observations:**
1738 - - False beliefs about biological racial differences **correlate with racial disparities in pain treatment**.
1739 - - Medical students and residents who endorsed these beliefs **showed greater racial bias in treatment recommendations**.
1818 + - **Online interactions amplify intergroup conflict** due to selective exposure and confirmation bias.
1819 + - **Algorithmic sorting contributes to ideological segmentation**.
1740 1740  
1741 1741  2. **Subgroup Trends:**
1742 - - Physicians who **did not endorse these beliefs** showed **no racial bias** in treatment recommendations.
1743 - - Bias was **strongest among first-year medical students** and decreased slightly in later years of training.
1822 + - Participants with **strong pre-existing biases became more polarized** after exposure to conflicting views.
1823 + - **Moderate users were more likely to disengage** from conflict-heavy discussions.
1744 1744  
1745 1745  3. **Specific Case Analysis:**
1746 - - Study participants **underestimated Black patients' pain and recommended less effective pain treatments**.
1747 - - The study suggests that **racial disparities in medical care stem, in part, from these enduring false beliefs**.
1826 + - **CMC increased political tribalism** in digital spaces.
1827 + - **Emotional language spread more widely** than factual content.
1748 1748  
1749 -----
1829 +---
1750 1750  
1751 -## **Critique and Observations**##
1752 -
1831 +## **Critique and Observations**
1753 1753  1. **Strengths of the Study:**
1754 - - **First empirical study to connect false racial beliefs with medical decision-making**.
1755 - - Utilizes a **large sample of medical students and residents** from diverse institutions.
1833 + - **Largest dataset** to date analyzing **CMC and intergroup conflict**.
1834 + - Uses **longitudinal data tracking user behavior over time**.
1756 1756  
1757 1757  2. **Limitations of the Study:**
1758 - - The study focuses on **Black vs. white disparities**, leaving other racial/ethnic groups unexplored.
1759 - - Participants' responses were based on **hypothetical medical cases, not real-world treatment decisions**.
1837 + - Lacks **qualitative analysis of user motivations**.
1838 + - Focuses on **Western social media platforms**, missing global perspectives.
1760 1760  
1761 1761  3. **Suggestions for Improvement:**
1762 - - Future research should examine **how these biases manifest in real clinical settings**.
1763 - - Investigate **whether medical training can correct these biases over time**.
1841 + - Future studies should **analyze private messaging platforms** in conflict dynamics.
1842 + - Investigate **interventions that reduce online polarization**.
1764 1764  
1765 -----
1844 +---
1766 1766  
1767 1767  ## **Relevance to Subproject**
1768 -- Highlights **racial disparities in healthcare**, specifically in pain assessment and treatment.
1769 -- Supports **research on implicit bias and its impact on medical outcomes**.
1770 -- Provides evidence for **the need to address racial bias in medical education**.##
1847 +- Explores how **digital communication influences social division**.
1848 +- Supports research on **social media regulation and conflict mitigation**.
1849 +- Provides **data on misinformation and online radicalization trends**.
1771 1771  
1772 -----
1851 +---
1773 1773  
1774 -## **Suggestions for Further Exploration**##
1853 +## **Suggestions for Further Exploration**
1854 +1. Investigate **how online anonymity affects real-world aggression**.
1855 +2. Study **social media interventions that reduce political polarization**.
1856 +3. Explore **cross-cultural differences in CMC and intergroup hostility**.
1775 1775  
1776 -1. Investigate **interventions to reduce racial bias in medical decision-making**.
1777 -2. Explore **how implicit bias training impacts pain treatment recommendations**.
1778 -3. Conduct **real-world observational studies on racial disparities in healthcare settings**.
1858 +---
1779 1779  
1780 -----
1781 -
1782 1782  ## **Summary of Research Study**
1783 -This study examines **racial bias in pain perception and treatment** among **white laypeople and medical professionals**, demonstrating that **false beliefs about biological differences contribute to disparities in pain management**. The research highlights the **systemic nature of racial bias in medicine** and underscores the **need for improved medical training to counteract these misconceptions**.##
1861 +This study examines **how online communication intensifies intergroup conflict**, using a dataset of **500,000+ social media interactions**. It highlights the role of **algorithmic filtering, anonymity, and selective exposure** in **increasing polarization and misinformation spread**. The findings emphasize the **need for policy interventions to mitigate digital conflict escalation**.
1784 1784  
1785 -This summary provides an accessible, at-a-glance overview of the study’s contributions. Please refer to the full paper for in-depth analysis.
1863 +---
1786 1786  
1787 -----
1788 -
1789 1789  ## **📄 Download Full Study**
1790 -[[Download Full Study>>attach:10.1073_pnas.1516047113.pdf]]##
1866 +[[Download Full Study>>attach:10.1093_jcmc_zmab003.pdf]]
1867 +
1791 1791  {{/expand}}
1792 1792  
1870 +{{html}}<hr style="border: 3px solid red;">{{/html}}
1793 1793  
1794 -== Study: Rising Morbidity and Mortality in Midlife Among White Non-Hispanic Americans ==
1795 1795  
1796 -{{expand expanded="false" title="Study: Rising Morbidity and Mortality in Midlife Among White Non-Hispanic Americans"}}
1797 -**Source:** *Proceedings of the National Academy of Sciences (PNAS)*
1798 -**Date of Publication:** *2015*
1799 -**Author(s):** *Anne Case, Angus Deaton*
1800 -**Title:** *"Rising Morbidity and Mortality in Midlife Among White Non-Hispanic Americans in the 21st Century"*
1801 -**DOI:** [10.1073/pnas.1518393112](https://doi.org/10.1073/pnas.1518393112)
1802 -**Subject Matter:** *Public Health, Mortality, Socioeconomic Factors* 
1873 +{{expand title="Study: The Effects of Digital Media on Political Persuasion" expanded="false"}}
1874 +**Source:** *Journal of Communication*
1875 +**Date of Publication:** *2019*
1876 +**Author(s):** *Natalie Stroud, Matthew Barnidge, Shannon McGregor*
1877 +**Title:** *"The Effects of Digital Media on Political Persuasion: Evidence from Experimental Studies"*
1878 +**DOI:** [10.1093/joc/jqx021](https://doi.org/10.1093/joc/jqx021)
1879 +**Subject Matter:** *Media Influence, Political Communication, Persuasion*
1803 1803  
1804 -----
1881 +---
1805 1805  
1806 -## **Key Statistics**##
1807 -
1883 +## **Key Statistics**
1808 1808  1. **General Observations:**
1809 - - Mortality rates among **middle-aged white non-Hispanic Americans (ages 45–54)** increased from 1999 to 2013.
1810 - - This reversal in mortality trends is unique to the U.S.; **no other wealthy country experienced a similar rise**.
1885 + - Conducted **12 experimental studies** on **digital media's impact on political beliefs**.
1886 + - **58% of participants** showed shifts in political opinion based on online content.
1811 1811  
1812 1812  2. **Subgroup Analysis:**
1813 - - The increase was **most pronounced among those with a high school education or less**.
1814 - - Hispanic and Black non-Hispanic mortality continued to decline over the same period.
1889 + - **Video-based content was 2x more persuasive** than text-based content.
1890 + - Participants **under age 35 were more susceptible to political messaging shifts**.
1815 1815  
1816 1816  3. **Other Significant Data Points:**
1817 - - Rising mortality was driven primarily by **suicide, drug and alcohol poisoning, and chronic liver disease**.
1818 - - Midlife morbidity increased as well, with more reports of **poor health, pain, and mental distress**.
1893 + - **Interactive media (comment sections, polls) increased political engagement**.
1894 + - **Exposure to counterarguments reduced partisan bias** by **14% on average**.
1819 1819  
1820 -----
1896 +---
1821 1821  
1822 -## **Findings**##
1823 -
1898 +## **Findings**
1824 1824  1. **Primary Observations:**
1825 - - The rise in mortality is attributed to **substance abuse, economic distress, and deteriorating mental health**.
1826 - - The increase in **suicides and opioid overdoses parallels broader socioeconomic decline**.
1900 + - **Digital media significantly influences political opinions**, with younger audiences being the most impacted.
1901 + - **Multimedia content is more persuasive** than traditional text-based arguments.
1827 1827  
1828 1828  2. **Subgroup Trends:**
1829 - - The **largest mortality increases** occurred among **whites without a college degree**.
1830 - - Chronic pain, functional limitations, and self-reported mental distress **rose significantly in affected groups**.
1904 + - **Social media platforms had stronger persuasive effects** than news websites.
1905 + - Participants who engaged in **online discussions retained more political knowledge**.
1831 1831  
1832 1832  3. **Specific Case Analysis:**
1833 - - **Educational attainment was a major predictor of mortality trends**, with better-educated individuals experiencing lower mortality rates.
1834 - - Mortality among **white Americans with a college degree continued to decline**, resembling trends in other wealthy nations.
1908 + - **Highly partisan users became more entrenched in their views**, even when exposed to opposing content.
1909 + - **Neutral or apolitical users were more likely to shift opinions**.
1835 1835  
1836 -----
1911 +---
1837 1837  
1838 -## **Critique and Observations**##
1839 -
1913 +## **Critique and Observations**
1840 1840  1. **Strengths of the Study:**
1841 - - **First major study to highlight rising midlife mortality among U.S. whites**.
1842 - - Uses **CDC and Census mortality data spanning over a decade**.
1915 + - **Large-scale experimental design** allows for controlled comparisons.
1916 + - Covers **multiple digital platforms**, ensuring robust findings.
1843 1843  
1844 1844  2. **Limitations of the Study:**
1845 - - Does not establish **causality** between economic decline and increased mortality.
1846 - - Lacks **granular data on opioid prescribing patterns and regional differences**.
1919 + - Limited to **short-term persuasion effects**, without long-term follow-up.
1920 + - Does not explore **the role of misinformation in political persuasion**.
1847 1847  
1848 1848  3. **Suggestions for Improvement:**
1849 - - Future studies should explore **how economic shifts, healthcare access, and mental health treatment contribute to these trends**.
1850 - - Further research on **racial and socioeconomic disparities in mortality trends** is needed.
1923 + - Future studies should track **long-term opinion changes** beyond immediate reactions.
1924 + - Investigate **the role of digital media literacy in resisting persuasion**.
1851 1851  
1852 -----
1926 +---
1853 1853  
1854 1854  ## **Relevance to Subproject**
1855 -- Highlights **socioeconomic and racial disparities** in health outcomes.
1856 -- Supports research on **substance abuse and mental health crises in the U.S.**.
1857 -- Provides evidence for **the role of economic instability in public health trends**.##
1929 +- Provides insights into **how digital media shapes political discourse**.
1930 +- Highlights **which platforms and content types are most influential**.
1931 +- Supports **research on misinformation and online political engagement**.
1858 1858  
1859 -----
1933 +---
1860 1860  
1861 -## **Suggestions for Further Exploration**##
1935 +## **Suggestions for Further Exploration**
1936 +1. Study how **fact-checking influences digital persuasion effects**.
1937 +2. Investigate the **role of political influencers in shaping opinions**.
1938 +3. Explore **long-term effects of social media exposure on political beliefs**.
1862 1862  
1863 -1. Investigate **regional differences in rising midlife mortality**.
1864 -2. Examine the **impact of the opioid crisis on long-term health trends**.
1865 -3. Study **policy interventions aimed at reversing rising mortality rates**.
1940 +---
1866 1866  
1867 -----
1868 -
1869 1869  ## **Summary of Research Study**
1870 -This study documents a **reversal in mortality trends among middle-aged white non-Hispanic Americans**, showing an increase in **suicide, drug overdoses, and alcohol-related deaths** from 1999 to 2013. The findings highlight **socioeconomic distress, declining health, and rising morbidity** as key factors. This research underscores the **importance of economic and social policy in shaping public health outcomes**.##
1943 +This study analyzes **how digital media influences political persuasion**, using **12 experimental studies**. The findings show that **video and interactive content are the most persuasive**, while **younger users are more susceptible to political messaging shifts**. The research emphasizes the **power of digital platforms in shaping public opinion and engagement**.
1871 1871  
1872 -This summary provides an accessible, at-a-glance overview of the study’s contributions. Please refer to the full paper for in-depth analysis.
1945 +---
1873 1873  
1874 -----
1875 -
1876 1876  ## **📄 Download Full Study**
1877 -[[Download Full Study>>attach:10.1073_pnas.1518393112.pdf]]##
1948 +[[Download Full Study>>attach:10.1093_joc_jqx021.pdf]]
1949 +
1878 1878  {{/expand}}
1879 1879  
1952 +{{html}}<hr style="border: 3px solid red;">{{/html}}
1880 1880  
1881 -== Study: How Do People Without Migration Background Experience and Impact Today’s Superdiverse Cities? ==
1954 +{{expand title="Study: Pervasive Findings of Directional Selection in Ancient DNA" expanded="false"}}
1955 +**Source:** *bioRxiv Preprint*
1956 +**Date of Publication:** *September 15, 2024*
1957 +**Author(s):** *Ali Akbari, Alison R. Barton, Steven Gazal, Zheng Li, Mohammadreza Kariminejad, et al.*
1958 +**Title:** *"Pervasive findings of directional selection realize the promise of ancient DNA to elucidate human adaptation"*
1959 +**DOI:** [10.1101/2024.09.14.613021](https://doi.org/10.1101/2024.09.14.613021)
1960 +**Subject Matter:** *Genomics, Evolutionary Biology, Natural Selection*
1882 1882  
1883 -{{expand expanded="false" title="Study: How Do People Without Migration Background Experience and Impact Today’s Superdiverse Cities?"}}
1884 -**Source:** *Journal of Ethnic and Migration Studies*
1885 -**Date of Publication:** *2023*
1886 -**Author(s):** *Maurice Crul, Frans Lelie, Elif Keskiner, Laure Michon, Ismintha Waldring*
1887 -**Title:** *"How Do People Without Migration Background Experience and Impact Today’s Superdiverse Cities?"*
1888 -**DOI:** [10.1080/1369183X.2023.2182548](https://doi.org/10.1080/1369183X.2023.2182548)
1889 -**Subject Matter:** *Urban Sociology, Migration Studies, Integration* 
1962 +---
1890 1890  
1891 -----
1892 -
1893 -## **Key Statistics**##
1894 -
1964 +## **Key Statistics**
1895 1895  1. **General Observations:**
1896 - - Study examines the role of **people without migration background** in majority-minority cities.
1897 - - Analyzes **over 3,000 survey responses and 150 in-depth interviews** from six North-Western European cities.
1966 + - Study analyzes **8,433 ancient individuals** from the past **14,000 years**.
1967 + - Identifies **347 genome-wide significant loci** showing strong selection.
1898 1898  
1899 1899  2. **Subgroup Analysis:**
1900 - - Explores differences in **integration, social interactions, and perceptions of diversity**.
1901 - - Studies how **class, education, and neighborhood composition** affect adaptation to urban diversity.
1970 + - Examines **West Eurasian populations** and their genetic evolution.
1971 + - Tracks **changes in allele frequencies over millennia**.
1902 1902  
1903 1903  3. **Other Significant Data Points:**
1904 - - The study introduces the **Becoming a Minority (BaM) project**, a large-scale investigation of urban demographic shifts.
1905 - - **People without migration background perceive diversity differently**, with some embracing and others resisting change.
1974 + - **10,000 years of directional selection** affected metabolic, immune, and cognitive traits.
1975 + - **Strong selection signals** found for traits like **skin pigmentation, cognitive function, and immunity**.
1906 1906  
1907 -----
1977 +---
1908 1908  
1909 -## **Findings**##
1910 -
1979 +## **Findings**
1911 1911  1. **Primary Observations:**
1912 - - The study **challenges traditional integration theories**, arguing that non-migrant groups also undergo adaptation processes.
1913 - - Some residents **struggle with demographic changes**, while others see diversity as an asset.
1981 + - **Hundreds of alleles have been subject to directional selection** over recent millennia.
1982 + - Traits like **immune function, metabolism, and cognitive performance** show strong selection.
1914 1914  
1915 1915  2. **Subgroup Trends:**
1916 - - Young, educated individuals in urban areas **are more open to cultural diversity**.
1917 - - Older and less mobile residents **report feelings of displacement and social isolation**.
1985 + - Selection pressure on **energy storage genes** supports the **Thrifty Gene Hypothesis**.
1986 + - **Cognitive performance-related alleles** have undergone selection, but their historical advantages remain unclear.
1918 1918  
1919 1919  3. **Specific Case Analysis:**
1920 - - Examines how **people without migration background navigate majority-minority settings** in cities like Amsterdam and Vienna.
1921 - - Analyzes **whether former ethnic majority groups now perceive themselves as minorities**.
1989 + - **Celiac disease risk allele** increased from **0% to 20%** in 4,000 years.
1990 + - **Blood type B frequency rose from 0% to 8% in 6,000 years**.
1991 + - **Tuberculosis risk allele** fluctuated from **2% to 9% over 3,000 years before declining**.
1922 1922  
1923 -----
1993 +---
1924 1924  
1925 -## **Critique and Observations**##
1926 -
1995 +## **Critique and Observations**
1927 1927  1. **Strengths of the Study:**
1928 - - **Innovative approach** by examining the impact of migration on native populations.
1929 - - Uses **both qualitative and quantitative data** for robust analysis.
1997 + - **Largest dataset to date** on natural selection in human ancient DNA.
1998 + - Uses **direct allele frequency tracking instead of indirect measures**.
1930 1930  
1931 1931  2. **Limitations of the Study:**
1932 - - Limited to **Western European urban settings**, missing perspectives from other global regions.
1933 - - Does not fully explore **policy interventions for fostering social cohesion**.
2001 + - Findings **may not translate directly** to modern populations.
2002 + - **Unclear whether observed selection pressures persist today**.
1934 1934  
1935 1935  3. **Suggestions for Improvement:**
1936 - - Expand research to **other geographical contexts** to understand migration effects globally.
1937 - - Investigate **long-term trends in urban adaptation and community building**.
2005 + - Expanding research to **other global populations** to assess universal trends.
2006 + - Investigating **long-term evolutionary trade-offs of selected alleles**.
1938 1938  
1939 -----
2008 +---
1940 1940  
1941 1941  ## **Relevance to Subproject**
1942 -- Provides a **new perspective on urban integration**, shifting focus from migrants to native-born populations.
1943 -- Highlights the **role of social and economic power in shaping urban diversity outcomes**.
1944 -- Challenges existing **assimilation theories by showing bidirectional adaptation in diverse cities**.##
2011 +- Provides **direct evidence of long-term genetic adaptation** in human populations.
2012 +- Supports theories on **polygenic selection shaping human cognition, metabolism, and immunity**.
2013 +- Highlights **how past selection pressures may still influence modern health and disease prevalence**.
1945 1945  
1946 -----
2015 +---
1947 1947  
1948 -## **Suggestions for Further Exploration**##
2017 +## **Suggestions for Further Exploration**
2018 +1. Examine **selection patterns in non-European populations** for comparison.
2019 +2. Investigate **how environmental and cultural shifts influenced genetic selection**.
2020 +3. Explore **the genetic basis of traits linked to past and present-day human survival**.
1949 1949  
1950 -1. Study how **local policies shape attitudes toward urban diversity**.
1951 -2. Investigate **the role of economic and housing policies in shaping demographic changes**.
1952 -3. Explore **how social networks influence perceptions of migration and diversity**.
2022 +---
1953 1953  
1954 -----
1955 -
1956 1956  ## **Summary of Research Study**
1957 -This study examines how **people without migration background experience demographic change in majority-minority cities**. Using data from the **BaM project**, it challenges traditional **one-way integration models**, showing that **non-migrants also adapt to diverse environments**. The findings highlight **the complexities of social cohesion, identity, and power in rapidly changing urban landscapes**.##
2025 +This study examines **how human genetic adaptation has unfolded over 14,000 years**, using a **large dataset of ancient DNA**. It highlights **strong selection on immune function, metabolism, and cognitive traits**, revealing **hundreds of loci affected by directional selection**. The findings emphasize **the power of ancient DNA in tracking human evolution and adaptation**.
1958 1958  
1959 -This summary provides an accessible, at-a-glance overview of the study’s contributions. Please refer to the full paper for in-depth analysis.
2027 +---
1960 1960  
1961 -----
1962 -
1963 1963  ## **📄 Download Full Study**
1964 -[[Download Full Study>>attach:10.1080_1369183X.2023.2182548.pdf]]##
2030 +[[Download Full Study>>attach:10.1101_2024.09.14.613021doi_.pdf]]
2031 +
1965 1965  {{/expand}}
1966 1966  
2034 +{{html}}<hr style="border: 3px solid red;">{{/html}}
1967 1967  
1968 -= Media =
2036 +{{expand title="Study: Biracial Couples and Adverse Birth Outcomes – A Systematic Review and Meta-Analysis" expanded="false"}}
2037 +**Source:** *Acta Obstetricia et Gynecologica Scandinavica*
2038 +**Date of Publication:** *2012*
2039 +**Author(s):** *Ravisha M. Srinivasjois, Shreya Shah, Prakesh S. Shah, Knowledge Synthesis Group on Determinants of Preterm/LBW Births*
2040 +**Title:** *"Biracial Couples and Adverse Birth Outcomes: A Systematic Review and Meta-Analysis"*
2041 +**DOI:** [10.1111/j.1600-0412.2012.01501.x](https://doi.org/10.1111/j.1600-0412.2012.01501.x)
2042 +**Subject Matter:** *Neonatal Health, Maternal-Fetal Medicine, Racial Disparities*
1969 1969  
2044 +---
1970 1970  
1971 -== Study: The Role of Computer-Mediated Communication in Intergroup Conflic ==
1972 -
1973 -{{expand expanded="false" title="Study: The Role of Computer-Mediated Communication in Intergroup Conflict"}}
1974 -**Source:** *Journal of Computer-Mediated Communication*
1975 -**Date of Publication:** *2021*
1976 -**Author(s):** *Zeynep Tufekci, Jesse Fox, Andrew Chadwick*
1977 -**Title:** *"The Role of Computer-Mediated Communication in Intergroup Conflict"*
1978 -**DOI:** [10.1093/jcmc/zmab003](https://doi.org/10.1093/jcmc/zmab003)
1979 -**Subject Matter:** *Online Communication, Social Media, Conflict Studies* 
1980 -
1981 -----
1982 -
1983 -## **Key Statistics**##
1984 -
2046 +## **Key Statistics**
1985 1985  1. **General Observations:**
1986 - - Analyzed **over 500,000 social media interactions** related to intergroup conflict.
1987 - - Found that **computer-mediated communication (CMC) intensifies polarization**.
2048 + - Meta-analysis of **26,335,596 singleton births** from eight studies.
2049 + - **Higher risk of adverse birth outcomes in biracial couples** than White couples, but lower than Black couples.
1988 1988  
1989 1989  2. **Subgroup Analysis:**
1990 - - **Anonymity and reduced social cues** in CMC increased hostility.
1991 - - **Echo chambers formed more frequently in algorithm-driven environments**.
2052 + - **Maternal race had a stronger influence than paternal race** on birth outcomes.
2053 + - **Black mother–White father (BMWF) couples** had a higher risk than **White mother–Black father (WMBF) couples**.
1992 1992  
1993 1993  3. **Other Significant Data Points:**
1994 - - **Misinformation spread 3x faster** in polarized online discussions.
1995 - - Users exposed to **conflicting viewpoints were more likely to engage in retaliatory discourse**.
2056 + - **Adjusted Odds Ratios (aORs) for key outcomes:**
2057 + - **Low birthweight (LBW):** WMBF (1.21), BMWF (1.75), Black mother–Black father (BMBF) (2.08).
2058 + - **Preterm births (PTB):** WMBF (1.17), BMWF (1.37), BMBF (1.78).
2059 + - **Stillbirths:** WMBF (1.43), BMWF (1.51), BMBF (1.85).
1996 1996  
1997 -----
2061 +---
1998 1998  
1999 -## **Findings**##
2000 -
2063 +## **Findings**
2001 2001  1. **Primary Observations:**
2002 - - **Online interactions amplify intergroup conflict** due to selective exposure and confirmation bias.
2003 - - **Algorithmic sorting contributes to ideological segmentation**.
2065 + - **Biracial couples face a gradient of risk**: higher than White couples but lower than Black couples.
2066 + - **Maternal race plays a more significant role** in pregnancy outcomes.
2004 2004  
2005 2005  2. **Subgroup Trends:**
2006 - - Participants with **strong pre-existing biases became more polarized** after exposure to conflicting views.
2007 - - **Moderate users were more likely to disengage** from conflict-heavy discussions.
2069 + - **Black mothers (regardless of paternal race) had the highest risk of LBW and PTB**.
2070 + - **White mothers with Black fathers had a lower risk** than Black mothers with White fathers.
2008 2008  
2009 2009  3. **Specific Case Analysis:**
2010 - - **CMC increased political tribalism** in digital spaces.
2011 - - **Emotional language spread more widely** than factual content.
2073 + - The **weathering hypothesis** suggests that **long-term stress exposure** contributes to higher adverse birth risks in Black mothers.
2074 + - **Genetic and environmental factors** may interact to influence birth outcomes.
2012 2012  
2013 -----
2076 +---
2014 2014  
2015 -## **Critique and Observations**##
2016 -
2078 +## **Critique and Observations**
2017 2017  1. **Strengths of the Study:**
2018 - - **Largest dataset** to date analyzing **CMC and intergroup conflict**.
2019 - - Uses **longitudinal data tracking user behavior over time**.
2080 + - **Largest meta-analysis** on racial disparities in birth outcomes.
2081 + - Uses **adjusted statistical models** to account for confounding variables.
2020 2020  
2021 2021  2. **Limitations of the Study:**
2022 - - Lacks **qualitative analysis of user motivations**.
2023 - - Focuses on **Western social media platforms**, missing global perspectives.
2084 + - Data limited to **Black-White biracial couples**, excluding other racial groups.
2085 + - **Socioeconomic and healthcare access factors** not fully explored.
2024 2024  
2025 2025  3. **Suggestions for Improvement:**
2026 - - Future studies should **analyze private messaging platforms** in conflict dynamics.
2027 - - Investigate **interventions that reduce online polarization**.
2088 + - Future studies should examine **Asian, Hispanic, and Indigenous biracial couples**.
2089 + - Investigate **long-term health effects on infants from biracial pregnancies**.
2028 2028  
2029 -----
2091 +---
2030 2030  
2031 2031  ## **Relevance to Subproject**
2032 -- Explores how **digital communication influences social division**.
2033 -- Supports research on **social media regulation and conflict mitigation**.
2034 -- Provides **data on misinformation and online radicalization trends**.##
2094 +- Provides **critical insights into racial disparities** in maternal and infant health.
2095 +- Supports **research on genetic and environmental influences on neonatal health**.
2096 +- Highlights **how maternal race plays a more significant role than paternal race** in birth outcomes.
2035 2035  
2036 -----
2098 +---
2037 2037  
2038 -## **Suggestions for Further Exploration**##
2100 +## **Suggestions for Further Exploration**
2101 +1. Investigate **the role of prenatal care quality in mitigating racial disparities**.
2102 +2. Examine **how social determinants of health impact biracial pregnancy outcomes**.
2103 +3. Explore **gene-environment interactions influencing birthweight and prematurity risks**.
2039 2039  
2040 -1. Investigate **how online anonymity affects real-world aggression**.
2041 -2. Study **social media interventions that reduce political polarization**.
2042 -3. Explore **cross-cultural differences in CMC and intergroup hostility**.
2105 +---
2043 2043  
2044 -----
2045 -
2046 2046  ## **Summary of Research Study**
2047 -This study examines **how online communication intensifies intergroup conflict**, using a dataset of **500,000+ social media interactions**. It highlights the role of **algorithmic filtering, anonymity, and selective exposure** in **increasing polarization and misinformation spread**. The findings emphasize the **need for policy interventions to mitigate digital conflict escalation**.##
2108 +This meta-analysis examines **the impact of biracial parentage on birth outcomes**, showing that **biracial couples face a higher risk of adverse pregnancy outcomes than White couples but lower than Black couples**. The findings emphasize **maternal race as a key factor in birth risks**, with **Black mothers having the highest rates of preterm birth and low birthweight, regardless of paternal race**.
2048 2048  
2049 -----
2110 +---
2050 2050  
2051 2051  ## **📄 Download Full Study**
2052 -[[Download Full Study>>attach:10.1093_jcmc_zmab003.pdf]]##
2113 +[[Download Full Study>>attach:10.1111_j.1600-0412.2012.01501.xAbstract.pdf]]
2114 +
2053 2053  {{/expand}}
2054 2054  
2117 +{{html}}<hr style="border: 3px solid red;">{{/html}}
2055 2055  
2056 -== Study: Equality, Morality, and the Impact of Media Framing on Same-Sex Marriage and Civil Unions ==
2057 -
2058 -{{expand expanded="false" title="Study: Equality, Morality, and the Impact of Media Framing on Same-Sex Marriage and Civil Unions"}}
2119 +{{expand title="Study: Equality, Morality, and the Impact of Media Framing on Same-Sex Marriage and Civil Unions" expanded="false"}}
2059 2059  **Source:** *Politics & Policy*
2060 2060  **Date of Publication:** *2007*
2061 2061  **Author(s):** *Tyler Johnson*
2062 2062  **Title:** *"Equality, Morality, and the Impact of Media Framing: Explaining Opposition to Same-Sex Marriage and Civil Unions"*
2063 2063  **DOI:** [10.1111/j.1747-1346.2007.00092.x](https://doi.org/10.1111/j.1747-1346.2007.00092.x)
2064 -**Subject Matter:** *LGBTQ+ Rights, Public Opinion, Media Influence* 
2125 +**Subject Matter:** *LGBTQ+ Rights, Public Opinion, Media Influence*
2065 2065  
2066 -----
2127 +---
2067 2067  
2068 -## **Key Statistics**##
2069 -
2129 +## **Key Statistics**
2070 2070  1. **General Observations:**
2071 2071   - Examines **media coverage of same-sex marriage and civil unions from 2004 to 2011**.
2072 2072   - Analyzes how **media framing influences public opinion trends** on LGBTQ+ rights.
... ... @@ -2079,10 +2079,9 @@
2079 2079   - When **equality framing surpasses morality framing**, public opposition declines.
2080 2080   - Media framing **directly affects public attitudes** over time, shaping policy debates.
2081 2081  
2082 -----
2142 +---
2083 2083  
2084 -## **Findings**##
2085 -
2144 +## **Findings**
2086 2086  1. **Primary Observations:**
2087 2087   - **Media framing plays a critical role in shaping attitudes** toward LGBTQ+ rights.
2088 2088   - **Equality-focused narratives** lead to greater public support for same-sex marriage.
... ... @@ -2095,10 +2095,9 @@
2095 2095   - **Periods of increased equality framing** saw measurable **declines in opposition to LGBTQ+ rights**.
2096 2096   - **Major political events (elections, Supreme Court cases) influenced framing trends**.
2097 2097  
2098 -----
2157 +---
2099 2099  
2100 -## **Critique and Observations**##
2101 -
2159 +## **Critique and Observations**
2102 2102  1. **Strengths of the Study:**
2103 2103   - **Longitudinal dataset spanning multiple election cycles**.
2104 2104   - Provides **quantitative analysis of how media framing shifts public opinion**.
... ... @@ -2111,113 +2111,31 @@
2111 2111   - Expand the study to **global perspectives on LGBTQ+ rights and media influence**.
2112 2112   - Investigate how **different media platforms (TV vs. digital media) impact opinion shifts**.
2113 2113  
2114 -----
2172 +---
2115 2115  
2116 2116  ## **Relevance to Subproject**
2117 2117  - Explores **how media narratives shape policy support and public sentiment**.
2118 2118  - Highlights **the strategic importance of framing in LGBTQ+ advocacy**.
2119 -- Reinforces the need for **media literacy in understanding policy debates**.##
2177 +- Reinforces the need for **media literacy in understanding policy debates**.
2120 2120  
2121 -----
2179 +---
2122 2122  
2123 -## **Suggestions for Further Exploration**##
2124 -
2181 +## **Suggestions for Further Exploration**
2125 2125  1. Examine how **social media affects framing of LGBTQ+ issues**.
2126 2126  2. Study **differences in framing across political media outlets**.
2127 2127  3. Investigate **public opinion shifts in states that legalized same-sex marriage earlier**.
2128 2128  
2129 -----
2186 +---
2130 2130  
2131 2131  ## **Summary of Research Study**
2132 -This study examines **how media framing influences public attitudes on same-sex marriage and civil unions**, analyzing **news coverage from 2004 to 2011**. It finds that **equality-based narratives reduce opposition, while morality-based narratives increase it**. The research highlights **how media coverage plays a crucial role in shaping policy debates and public sentiment**.##
2189 +This study examines **how media framing influences public attitudes on same-sex marriage and civil unions**, analyzing **news coverage from 2004 to 2011**. It finds that **equality-based narratives reduce opposition, while morality-based narratives increase it**. The research highlights **how media coverage plays a crucial role in shaping policy debates and public sentiment**.
2133 2133  
2134 -----
2191 +---
2135 2135  
2136 2136  ## **📄 Download Full Study**
2137 -[[Download Full Study>>attach:10.1111_j.1747-1346.2007.00092.x_abstract.pdf]]##
2194 +[[Download Full Study>>attach:10.1111_j.1747-1346.2007.00092.x_abstract.pdf]]
2195 +
2138 2138  {{/expand}}
2139 2139  
2198 +{{html}}<hr style="border: 3px solid red;">{{/html}}
2140 2140  
2141 -== Study: The Effects of Digital Media on Political Persuasion ==
2142 -
2143 -{{expand expanded="false" title="Study: The Effects of Digital Media on Political Persuasion"}}
2144 -**Source:** *Journal of Communication*
2145 -**Date of Publication:** *2019*
2146 -**Author(s):** *Natalie Stroud, Matthew Barnidge, Shannon McGregor*
2147 -**Title:** *"The Effects of Digital Media on Political Persuasion: Evidence from Experimental Studies"*
2148 -**DOI:** [10.1093/joc/jqx021](https://doi.org/10.1093/joc/jqx021)
2149 -**Subject Matter:** *Media Influence, Political Communication, Persuasion* 
2150 -
2151 -----
2152 -
2153 -## **Key Statistics**##
2154 -
2155 -1. **General Observations:**
2156 - - Conducted **12 experimental studies** on **digital media's impact on political beliefs**.
2157 - - **58% of participants** showed shifts in political opinion based on online content.
2158 -
2159 -2. **Subgroup Analysis:**
2160 - - **Video-based content was 2x more persuasive** than text-based content.
2161 - - Participants **under age 35 were more susceptible to political messaging shifts**.
2162 -
2163 -3. **Other Significant Data Points:**
2164 - - **Interactive media (comment sections, polls) increased political engagement**.
2165 - - **Exposure to counterarguments reduced partisan bias** by **14% on average**.
2166 -
2167 -----
2168 -
2169 -## **Findings**##
2170 -
2171 -1. **Primary Observations:**
2172 - - **Digital media significantly influences political opinions**, with younger audiences being the most impacted.
2173 - - **Multimedia content is more persuasive** than traditional text-based arguments.
2174 -
2175 -2. **Subgroup Trends:**
2176 - - **Social media platforms had stronger persuasive effects** than news websites.
2177 - - Participants who engaged in **online discussions retained more political knowledge**.
2178 -
2179 -3. **Specific Case Analysis:**
2180 - - **Highly partisan users became more entrenched in their views**, even when exposed to opposing content.
2181 - - **Neutral or apolitical users were more likely to shift opinions**.
2182 -
2183 -----
2184 -
2185 -## **Critique and Observations**##
2186 -
2187 -1. **Strengths of the Study:**
2188 - - **Large-scale experimental design** allows for controlled comparisons.
2189 - - Covers **multiple digital platforms**, ensuring robust findings.
2190 -
2191 -2. **Limitations of the Study:**
2192 - - Limited to **short-term persuasion effects**, without long-term follow-up.
2193 - - Does not explore **the role of misinformation in political persuasion**.
2194 -
2195 -3. **Suggestions for Improvement:**
2196 - - Future studies should track **long-term opinion changes** beyond immediate reactions.
2197 - - Investigate **the role of digital media literacy in resisting persuasion**.
2198 -
2199 -----
2200 -
2201 -## **Relevance to Subproject**
2202 -- Provides insights into **how digital media shapes political discourse**.
2203 -- Highlights **which platforms and content types are most influential**.
2204 -- Supports **research on misinformation and online political engagement**.##
2205 -
2206 -----
2207 -
2208 -## **Suggestions for Further Exploration**##
2209 -
2210 -1. Study how **fact-checking influences digital persuasion effects**.
2211 -2. Investigate the **role of political influencers in shaping opinions**.
2212 -3. Explore **long-term effects of social media exposure on political beliefs**.
2213 -
2214 -----
2215 -
2216 -## **Summary of Research Study**
2217 -This study analyzes **how digital media influences political persuasion**, using **12 experimental studies**. The findings show that **video and interactive content are the most persuasive**, while **younger users are more susceptible to political messaging shifts**. The research emphasizes the **power of digital platforms in shaping public opinion and engagement**.##
2218 -
2219 -----
2220 -
2221 -## **📄 Download Full Study**
2222 -[[Download Full Study>>attach:10.1093_joc_jqx021.pdf]]##
2223 -{{/expand}}
Cultural Voyeurism A New Framework for Understanding Race, Ethnicity, and Mediated Intergroup Intera.pdf
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