分类交配
特质
遗传建筑学
相关性
生物
遗传相关
遗传相似性
多效性
进化生物学
遗传学
交配
遗传变异
数量性状位点
表型
基因
遗传多样性
人口
计算机科学
人口学
数学
几何学
社会学
程序设计语言
作者
Richard Border,Georgios Athanasiadis,Alfonso Buil,Andrew J. Schork,Na Cai,Alexander I. Young,Thomas Werge,Jonathan Flint,Kenneth S. Kendler,Sriram Sankararaman,Andy Dahl,Noah Zaitlen
标识
DOI:10.1101/2022.03.21.485215
摘要
The observation of genetic correlations between disparate traits has been interpreted as evidence of widespread pleiotropy, altered theories of human genetic architecture, and spurred considerable research activity across the natural and social sciences. Here, we introduce cross-trait assortative mating (xAM) as an alternative explanation for observed genetic correlations. We observe that xAM is common across a broad array of phenotypes and that phenotypic cross-mate correlation estimates are strongly associated with genetic correlation estimates ( R 2 = 76%). Then, we present theoretical and simulation-based results demonstrating that, under xAM, genetic correlation estimators yield significant estimates even for traits with entirely distinct genetic bases. We demonstrate that existing xAM plausibly accounts for substantial fractions of genetic correlation estimates in two large samples ( N = 827,960). For example, previously reported genetic correlation estimates between many pairs of psychiatric disorders are fully consistent with xAM alone. Finally, we provide evidence for a history of xAM at the genetic level using a novel approach based on cross-trait even/odd chromosome polygenic score correlations. Together, our results demonstrate that previous reports have likely overestimated the true genetic similarity between many phenotypes.
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