An Association Mapping Framework To Account for Potential Sex Difference in Genetic Architectures
Author(s) -
Eun Yong Kang,
Cue Hyunkyu Lee,
Nicholas A. Furlotte,
Jong Wha J. Joo,
Emrah Kostem,
Noah Zaitlen,
Eleazar Eskin,
Buhm Han
Publication year - 2018
Publication title -
genetics
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 2.792
H-Index - 246
eISSN - 1943-2631
pISSN - 0016-6731
DOI - 10.1534/genetics.117.300501
Subject(s) - genetic architecture , biology , genetic association , genome wide association study , association mapping , association (psychology) , covariate , trait , quantitative trait locus , statistical power , genetics , evolutionary biology , computational biology , genotype , single nucleotide polymorphism , statistics , machine learning , gene , computer science , mathematics , programming language , philosophy , epistemology
Recent genome-wide association studies suggest that the human genetic architecture of complex traits may vary between males and females; however, traditional approaches for association mapping cannot fully account for these between-sex differences... Over the past few years, genome-wide association studies have identified many trait-associated loci that have different effects on females and males, which increased attention to the genetic architecture differences between the sexes. The between-sex differences in genetic architectures can cause a variety of phenomena such as differences in the effect sizes at trait-associated loci, differences in the magnitudes of polygenic background effects, and differences in the phenotypic variances. However, current association testing approaches for dealing with sex, such as including sex as a covariate, cannot fully account for these phenomena and can be suboptimal in statistical power. We present a novel association mapping framework, MetaSex, that can comprehensively account for the genetic architecture differences between the sexes. Through simulations and applications to real data, we show that our framework has superior performance than previous approaches in association mapping.
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