生命银行
全基因组关联研究
人口
生物
遗传学
计算生物学
遗传关联
进化生物学
单核苷酸多态性
基因
基因型
社会学
人口学
作者
Kai Yuan,Ryan J. Longchamps,Antonio F. Pardiñas,Mingrui Yu,Tzu‐Ting Chen,Shu‐Chin Lin,Yu Chen,Max Lam,Ruize Liu,Yan Xia,Zhenglin Guo,Wenzhao Shi,Chengguo Shen,Mark J. Daly,Benjamin M. Neale,Yen‐Chen Anne Feng,Kuang Lin,Chia‐Yen Chen,Michael O’Donovan,Tian Ge,Hailiang Huang
出处
期刊:Cold Spring Harbor Laboratory - medRxiv
日期:2023-01-09
被引量:18
标识
DOI:10.1101/2023.01.07.23284293
摘要
Abstract Genome-wide association studies (GWAS) of human complex traits or diseases often implicate genetic loci that span hundreds or thousands of genetic variants, many of which have similar statistical significance. While statistical fine-mapping in individuals of European ancestries has made important discoveries, cross-population fine-mapping has the potential to improve power and resolution by capitalizing on the genomic diversity across ancestries. Here we present SuSiEx, an accurate and computationally efficient method for cross-population fine-mapping, which builds on the single-population fine-mapping framework, Sum of Single Effects (SuSiE). SuSiEx integrates data from an arbitrary number of ancestries, explicitly models population-specific allele frequencies and LD patterns, accounts for multiple causal variants in a genomic region, and can be applied to GWAS summary statistics. We comprehensively evaluated SuSiEx using simulations, a range of quantitative traits measured in both UK Biobank and Taiwan Biobank, and schizophrenia GWAS across East Asian and European ancestries. In all evaluations, SuSiEx fine-mapped more association signals, produced smaller credible sets and higher posterior inclusion probability (PIP) for putative causal variants, and captured population-specific causal variants.
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