全基因组关联研究
特质
多效性
遗传关联
生物
数量性状位点
生命银行
计算生物学
遗传学
基因
进化生物学
单核苷酸多态性
表型
计算机科学
基因型
程序设计语言
作者
Lan Luo,Judong Shen,Hong Zhang,Aparna Chhibber,Devan V. Mehrotra,Zheng-Zheng Tang
标识
DOI:10.1038/s41467-020-16591-0
摘要
Abstract Integrating association evidence across multiple traits can improve the power of gene discovery and reveal pleiotropy. Most multi-trait analysis methods focus on individual common variants in genome-wide association studies. Here, we introduce multi-trait analysis of rare-variant associations (MTAR), a framework for joint analysis of association summary statistics between multiple rare variants and different traits. MTAR achieves substantial power gain by leveraging the genome-wide genetic correlation measure to inform the degree of gene-level effect heterogeneity across traits. We apply MTAR to rare-variant summary statistics for three lipid traits in the Global Lipids Genetics Consortium. 99 genome-wide significant genes were identified in the single-trait-based tests, and MTAR increases this to 139. Among the 11 novel lipid-associated genes discovered by MTAR, 7 are replicated in an independent UK Biobank GWAS analysis. Our study demonstrates that MTAR is substantially more powerful than single-trait-based tests and highlights the value of MTAR for novel gene discovery.
科研通智能强力驱动
Strongly Powered by AbleSci AI