全基因组关联研究
成对比较
遗传关联
主成分分析
生物
虚假关系
差异(会计)
统计
计算生物学
样本量测定
多元统计
数据挖掘
遗传学
计算机科学
数学
单核苷酸多态性
业务
基因型
会计
基因
作者
Hyun Min Kang,Jae Hoon Sul,Susan K. Service,Noah Zaitlen,Sit-yee Kong,Nelson B Freimer,Chiara Sabatti,Eleazar Eskin
出处
期刊:Nature Genetics
[Nature Portfolio]
日期:2010-03-07
卷期号:42 (4): 348-354
被引量:3044
摘要
Although genome-wide association studies (GWASs) have identified numerous loci associated with complex traits, imprecise modeling of the genetic relatedness within study samples may cause substantial inflation of test statistics and possibly spurious associations. Variance component approaches, such as efficient mixed-model association (EMMA), can correct for a wide range of sample structures by explicitly accounting for pairwise relatedness between individuals, using high-density markers to model the phenotype distribution; but such approaches are computationally impractical. We report here a variance component approach implemented in publicly available software, EMMA eXpedited (EMMAX), that reduces the computational time for analyzing large GWAS data sets from years to hours. We apply this method to two human GWAS data sets, performing association analysis for ten quantitative traits from the Northern Finland Birth Cohort and seven common diseases from the Wellcome Trust Case Control Consortium. We find that EMMAX outperforms both principal component analysis and genomic control in correcting for sample structure.
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