虚假关系
生物
遗传关联
关联映射
人口
遗传学
计算生物学
数量性状位点
补语(音乐)
特质
I类和II类错误
联想(心理学)
统计
计算机科学
基因
数学
基因型
单核苷酸多态性
表型
心理学
心理治疗师
社会学
人口学
互补
程序设计语言
作者
Jianming Yu,Gaël Pressoir,William H. Briggs,I. Vroh Bi,Masanori Yamasaki,John Doebley,Michael D. McMullen,Brandon S. Gaut,Dahlia M. Nielsen,James B. Holland,Stephen Kresovich,Edward S. Buckler
出处
期刊:Nature Genetics
[Springer Nature]
日期:2005-12-25
卷期号:38 (2): 203-208
被引量:3694
摘要
As population structure can result in spurious associations, it has constrained the use of association studies in human and plant genetics. Association mapping, however, holds great promise if true signals of functional association can be separated from the vast number of false signals generated by population structure. We have developed a unified mixed-model approach to account for multiple levels of relatedness simultaneously as detected by random genetic markers. We applied this new approach to two samples: a family-based sample of 14 human families, for quantitative gene expression dissection, and a sample of 277 diverse maize inbred lines with complex familial relationships and population structure, for quantitative trait dissection. Our method demonstrates improved control of both type I and type II error rates over other methods. As this new method crosses the boundary between family-based and structured association samples, it provides a powerful complement to currently available methods for association mapping.
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