Two-stage association tests for genome-wide association studies based on family data with arbitrary family structure

被引:0
|
作者
Tao Feng
Shuanglin Zhang
Qiuying Sha
机构
[1] Michigan Technological University,Department of Mathematical Sciences
[2] Heilongjiang University,Department of Mathematics
来源
European Journal of Human Genetics | 2007年 / 15卷
关键词
two-stage design; genome-wide association study; family-based association test;
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中图分类号
学科分类号
摘要
Recently, Steen et al proposed a two-stage approach for genome-wide family-based association studies. In the first stage, a screening test is used to select markers, and in the second stage, a family-based association test is performed on a much smaller set of the selected markers. The two-stage method can be much more powerful than the traditional family-based association tests. In this article, we extend the approach so that it can incorporate parental information and can be applied to an arbitrary pedigree structure. We use simulation studies to evaluate the type I error rates and the power of the proposed methods. Our results show that the two-stage approach that incorporates founders' phenotypes has the correct type I error rates, and is much more powerful than the two-stage approach that uses children's phenotypes only. Also, by carefully choosing the number of markers retained in the first stage, the power of a two-stage approach can be much more than that of the corresponding one-stage approach.
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页码:1169 / 1175
页数:6
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