A novel statistical method for rare-variant association studies in general pedigrees

被引:0
|
作者
Huanhuan Zhu
Zhenchuan Wang
Xuexia Wang
Qiuying Sha
机构
[1] Michigan Technological University,Department of Mathematical Sciences
[2] University of North Texas,Department of Mathematics
关键词
Rare Variant; Genetic Analysis Workshop; General Pedigree; Sequence Kernel Association Test; GAW19 Data;
D O I
10.1186/s12919-016-0029-6
中图分类号
学科分类号
摘要
Both population-based and family-based designs are commonly used in genetic association studies to identify rare variants that underlie complex diseases. For any type of study design, the statistical power will be improved if rare variants can be enriched in the samples. Family-based designs, with ascertainment based on phenotype, may enrich the sample for causal rare variants and thus can be more powerful than population-based designs. Therefore, it is important to develop family-based statistical methods that can account for ascertainment. In this paper, we develop a novel statistical method for rare-variant association studies in general pedigrees for quantitative traits. This method uses a retrospective view that treats the traits as fixed and the genotypes as random, which allows us to account for complex and undefined ascertainment of families. We then apply the newly developed method to the Genetic Analysis Workshop 19 data set and compare the power of the new method with two other methods for general pedigrees. The results show that the newly proposed method increases power in most of the cases we consider, more than the other two methods.
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