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GEE‐Based SNP Set Association Test for Continuous and Discrete Traits in Family‐Based Association Studies
Authors:Xuefeng Wang  Seunggeun Lee  Xiaofeng Zhu  Susan Redline  Xihong Lin
Affiliation:1. Department of Biostatistics, Harvard School of Public Health, , Boston, Massachusetts, United States of America;2. Department of Epidemiology and Biostatistics, Case Western Reserve University, , Cleveland, Ohio, United States of America;3. Department of Medicine, Brigham and Women's Hospital and Beth Israel Deaconess Medical Center, Harvard Medical School, , Boston, Massachusetts, United States of America
Abstract:Family‐based genetic association studies of related individuals provide opportunities to detect genetic variants that complement studies of unrelated individuals. Most statistical methods for family association studies for common variants are single marker based, which test one SNP a time. In this paper, we consider testing the effect of an SNP set, e.g., SNPs in a gene, in family studies, for both continuous and discrete traits. Specifically, we propose a generalized estimating equations (GEEs) based kernel association test, a variance component based testing method, to test for the association between a phenotype and multiple variants in an SNP set jointly using family samples. The proposed approach allows for both continuous and discrete traits, where the correlation among family members is taken into account through the use of an empirical covariance estimator. We derive the theoretical distribution of the proposed statistic under the null and develop analytical methods to calculate the P‐values. We also propose an efficient resampling method for correcting for small sample size bias in family studies. The proposed method allows for easily incorporating covariates and SNP‐SNP interactions. Simulation studies show that the proposed method properly controls for type I error rates under both random and ascertained sampling schemes in family studies. We demonstrate through simulation studies that our approach has superior performance for association mapping compared to the single marker based minimum P‐value GEE test for an SNP‐set effect over a range of scenarios. We illustrate the application of the proposed method using data from the Cleveland Family GWAS Study.
Keywords:family‐based association  generalized estimation equations  kernel machine regression  marginal models  score test  variance component
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