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Activity Number: 415 - Recent advancements in the analysis of large-scale GWAS
Type: Contributed
Date/Time: Thursday, August 12, 2021 : 2:00 PM to 3:50 PM
Sponsor: Section on Statistics in Genomics and Genetics
Abstract #317951
Title: Bayestrat: Population Stratification Correction Using Bayesian Shrinkage Priors for Genetic Association Studies
Author(s): Zilu Liu* and Asuman Seda Turkmen and Shili Lin
Companies: The Ohio State University and The Ohio State University and The Ohio State University
Keywords: genetic association study; population stratification; spurious association; Bayesian shrinkage priors; confounding
Abstract:

In genetic association studies with common diseases, population stratification is a major source of confounding. Principal component regression (PCR) and linear mixed model (LMM) are two commonly used approaches to account for population stratification. Previous studies have shown that LMM can be interpreted as including all principal components (PCs) as random-effect covariates. However, including all PCs in LMM may inflate type I error in some scenarios due to redundancy, while including only a few pre-selected PCs in PCR may fail to fully capture the genetic diversity. Here, we propose a statistical method under the Bayesian framework, Bayestrat, that utilizes appropriate shrinkage priors to shrink the effects of non- or minimally confounded PCs and improve the identification of highly confounded ones. Simulation results show that Bayestrat consistently achieves lower type I error rates yet higher power, especially when the number of PCs included in the model is large. We also apply our method to two real datasets, the Dallas Heart Studies (DHS) and the Multi-Ethnic Study of Atherosclerosis (MESA), and demonstrate the superiority of Bayestrat over commonly used methods.


Authors who are presenting talks have a * after their name.

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