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Author(s):
Shijia Yan, Qiuying Sha, Shuanglin Zhang
Publish date:
22 June 2022
Journal:
Genes
PubMed ID:
35885903

Abstract

Recently, gene-based association studies have shown that integrating genome-wide association studies (GWAS) with expression quantitative trait locus (eQTL) data can boost statistical power and that the genetic liability of traits can be captured by polygenic risk scores (PRSs). In this paper, we propose a new gene-based statistical method that leverages gene-expression measurements and new PRSs to identify genes that are associated with phenotypes of interest. We used a generalized linear model to associate phenotypes with gene expression and PRSs and used a score-test statistic to test the association between phenotypes and genes. Our simulation studies show that the newly developed method has correct type I error rates and can boost statistical power compared with other methods that use either gene expression or PRS in association tests. A real data analysis figure based on UK Biobank data for asthma shows that the proposed method is applicable to GWAS.

Related projects

In this project, we will develop new statistical methods to find genes responsible for complex human diseases and apply these methods to Biobank data sets.

Institution:
Michigan Technological University, United States of America

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