Statistical Methods in Genome-Wide Association Studies

Posted: 31 Jul 2020

See all articles by Ning Sun

Ning Sun

Yale University - Department of Biostatistics

Hongyu Zhao

Yale School of Public Health - Department of Biostatistics

Date Written: July 1, 2020

Abstract

Since the initial success of genome-wide association studies (GWAS) in 2005, tens of thousands of genetic variants have been identified for hundreds of human diseases and traits. In a GWAS, genotype information at up to millions of genetic markers is collected from up to hundreds of thousands of individuals, together with their phenotype information. Several scientific goals can be accomplished through the analysis of GWAS data, including the identification of variants, genes, and pathways associated with diseases and traits of interest; the inference of the genetic architecture of these traits; and the development of genetic risk prediction models. In this review, we provide an overview of the statistical challenges in achieving these goals and recent progress in statistical methodology to address these challenges.

Suggested Citation

Sun, Ning and Zhao, Hongyu, Statistical Methods in Genome-Wide Association Studies (July 1, 2020). Annual Review of Biomedical Data Science, Vol. 3, pp. 265-288, 2020, Available at SSRN: https://ssrn.com/abstract=3658968 or http://dx.doi.org/10.1146/annurev-biodatasci-030320-041026

Ning Sun

Yale University - Department of Biostatistics ( email )

New Haven, CT
United States

Hongyu Zhao (Contact Author)

Yale School of Public Health - Department of Biostatistics ( email )

New Haven, CT
United States

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