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November 2009 Population Structure and Cryptic Relatedness in Genetic Association Studies
William Astle, David J. Balding
Statist. Sci. 24(4): 451-471 (November 2009). DOI: 10.1214/09-STS307

Abstract

We review the problem of confounding in genetic association studies, which arises principally because of population structure and cryptic relatedness. Many treatments of the problem consider only a simple “island” model of population structure. We take a broader approach, which views population structure and cryptic relatedness as different aspects of a single confounder: the unobserved pedigree defining the (often distant) relationships among the study subjects. Kinship is therefore a central concept, and we review methods of defining and estimating kinship coefficients, both pedigree-based and marker-based. In this unified framework we review solutions to the problem of population structure, including family-based study designs, genomic control, structured association, regression control, principal components adjustment and linear mixed models. The last solution makes the most explicit use of the kinships among the study subjects, and has an established role in the analysis of animal and plant breeding studies. Recent computational developments mean that analyses of human genetic association data are beginning to benefit from its powerful tests for association, which protect against population structure and cryptic kinship, as well as intermediate levels of confounding by the pedigree.

Citation

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William Astle. David J. Balding. "Population Structure and Cryptic Relatedness in Genetic Association Studies." Statist. Sci. 24 (4) 451 - 471, November 2009. https://doi.org/10.1214/09-STS307

Information

Published: November 2009
First available in Project Euclid: 20 April 2010

zbMATH: 1329.62419
MathSciNet: MR2779337
Digital Object Identifier: 10.1214/09-STS307

Keywords: ascertainment , complex disease genetics , cryptic relatedness , genomic control , kinship , mixed model

Rights: Copyright © 2009 Institute of Mathematical Statistics

Vol.24 • No. 4 • November 2009
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