Effects of Sample Selection Bias on the Accuracy of Population Structure and Ancestry Inference

Author:

Shringarpure Suyash1,Xing Eric P12

Affiliation:

1. Department of Genetics, Stanford University, Stanford, California 94305

2. School of Computer Science, Carnegie Mellon University, Pittsburgh, Pennsylvania 15213

Abstract

Abstract Population stratification is an important task in genetic analyses. It provides information about the ancestry of individuals and can be an important confounder in genome-wide association studies. Public genotyping projects have made a large number of datasets available for study. However, practical constraints dictate that of a geographical/ethnic population, only a small number of individuals are genotyped. The resulting data are a sample from the entire population. If the distribution of sample sizes is not representative of the populations being sampled, the accuracy of population stratification analyses of the data could be affected. We attempt to understand the effect of biased sampling on the accuracy of population structure analysis and individual ancestry recovery. We examined two commonly used methods for analyses of such datasets, ADMIXTURE and EIGENSOFT, and found that the accuracy of recovery of population structure is affected to a large extent by the sample used for analysis and how representative it is of the underlying populations. Using simulated data and real genotype data from cattle, we show that sample selection bias can affect the results of population structure analyses. We develop a mathematical framework for sample selection bias in models for population structure and also proposed a correction for sample selection bias using auxiliary information about the sample. We demonstrate that such a correction is effective in practice using simulated and real data.

Publisher

Oxford University Press (OUP)

Subject

Genetics(clinical),Genetics,Molecular Biology

Reference32 articles.

1. Fast model-based estimation of ancestry in unrelated individuals.;Alexander;Genome Res.,2009

2. Fast and accurate inference of local ancestry in Latino populations.;Baran;Bioinformatics,2012

3. The Human Genome Diversity Project: past, present and future.;Cavalli-Sforza;Nat. Rev. Genet.,2005

4. Sample selection bias correction theory.;Cortes;Algorithmic Learning Theory,2008

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