Quality control and quality assurance in genotypic data for genome‐wide association studies

Cathy C. Laurie(University of Washington), Kimberly F. Doheny(Johns Hopkins University), Daniel B. Mirel(Broad Institute), Elizabeth Pugh(Johns Hopkins University), Laura J. Bierut(Washington University in St. Louis), Tushar Bhangale(University of Washington), Frederick J. Boehm(University of Washington), Neil E. Caporaso(National Institutes of Health), Marilyn C. Cornelis(Harvard University Press), Howard J. Edenberg(Indiana University School of Medicine), Stacy Gabriel(Broad Institute), Emily Harris(National Institutes of Health), Frank B. Hu(Harvard University Press), Kevin B. Jacobs(National Institutes of Health), Peter Kraft(Harvard University Press), Maria Teresa Landi(National Institutes of Health), Thomas Lumley(University of Washington), Teri A. Manolio(National Institutes of Health), Caitlin McHugh(University of Washington), Ian Painter(University of Washington), Justin Paschall(National Institutes of Health), John P. Rice(Washington University in St. Louis), Kenneth Rice(University of Washington), Xiuwen Zheng(University of Washington), Bruce S. Weir(University of Washington), for the GENEVA Investigators
Genetic Epidemiology
August 17, 2010
Cited by 497Open Access
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Abstract

Genome-wide scans of nucleotide variation in human subjects are providing an increasing number of replicated associations with complex disease traits. Most of the variants detected have small effects and, collectively, they account for a small fraction of the total genetic variance. Very large sample sizes are required to identify and validate findings. In this situation, even small sources of systematic or random error can cause spurious results or obscure real effects. The need for careful attention to data quality has been appreciated for some time in this field, and a number of strategies for quality control and quality assurance (QC/QA) have been developed. Here we extend these methods and describe a system of QC/QA for genotypic data in genome-wide association studies (GWAS). This system includes some new approaches that (1) combine analysis of allelic probe intensities and called genotypes to distinguish gender misidentification from sex chromosome aberrations, (2) detect autosomal chromosome aberrations that may affect genotype calling accuracy, (3) infer DNA sample quality from relatedness and allelic intensities, (4) use duplicate concordance to infer SNP quality, (5) detect genotyping artifacts from dependence of Hardy-Weinberg equilibrium test P-values on allelic frequency, and (6) demonstrate sensitivity of principal components analysis to SNP selection. The methods are illustrated with examples from the "Gene Environment Association Studies" (GENEVA) program. The results suggest several recommendations for QC/QA in the design and execution of GWAS.


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