Authors
Cathy C Laurie, Kimberly F Doheny, Daniel B Mirel, Elizabeth W Pugh, Laura J Bierut, Tushar Bhangale, Frederick Boehm, Neil E Caporaso, Marilyn C Cornelis, Howard J Edenberg, Stacy B Gabriel, Emily L Harris, Frank B Hu, Kevin B Jacobs, Peter Kraft, Maria Teresa Landi, Thomas Lumley, Teri A Manolio, Caitlin McHugh, Ian Painter, Justin Paschall, John P Rice, Kenneth M Rice, Xiuwen Zheng, Bruce S Weir, GENEVA Investigators
Publication date
2010/9
Journal
Genetic epidemiology
Volume
34
Issue
6
Pages
591-602
Publisher
Wiley Subscription Services, Inc., A Wiley Company
Description
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 …
Total citations
20102011201220132014201520162017201820192020202120222023202432133304242575454404142403829
Scholar articles