AIMS: The study of rare variants, which can potentially explain a great proportion of heritability, has emerged as an important topic in human gene mapping of complex diseases. Although several statistical methods have been developed to increase the power to detect disease-related rare variants, none of these methods address an important issue that often arises in genetic studies: false positives due to population stratification. Using simulations, we investigated the impact of population stratification on false-positive rates of rare-variant association tests. METHODS: We simulated a series of case-control studies assuming various sample sizes and levels of population structure. Using such data, we examined the impact of population stratification on rare-variant collapsing and burden tests of rare variation. We further evaluated the ability of 2 existing methods (principal component analysis and genomic control) to correct for stratification in such rare-variant studies. RESULTS: We found that population stratification can have a significant influence on studies of rare variants especially when the sample size is large and the population is severely stratified. Our results showed that principal component analysis performed quite well in most situations, while genomic control often yielded conservative results. CONCLUSIONS: Our results imply that researchers need to carefully match cases and controls on ancestry in order to avoid false positives caused by population structure in studies of rare variants, particularly if genome-wide data are not available.
AIMS: The study of rare variants, which can potentially explain a great proportion of heritability, has emerged as an important topic in human gene mapping of complex diseases. Although several statistical methods have been developed to increase the power to detect disease-related rare variants, none of these methods address an important issue that often arises in genetic studies: false positives due to population stratification. Using simulations, we investigated the impact of population stratification on false-positive rates of rare-variant association tests. METHODS: We simulated a series of case-control studies assuming various sample sizes and levels of population structure. Using such data, we examined the impact of population stratification on rare-variant collapsing and burden tests of rare variation. We further evaluated the ability of 2 existing methods (principal component analysis and genomic control) to correct for stratification in such rare-variant studies. RESULTS: We found that population stratification can have a significant influence on studies of rare variants especially when the sample size is large and the population is severely stratified. Our results showed that principal component analysis performed quite well in most situations, while genomic control often yielded conservative results. CONCLUSIONS: Our results imply that researchers need to carefully match cases and controls on ancestry in order to avoid false positives caused by population structure in studies of rare variants, particularly if genome-wide data are not available.
Authors: Stephen F Schaffner; Catherine Foo; Stacey Gabriel; David Reich; Mark J Daly; David Altshuler Journal: Genome Res Date: 2005-11 Impact factor: 9.043
Authors: Alkes L Price; Nick J Patterson; Robert M Plenge; Michael E Weinblatt; Nancy A Shadick; David Reich Journal: Nat Genet Date: 2006-07-23 Impact factor: 38.330
Authors: S Taylor Fischer; Yunxuan Jiang; K Alaine Broadaway; Karen N Conneely; Michael P Epstein Journal: Genet Epidemiol Date: 2018-02-20 Impact factor: 2.135
Authors: Paul Wolujewicz; John W Steele; Julia A Kaltschmidt; Richard H Finnell; Margaret Elizabeth Ross Journal: Genesis Date: 2021-10-29 Impact factor: 2.487
Authors: Yun Ju Sung; Jacob Basson; Nuo Cheng; Khanh-Dung H Nguyen; Priyanka Nandakumar; Steven C Hunt; Donna K Arnett; Victor G Dávila-Román; Dabeeru C Rao; Aravinda Chakravarti Journal: Hum Hered Date: 2015 Impact factor: 0.444
Authors: Danira Toral-Rios; Diana Franco-Bocanegra; Oscar Rosas-Carrasco; Francisco Mena-Barranco; Rosa Carvajal-García; Marco Antonio Meraz-Ríos; Victoria Campos-Peña Journal: Front Cell Neurosci Date: 2015-05-18 Impact factor: 5.505