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Large-scale SNP analysis reveals clustered and continuous patterns of human genetic variation

Understanding the distribution of human genetic variation is an important foundation for research into the genetics of common diseases. Some of the alleles that modify common disease risk are themselves likely to be common and, thus, amenable to identification using gene-association methods. A probl...

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Autores principales: Shriver, Mark D, Mei, Rui, Parra, Esteban J, Sonpar, Vibhor, Halder, Indrani, Tishkoff, Sarah A, Schurr, Theodore G, Zhadanov, Sergev I, Osipova, Ludmila P, Brutsaert, Tom D, Friedlaender, Jonathan, Jorde, Lynn B, Watkins, W Scott, Bamshad, Michael J, Gutierrez, Gerardo, Loi, Halina, Matsuzaki, Hajime, Kittles, Rick A, Argyropoulos, George, Fernandez, Jose R, Akey, Joshua M, Jones, Keith W
Formato: Online Artículo Texto
Lenguaje:English
Publicado: BioMed Central 2005
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3525270/
https://www.ncbi.nlm.nih.gov/pubmed/16004724
http://dx.doi.org/10.1186/1479-7364-2-2-81
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author Shriver, Mark D
Mei, Rui
Parra, Esteban J
Sonpar, Vibhor
Halder, Indrani
Tishkoff, Sarah A
Schurr, Theodore G
Zhadanov, Sergev I
Osipova, Ludmila P
Brutsaert, Tom D
Friedlaender, Jonathan
Jorde, Lynn B
Watkins, W Scott
Bamshad, Michael J
Gutierrez, Gerardo
Loi, Halina
Matsuzaki, Hajime
Kittles, Rick A
Argyropoulos, George
Fernandez, Jose R
Akey, Joshua M
Jones, Keith W
author_facet Shriver, Mark D
Mei, Rui
Parra, Esteban J
Sonpar, Vibhor
Halder, Indrani
Tishkoff, Sarah A
Schurr, Theodore G
Zhadanov, Sergev I
Osipova, Ludmila P
Brutsaert, Tom D
Friedlaender, Jonathan
Jorde, Lynn B
Watkins, W Scott
Bamshad, Michael J
Gutierrez, Gerardo
Loi, Halina
Matsuzaki, Hajime
Kittles, Rick A
Argyropoulos, George
Fernandez, Jose R
Akey, Joshua M
Jones, Keith W
author_sort Shriver, Mark D
collection PubMed
description Understanding the distribution of human genetic variation is an important foundation for research into the genetics of common diseases. Some of the alleles that modify common disease risk are themselves likely to be common and, thus, amenable to identification using gene-association methods. A problem with this approach is that the large sample sizes required for sufficient statistical power to detect alleles with moderate effect make gene-association studies susceptible to false-positive findings as the result of population stratification [1,2]. Such type I errors can be eliminated by using either family-based association tests or methods that sufficiently adjust for population stratification [3-5]. These methods require the availability of genetic markers that can detect and, thus, control for sources of genetic stratification among populations. In an effort to investigate population stratification and identify appropriate marker panels, we have analysed 11,555 single nucleotide polymorphisms in 203 individuals from 12 diverse human populations. Individuals in each population cluster to the exclusion of individuals from other populations using two clustering methods. Higher-order branching and clustering of the populations are consistent with the geographic origins of populations and with previously published genetic analyses. These data provide a valuable resource for the definition of marker panels to detect and control for population stratification in population-based gene identification studies. Using three US resident populations (European-American, African-American and Puerto Rican), we demonstrate how such studies can proceed, quantifying proportional ancestry levels and detecting significant admixture structure in each of these populations.
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spelling pubmed-35252702012-12-19 Large-scale SNP analysis reveals clustered and continuous patterns of human genetic variation Shriver, Mark D Mei, Rui Parra, Esteban J Sonpar, Vibhor Halder, Indrani Tishkoff, Sarah A Schurr, Theodore G Zhadanov, Sergev I Osipova, Ludmila P Brutsaert, Tom D Friedlaender, Jonathan Jorde, Lynn B Watkins, W Scott Bamshad, Michael J Gutierrez, Gerardo Loi, Halina Matsuzaki, Hajime Kittles, Rick A Argyropoulos, George Fernandez, Jose R Akey, Joshua M Jones, Keith W Hum Genomics Primary Research Understanding the distribution of human genetic variation is an important foundation for research into the genetics of common diseases. Some of the alleles that modify common disease risk are themselves likely to be common and, thus, amenable to identification using gene-association methods. A problem with this approach is that the large sample sizes required for sufficient statistical power to detect alleles with moderate effect make gene-association studies susceptible to false-positive findings as the result of population stratification [1,2]. Such type I errors can be eliminated by using either family-based association tests or methods that sufficiently adjust for population stratification [3-5]. These methods require the availability of genetic markers that can detect and, thus, control for sources of genetic stratification among populations. In an effort to investigate population stratification and identify appropriate marker panels, we have analysed 11,555 single nucleotide polymorphisms in 203 individuals from 12 diverse human populations. Individuals in each population cluster to the exclusion of individuals from other populations using two clustering methods. Higher-order branching and clustering of the populations are consistent with the geographic origins of populations and with previously published genetic analyses. These data provide a valuable resource for the definition of marker panels to detect and control for population stratification in population-based gene identification studies. Using three US resident populations (European-American, African-American and Puerto Rican), we demonstrate how such studies can proceed, quantifying proportional ancestry levels and detecting significant admixture structure in each of these populations. BioMed Central 2005-06-01 /pmc/articles/PMC3525270/ /pubmed/16004724 http://dx.doi.org/10.1186/1479-7364-2-2-81 Text en Copyright ©2005 Henry Stewart Publications
spellingShingle Primary Research
Shriver, Mark D
Mei, Rui
Parra, Esteban J
Sonpar, Vibhor
Halder, Indrani
Tishkoff, Sarah A
Schurr, Theodore G
Zhadanov, Sergev I
Osipova, Ludmila P
Brutsaert, Tom D
Friedlaender, Jonathan
Jorde, Lynn B
Watkins, W Scott
Bamshad, Michael J
Gutierrez, Gerardo
Loi, Halina
Matsuzaki, Hajime
Kittles, Rick A
Argyropoulos, George
Fernandez, Jose R
Akey, Joshua M
Jones, Keith W
Large-scale SNP analysis reveals clustered and continuous patterns of human genetic variation
title Large-scale SNP analysis reveals clustered and continuous patterns of human genetic variation
title_full Large-scale SNP analysis reveals clustered and continuous patterns of human genetic variation
title_fullStr Large-scale SNP analysis reveals clustered and continuous patterns of human genetic variation
title_full_unstemmed Large-scale SNP analysis reveals clustered and continuous patterns of human genetic variation
title_short Large-scale SNP analysis reveals clustered and continuous patterns of human genetic variation
title_sort large-scale snp analysis reveals clustered and continuous patterns of human genetic variation
topic Primary Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3525270/
https://www.ncbi.nlm.nih.gov/pubmed/16004724
http://dx.doi.org/10.1186/1479-7364-2-2-81
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