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Whole-genome sequencing to understand the genetic architecture of common gene expression and biomarker phenotypes

Initial results from sequencing studies suggest that there are relatively few low-frequency (<5%) variants associated with large effects on common phenotypes. We performed low-pass whole-genome sequencing in 680 individuals from the InCHIANTI study to test two primary hypotheses: (i) that sequenc...

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Autores principales: Wood, Andrew R., Tuke, Marcus A., Nalls, Mike, Hernandez, Dena, Gibbs, J. Raphael, Lin, Haoxiang, Xu, Christopher S., Li, Qibin, Shen, Juan, Jun, Goo, Almeida, Marcio, Tanaka, Toshiko, Perry, John R. B., Gaulton, Kyle, Rivas, Manny, Pearson, Richard, Curran, Joanne E., Johnson, Matthew P., Göring, Harald H. H., Duggirala, Ravindranath, Blangero, John, Mccarthy, Mark I., Bandinelli, Stefania, Murray, Anna, Weedon, Michael N., Singleton, Andrew, Melzer, David, Ferrucci, Luigi, Frayling, Timothy M
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Oxford University Press 2015
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4321449/
https://www.ncbi.nlm.nih.gov/pubmed/25378555
http://dx.doi.org/10.1093/hmg/ddu560
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author Wood, Andrew R.
Tuke, Marcus A.
Nalls, Mike
Hernandez, Dena
Gibbs, J. Raphael
Lin, Haoxiang
Xu, Christopher S.
Li, Qibin
Shen, Juan
Jun, Goo
Almeida, Marcio
Tanaka, Toshiko
Perry, John R. B.
Gaulton, Kyle
Rivas, Manny
Pearson, Richard
Curran, Joanne E.
Johnson, Matthew P.
Göring, Harald H. H.
Duggirala, Ravindranath
Blangero, John
Mccarthy, Mark I.
Bandinelli, Stefania
Murray, Anna
Weedon, Michael N.
Singleton, Andrew
Melzer, David
Ferrucci, Luigi
Frayling, Timothy M
author_facet Wood, Andrew R.
Tuke, Marcus A.
Nalls, Mike
Hernandez, Dena
Gibbs, J. Raphael
Lin, Haoxiang
Xu, Christopher S.
Li, Qibin
Shen, Juan
Jun, Goo
Almeida, Marcio
Tanaka, Toshiko
Perry, John R. B.
Gaulton, Kyle
Rivas, Manny
Pearson, Richard
Curran, Joanne E.
Johnson, Matthew P.
Göring, Harald H. H.
Duggirala, Ravindranath
Blangero, John
Mccarthy, Mark I.
Bandinelli, Stefania
Murray, Anna
Weedon, Michael N.
Singleton, Andrew
Melzer, David
Ferrucci, Luigi
Frayling, Timothy M
author_sort Wood, Andrew R.
collection PubMed
description Initial results from sequencing studies suggest that there are relatively few low-frequency (<5%) variants associated with large effects on common phenotypes. We performed low-pass whole-genome sequencing in 680 individuals from the InCHIANTI study to test two primary hypotheses: (i) that sequencing would detect single low-frequency–large effect variants that explained similar amounts of phenotypic variance as single common variants, and (ii) that some common variant associations could be explained by low-frequency variants. We tested two sets of disease-related common phenotypes for which we had statistical power to detect large numbers of common variant–common phenotype associations—11 132 cis-gene expression traits in 450 individuals and 93 circulating biomarkers in all 680 individuals. From a total of 11 657 229 high-quality variants of which 6 129 221 and 5 528 008 were common and low frequency (<5%), respectively, low frequency–large effect associations comprised 7% of detectable cis-gene expression traits [89 of 1314 cis-eQTLs at P < 1 × 10(−06) (false discovery rate ∼5%)] and one of eight biomarker associations at P < 8 × 10(−10). Very few (30 of 1232; 2%) common variant associations were fully explained by low-frequency variants. Our data show that whole-genome sequencing can identify low-frequency variants undetected by genotyping based approaches when sample sizes are sufficiently large to detect substantial numbers of common variant associations, and that common variant associations are rarely explained by single low-frequency variants of large effect.
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spelling pubmed-43214492015-02-23 Whole-genome sequencing to understand the genetic architecture of common gene expression and biomarker phenotypes Wood, Andrew R. Tuke, Marcus A. Nalls, Mike Hernandez, Dena Gibbs, J. Raphael Lin, Haoxiang Xu, Christopher S. Li, Qibin Shen, Juan Jun, Goo Almeida, Marcio Tanaka, Toshiko Perry, John R. B. Gaulton, Kyle Rivas, Manny Pearson, Richard Curran, Joanne E. Johnson, Matthew P. Göring, Harald H. H. Duggirala, Ravindranath Blangero, John Mccarthy, Mark I. Bandinelli, Stefania Murray, Anna Weedon, Michael N. Singleton, Andrew Melzer, David Ferrucci, Luigi Frayling, Timothy M Hum Mol Genet Association Studies Articles Initial results from sequencing studies suggest that there are relatively few low-frequency (<5%) variants associated with large effects on common phenotypes. We performed low-pass whole-genome sequencing in 680 individuals from the InCHIANTI study to test two primary hypotheses: (i) that sequencing would detect single low-frequency–large effect variants that explained similar amounts of phenotypic variance as single common variants, and (ii) that some common variant associations could be explained by low-frequency variants. We tested two sets of disease-related common phenotypes for which we had statistical power to detect large numbers of common variant–common phenotype associations—11 132 cis-gene expression traits in 450 individuals and 93 circulating biomarkers in all 680 individuals. From a total of 11 657 229 high-quality variants of which 6 129 221 and 5 528 008 were common and low frequency (<5%), respectively, low frequency–large effect associations comprised 7% of detectable cis-gene expression traits [89 of 1314 cis-eQTLs at P < 1 × 10(−06) (false discovery rate ∼5%)] and one of eight biomarker associations at P < 8 × 10(−10). Very few (30 of 1232; 2%) common variant associations were fully explained by low-frequency variants. Our data show that whole-genome sequencing can identify low-frequency variants undetected by genotyping based approaches when sample sizes are sufficiently large to detect substantial numbers of common variant associations, and that common variant associations are rarely explained by single low-frequency variants of large effect. Oxford University Press 2015-03-01 2014-11-06 /pmc/articles/PMC4321449/ /pubmed/25378555 http://dx.doi.org/10.1093/hmg/ddu560 Text en © The Author 2014. Published by Oxford University Press. http://creativecommons.org/licenses/by/4.0/ This is an Open Access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted reuse, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Association Studies Articles
Wood, Andrew R.
Tuke, Marcus A.
Nalls, Mike
Hernandez, Dena
Gibbs, J. Raphael
Lin, Haoxiang
Xu, Christopher S.
Li, Qibin
Shen, Juan
Jun, Goo
Almeida, Marcio
Tanaka, Toshiko
Perry, John R. B.
Gaulton, Kyle
Rivas, Manny
Pearson, Richard
Curran, Joanne E.
Johnson, Matthew P.
Göring, Harald H. H.
Duggirala, Ravindranath
Blangero, John
Mccarthy, Mark I.
Bandinelli, Stefania
Murray, Anna
Weedon, Michael N.
Singleton, Andrew
Melzer, David
Ferrucci, Luigi
Frayling, Timothy M
Whole-genome sequencing to understand the genetic architecture of common gene expression and biomarker phenotypes
title Whole-genome sequencing to understand the genetic architecture of common gene expression and biomarker phenotypes
title_full Whole-genome sequencing to understand the genetic architecture of common gene expression and biomarker phenotypes
title_fullStr Whole-genome sequencing to understand the genetic architecture of common gene expression and biomarker phenotypes
title_full_unstemmed Whole-genome sequencing to understand the genetic architecture of common gene expression and biomarker phenotypes
title_short Whole-genome sequencing to understand the genetic architecture of common gene expression and biomarker phenotypes
title_sort whole-genome sequencing to understand the genetic architecture of common gene expression and biomarker phenotypes
topic Association Studies Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4321449/
https://www.ncbi.nlm.nih.gov/pubmed/25378555
http://dx.doi.org/10.1093/hmg/ddu560
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