Power to detect risk alleles using genome-wide tag SNP panels.

Advances in high-throughput genotyping and the International HapMap Project have enabled association studies at the whole-genome level. We have constructed whole-genome genotyping panels of over 550,000 (HumanHap550) and 650,000 (HumanHap650Y) SNP loci by choosing tag SNPs from all populations genot...

Full description

Bibliographic Details
Main Authors: Michael A Eberle, Pauline C Ng, Kenneth Kuhn, Lixin Zhou, Daniel A Peiffer, Luana Galver, Karine A Viaud-Martinez, Cynthia Taylor Lawley, Kevin L Gunderson, Richard Shen, Sarah S Murray
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2007-10-01
Series:PLoS Genetics
Online Access:http://europepmc.org/articles/PMC2000969?pdf=render
id doaj-6f35ed976e6e4f0ebdc90c7bbf139a85
record_format Article
spelling doaj-6f35ed976e6e4f0ebdc90c7bbf139a852020-11-24T22:05:32ZengPublic Library of Science (PLoS)PLoS Genetics1553-73901553-74042007-10-013101827183710.1371/journal.pgen.0030170Power to detect risk alleles using genome-wide tag SNP panels.Michael A EberlePauline C NgKenneth KuhnLixin ZhouDaniel A PeifferLuana GalverKarine A Viaud-MartinezCynthia Taylor LawleyKevin L GundersonRichard ShenSarah S MurrayAdvances in high-throughput genotyping and the International HapMap Project have enabled association studies at the whole-genome level. We have constructed whole-genome genotyping panels of over 550,000 (HumanHap550) and 650,000 (HumanHap650Y) SNP loci by choosing tag SNPs from all populations genotyped by the International HapMap Project. These panels also contain additional SNP content in regions that have historically been overrepresented in diseases, such as nonsynonymous sites, the MHC region, copy number variant regions and mitochondrial DNA. We estimate that the tag SNP loci in these panels cover the majority of all common variation in the genome as measured by coverage of both all common HapMap SNPs and an independent set of SNPs derived from complete resequencing of genes obtained from SeattleSNPs. We also estimate that, given a sample size of 1,000 cases and 1,000 controls, these panels have the power to detect single disease loci of moderate risk (lambda approximately 1.8-2.0). Relative risks as low as lambda approximately 1.1-1.3 can be detected using 10,000 cases and 10,000 controls depending on the sample population and disease model. If multiple loci are involved, the power increases significantly to detect at least one locus such that relative risks 20%-35% lower can be detected with 80% power if between two and four independent loci are involved. Although our SNP selection was based on HapMap data, which is a subset of all common SNPs, these panels effectively capture the majority of all common variation and provide high power to detect risk alleles that are not represented in the HapMap data.http://europepmc.org/articles/PMC2000969?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Michael A Eberle
Pauline C Ng
Kenneth Kuhn
Lixin Zhou
Daniel A Peiffer
Luana Galver
Karine A Viaud-Martinez
Cynthia Taylor Lawley
Kevin L Gunderson
Richard Shen
Sarah S Murray
spellingShingle Michael A Eberle
Pauline C Ng
Kenneth Kuhn
Lixin Zhou
Daniel A Peiffer
Luana Galver
Karine A Viaud-Martinez
Cynthia Taylor Lawley
Kevin L Gunderson
Richard Shen
Sarah S Murray
Power to detect risk alleles using genome-wide tag SNP panels.
PLoS Genetics
author_facet Michael A Eberle
Pauline C Ng
Kenneth Kuhn
Lixin Zhou
Daniel A Peiffer
Luana Galver
Karine A Viaud-Martinez
Cynthia Taylor Lawley
Kevin L Gunderson
Richard Shen
Sarah S Murray
author_sort Michael A Eberle
title Power to detect risk alleles using genome-wide tag SNP panels.
title_short Power to detect risk alleles using genome-wide tag SNP panels.
title_full Power to detect risk alleles using genome-wide tag SNP panels.
title_fullStr Power to detect risk alleles using genome-wide tag SNP panels.
title_full_unstemmed Power to detect risk alleles using genome-wide tag SNP panels.
title_sort power to detect risk alleles using genome-wide tag snp panels.
publisher Public Library of Science (PLoS)
series PLoS Genetics
issn 1553-7390
1553-7404
publishDate 2007-10-01
description Advances in high-throughput genotyping and the International HapMap Project have enabled association studies at the whole-genome level. We have constructed whole-genome genotyping panels of over 550,000 (HumanHap550) and 650,000 (HumanHap650Y) SNP loci by choosing tag SNPs from all populations genotyped by the International HapMap Project. These panels also contain additional SNP content in regions that have historically been overrepresented in diseases, such as nonsynonymous sites, the MHC region, copy number variant regions and mitochondrial DNA. We estimate that the tag SNP loci in these panels cover the majority of all common variation in the genome as measured by coverage of both all common HapMap SNPs and an independent set of SNPs derived from complete resequencing of genes obtained from SeattleSNPs. We also estimate that, given a sample size of 1,000 cases and 1,000 controls, these panels have the power to detect single disease loci of moderate risk (lambda approximately 1.8-2.0). Relative risks as low as lambda approximately 1.1-1.3 can be detected using 10,000 cases and 10,000 controls depending on the sample population and disease model. If multiple loci are involved, the power increases significantly to detect at least one locus such that relative risks 20%-35% lower can be detected with 80% power if between two and four independent loci are involved. Although our SNP selection was based on HapMap data, which is a subset of all common SNPs, these panels effectively capture the majority of all common variation and provide high power to detect risk alleles that are not represented in the HapMap data.
url http://europepmc.org/articles/PMC2000969?pdf=render
work_keys_str_mv AT michaelaeberle powertodetectriskallelesusinggenomewidetagsnppanels
AT paulinecng powertodetectriskallelesusinggenomewidetagsnppanels
AT kennethkuhn powertodetectriskallelesusinggenomewidetagsnppanels
AT lixinzhou powertodetectriskallelesusinggenomewidetagsnppanels
AT danielapeiffer powertodetectriskallelesusinggenomewidetagsnppanels
AT luanagalver powertodetectriskallelesusinggenomewidetagsnppanels
AT karineaviaudmartinez powertodetectriskallelesusinggenomewidetagsnppanels
AT cynthiataylorlawley powertodetectriskallelesusinggenomewidetagsnppanels
AT kevinlgunderson powertodetectriskallelesusinggenomewidetagsnppanels
AT richardshen powertodetectriskallelesusinggenomewidetagsnppanels
AT sarahsmurray powertodetectriskallelesusinggenomewidetagsnppanels
_version_ 1725826009943506944