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GWAS Study

Imputation of variants from the 1000 Genomes Project modestly improves known associations and can identify low-frequency variant-phenotype associations undetected by HapMap based imputation.

Wood AR, Perry JR, Tanaka T et al.

23696881 PubMed ID
GWAS Study Type
1209 Participants
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Chapter I

Publication Details

Comprehensive information about this research publication

Authors

WA
Wood AR
PJ
Perry JR
TT
Tanaka T
HD
Hernandez DG
ZH
Zheng HF
MD
Melzer D
GJ
Gibbs JR
NM
Nalls MA
WM
Weedon MN
ST
Spector TD
RJ
Richards JB
BS
Bandinelli S
FL
Ferrucci L
SA
Singleton AB
FT
Frayling TM
Chapter II

Abstract

Summary of the research findings

Genome-wide association (GWA) studies have been limited by the reliance on common variants present on microarrays or imputable from the HapMap Project data. More recently, the completion of the 1000 Genomes Project has provided variant and haplotype information for several million variants derived from sequencing over 1,000 individuals. To help understand the extent to which more variants (including low frequency (1% ≤ MAF <5%) and rare variants (<1%)) can enhance previously identified associations and identify novel loci, we selected 93 quantitative circulating factors where data was available from the InCHIANTI population study. These phenotypes included cytokines, binding proteins, hormones, vitamins and ions. We selected these phenotypes because many have known strong genetic associations and are potentially important to help understand disease processes. We performed a genome-wide scan for these 93 phenotypes in InCHIANTI. We identified 21 signals and 33 signals that reached P<5×10(-8) based on HapMap and 1000 Genomes imputation, respectively, and 9 and 11 that reached a stricter, likely conservative, threshold of P<5×10(-11) respectively. Imputation of 1000 Genomes genotype data modestly improved the strength of known associations. Of 20 associations detected at P<5×10(-8) in both analyses (17 of which represent well replicated signals in the NHGRI catalogue), six were captured by the same index SNP, five were nominally more strongly associated in 1000 Genomes imputed data and one was nominally more strongly associated in HapMap imputed data. We also detected an association between a low frequency variant and phenotype that was previously missed by HapMap based imputation approaches. An association between rs112635299 and alpha-1 globulin near the SERPINA gene represented the known association between rs28929474 (MAF = 0.007) and alpha1-antitrypsin that predisposes to emphysema (P = 2.5×10(-12)). Our data provide important proof of principle that 1000 Genomes imputation will detect novel, low frequency-large effect associations.

up to 1,209 European ancestry individuals

Chapter III

Study Statistics

Key metrics and study information

1209
Total Participants
GWAS
Study Type
Yes
Replicated
708 individuals
Replication Participants
European
Ancestry
Italy
Recruitment Country
Chapter IV

Analysis

Comprehensive review of health and genetic findings

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