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Detailed investigation of the role of common and low-frequency WFS1 variants in type 2 diabetes risk

Authors :
Paul W. Franks
Manjinder S. Sandhu
Alan Permutt
Allan Daly
Mark I. McCarthy
Nicholas J. Wareham
Eleanor Wheeler
Benjamin Glaser
Andrew T. Hattersley
Katherine A. Fawcett
Göran Hallmans
Andrew P. Morris
Inês Barroso
Olov Rolandsson
Jon Wasson
Sally L. Ricketts
Source :
Diabetes
Publication Year :
2009

Abstract

OBJECTIVE Wolfram syndrome 1 (WFS1) single nucleotide polymorphisms (SNPs) are associated with risk of type 2 diabetes. In this study we aimed to refine this association and investigate the role of low-frequency WFS1 variants in type 2 diabetes risk. RESEARCH DESIGN AND METHODS For fine-mapping, we sequenced WFS1 exons, splice junctions, and conserved noncoding sequences in samples from 24 type 2 diabetic case and 68 control subjects, selected tagging SNPs, and genotyped these in 959 U.K. type 2 diabetic case and 1,386 control subjects. The same genomic regions were sequenced in samples from 1,235 type 2 diabetic case and 1,668 control subjects to compare the frequency of rarer variants between case and control subjects. RESULTS Of 31 tagging SNPs, the strongest associated was the previously untested 3′ untranslated region rs1046320 (P = 0.008); odds ratio 0.84 and P = 6.59 × 10−7 on further replication in 3,753 case and 4,198 control subjects. High correlation between rs1046320 and the original strongest SNP (rs10010131) (r2 = 0.92) meant that we could not differentiate between their effects in our samples. There was no difference in the cumulative frequency of 82 rare (minor allele frequency [MAF] CONCLUSIONS We identified six highly correlated SNPs that show strong and comparable associations with risk of type 2 diabetes, but further refinement of these associations will require large sample sizes (>100,000) or studies in ethnically diverse populations. Low frequency variants in WFS1 are unlikely to have a large impact on type 2 diabetes risk in white U.K. populations, highlighting the complexities of undertaking association studies with low-frequency variants identified by resequencing.

Details

ISSN :
1939327X
Volume :
59
Issue :
3
Database :
OpenAIRE
Journal :
Diabetes
Accession number :
edsair.doi.dedup.....26ddd6fd49ad4c64ebb1676e2542ac3a