Abstract

Although over 60 single nucleotide polymorphisms (SNPs) have been identified by meta-analysis of genome-wide association studies for type-2 diabetes (T2D) among individuals of European descent, much of the genetic variation remains unexplained. There are likely many more SNPs that contribute to variation in T2D risk, some of which may lie in the regions surrounding established SNPs - a phenomenon often referred to as allelic heterogeneity. Here, we use the summary statistics from the DIAGRAM consortium meta-analysis of T2D genome-wide association studies along with linkage disequilibrium patterns inferred from a large reference sample to identify novel SNPs associated with T2D surrounding each of the previously established risk loci. We then examine the extent to which the use of these additional SNPs improves prediction of T2D risk in an independent validation dataset. Our results suggest that multiple SNPs at each of 3 loci contribute to T2D susceptibility (TCF7L2, CDKN2A/B, and KCNQ1; p<5×10−8). Using a less stringent threshold (p<5×10−4), we identify 34 additional loci with multiple associated SNPs. The addition of these SNPs slightly improves T2D prediction compared to the use of only the respective lead SNPs, when assessed using an independent validation cohort. Our findings suggest that some currently established T2D risk loci likely harbor multiple polymorphisms which contribute independently and collectively to T2D risk. This opens a promising avenue for improving prediction of T2D, and for a better understanding of the genetic architecture of T2D.

Highlights

  • 65 loci have been shown to be associated with type-2 diabetes (T2D) through genome-wide association studies (GWAS)

  • We comprehensively examine allelic heterogeneity based on the method developed by Yang et al at 65 T2D loci discovered by the DIAbetes Genetics Replication And Metaanalysis (DIAGRAM) consortium, using the summary statistics from their recent meta-analysis of T2D GWAS

  • Conditional/Joint analysis We identified novel genome-wide significant (p,561028) SNPs in the C/J analysis at the three following loci: TCF7L2, CDKN2A/ B, and KCNQ1

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Summary

Introduction

65 loci have been shown to be associated with type-2 diabetes (T2D) through genome-wide association studies (GWAS). Without formal conditional analysis, they identified two loci as having multiple associations at genome-wide significance (KCNQ1 and CDKN2A/B), and two more at suggestive levels (DGKB and MC4R). Yang et al have recently developed a method for identifying additional associated SNPs based on conditional/joint (C/J) analysis using GWAS summary statistics and linkage disequilibrium (LD) information from a reference sample [7]. They applied their method to only a single established T2D locus (CDKN2A/B), and identified two novel SNPs at that locus that were significantly associated with T2D when fitted jointly. The advantage of the method developed by Yang et al is that it takes advantage of the greater power of GWAS meta-analyses, while testing for C/J associations, which would otherwise be impossible without individual level data

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