Abstract

Genome wide association studies (GWAS) identify susceptibility loci for complex traits, but do not identify particular genes of interest. Integration of functional and network information may help in overcoming this limitation and identifying new susceptibility loci. Using GWAS and comorbidity data, we present a network-based approach to predict candidate genes for lipid and lipoprotein traits. We apply a prediction pipeline incorporating interactome, co-expression, and comorbidity data to Global Lipids Genetics Consortium (GLGC) GWAS for four traits of interest, identifying phenotypically coherent modules. These modules provide insights regarding gene involvement in complex phenotypes with multiple susceptibility alleles and low effect sizes. To experimentally test our predictions, we selected four candidate genes and genotyped representative SNPs in the Malmö Diet and Cancer Cardiovascular Cohort. We found significant associations with LDL-C and total-cholesterol levels for a synonymous SNP (rs234706) in the cystathionine beta-synthase (CBS) gene (p = 1 × 10(-5) and adjusted-p = 0.013, respectively). Further, liver samples taken from 206 patients revealed that patients with the minor allele of rs234706 had significant dysregulation of CBS (p = 0.04). Despite the known biological role of CBS in lipid metabolism, SNPs within the locus have not yet been identified in GWAS of lipoprotein traits. Thus, the GWAS-based Comorbidity Module (GCM) approach identifies candidate genes missed by GWAS studies, serving as a broadly applicable tool for the investigation of other complex disease phenotypes.

Highlights

  • Amitabh Sharma has completed his Ph.D at the age of 30 years from Pune University and postdoctoral studies from Department of Clinical Sciences, CRC, Lund University, Malmö University Hospital, S-205 02 Malmö, Sweden

  • Genome wide association studies (GWASs) have generated plethora of data that need to be interpreted with diverse biological dimensions

  • Starting with seed genes located near SNPs with p

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Summary

Introduction

International Conference and Exhibition on Metabolomics & Systems Biology 20-22 February 2012 San Francisco Airport Marriott Waterfront, USA Network based analysis of genome wide association data provides novel candidate genes for lipoprotein traits

Results
Conclusion
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