A Bayesian framework for multiple trait colocalization from summary association statistics

C Giambartolomei, J Zhenli Liu, W Zhang… - …, 2018 - academic.oup.com
Bioinformatics, 2018academic.oup.com
Motivation Most genetic variants implicated in complex diseases by genome-wide
association studies (GWAS) are non-coding, making it challenging to understand the
causative genes involved in disease. Integrating external information such as quantitative
trait locus (QTL) mapping of molecular traits (eg expression, methylation) is a powerful
approach to identify the subset of GWAS signals explained by regulatory effects. In
particular, expression QTLs (eQTLs) help pinpoint the responsible gene among the GWAS …
Motivation
Most genetic variants implicated in complex diseases by genome-wide association studies (GWAS) are non-coding, making it challenging to understand the causative genes involved in disease. Integrating external information such as quantitative trait locus (QTL) mapping of molecular traits (e.g. expression, methylation) is a powerful approach to identify the subset of GWAS signals explained by regulatory effects. In particular, expression QTLs (eQTLs) help pinpoint the responsible gene among the GWAS regions that harbor many genes, while methylation QTLs (mQTLs) help identify the epigenetic mechanisms that impact gene expression which in turn affect disease risk. In this work, we propose multiple-trait-coloc (moloc), a Bayesian statistical framework that integrates GWAS summary data with multiple molecular QTL data to identify regulatory effects at GWAS risk loci.
Results
We applied moloc to schizophrenia (SCZ) and eQTL/mQTL data derived from human brain tissue and identified 52 candidate genes that influence SCZ through methylation. Our method can be applied to any GWAS and relevant functional data to help prioritize disease associated genes.
Availability and implementation: moloc is available for download as an R package (https://github.com/clagiamba/moloc). We also developed a web site to visualize the biological findings (icahn.mssm.edu/moloc). The browser allows searches by gene, methylation probe and scenario of interest.
Supplementary information
Supplementary data are available at Bioinformatics online.
Oxford University Press