Bayesian statistical test identified 26 out of 38 previously reported colocalisation results and 14 new colocalisation results in patients with lipid traits from a liver gene expression dataset.
>100,000 individuals of European ancestry from a published meta-analysis of lipid traits, and 966 liver samples from a gene expression dataset.
Bayesian statistical test for colocalisation using single SNP summary statistics
Proportional colocalisation testing (in simulations) and previously reported colocalisation results
Probability of a shared causal variant between two association signals (colocalisation)surrogate
A novel Bayesian colocalisation test using summary statistics efficiently identifies shared causal variants across GWAS datasets, revealing new candidate genes for lipid traits.
Genetic association studies, in particular the genome-wide association study (GWAS) design, have provided a wealth of novel insights into the aetiology of a wide range of human diseases and traits, in particular cardiovascular diseases and lipid biomarkers. The next challenge consists of understanding the molecular basis of these associations. The integration of multiple association datasets, including gene expression datasets, can contribute to this goal. We have developed a novel statistical methodology to assess whether two association signals are consistent with a shared causal variant. An application is the integration of disease scans with expression quantitative trait locus (eQTL) studies, but any pair of GWAS datasets can be integrated in this framework. We demonstrate the value of the approach by re-analysing a gene expression dataset in 966 liver samples with a published meta-analysis of lipid traits including >100,000 individuals of European ancestry. Combining all lipid biomarkers, our re-analysis supported 26 out of 38 reported colocalisation results with eQTLs and identified 14 new colocalisation results, hence highlighting the value of a formal statistical test. In three cases of reported eQTL-lipid pairs (SYPL2, IFT172, TBKBP1) for which our analysis suggests that the eQTL pattern is not consistent with the lipid association, we identify alternative colocalisation results with SORT1, GCKR, and KPNB1, indicating that these genes are more likely to be causal in these genomic intervals. A key feature of the method is the ability to derive the output statistics from single SNP summary statistics, hence making it possible to perform systematic meta-analysis type comparisons across multiple GWAS datasets (implemented online at http://coloc.cs.ucl.ac.uk/coloc/). Our methodology provides information about candidate causal genes in associated intervals and has direct implications for the understanding of complex diseases as well as the design of drugs to target disease pathways.
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Claudia Giambartolomei
Damjan Vukcevic
Eric E. Schadt
PLoS Genetics
University of Cambridge
University College London
Icahn School of Medicine at Mount Sinai
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Giambartolomei et al. (Thu,) conducted a other in lipid traits (n=966). Bayesian statistical test for colocalisation vs. no colocalisation analysis was evaluated on colocalisation results with gene expression and lipid association signals. Bayesian statistical test identified 26 out of 38 previously reported colocalisation results and 14 new colocalisation results in patients with lipid traits from a liver gene expression dataset.
www.synapsesocial.com/papers/698a05eb1e1258a9513e944c — DOI: https://doi.org/10.1371/journal.pgen.1004383
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