| Literature DB >> 35523146 |
Abhay Hukku1, Matthew G Sampson2, Francesca Luca3, Roger Pique-Regi3, Xiaoquan Wen4.
Abstract
Transcriptome-wide association studies and colocalization analysis are popular computational approaches for integrating genetic-association data from molecular and complex traits. They show the unique ability to go beyond variant-level genetic-association evidence and implicate critical functional units, e.g., genes, in disease etiology. However, in practice, when the two approaches are applied to the same molecular and complex-trait data, the inference results can be markedly different. This paper systematically investigates the inferential reproducibility between the two approaches through theoretical derivation, numerical experiments, and analyses of four complex trait GWAS and GTEx eQTL data. We identify two classes of inconsistent inference results. We find that the first class of inconsistent results (i.e., genes with strong colocalization but weak transcriptome-wide association study [TWAS] signals) might suggest an interesting biological phenomenon, i.e., horizontal pleiotropy; thus, the two approaches are truly complementary. The inconsistency in the second class (i.e., genes with weak colocalization but strong TWAS signals) can be understood and effectively reconciled. To this end, we propose a computational approach for locus-level colocalization analysis. We demonstrate that the joint TWAS and locus-level colocalization analysis improves specificity and sensitivity for implicating biologically relevant genes.Entities:
Keywords: GWAS; TWAS; colocalization; eQTL; inferential reproducibility; integrative genetic association analysis
Mesh:
Year: 2022 PMID: 35523146 PMCID: PMC9118134 DOI: 10.1016/j.ajhg.2022.04.005
Source DB: PubMed Journal: Am J Hum Genet ISSN: 0002-9297 Impact factor: 11.043