A statistical framework for joint eQTL analysis in multiple tissues
Timoth\'ee Flutre, Xiaoquan Wen, Jonathan Pritchard, Matthew Stephens

TL;DR
This paper introduces a statistical framework for joint eQTL analysis across multiple tissues, improving detection power and estimating tissue-sharing of eQTLs, which enhances understanding of gene regulation in different tissues.
Contribution
The framework explicitly models tissue-specific activity of eQTLs, increasing detection power and enabling estimation of eQTL sharing across tissues, addressing limitations of tissue-by-tissue analysis.
Findings
Increased eQTL detection by 63% using the new framework
Most eQTLs are shared among all three tissues analyzed
Framework outperforms traditional tissue-by-tissue methods
Abstract
Mapping expression Quantitative Trait Loci (eQTLs) represents a powerful and widely-adopted approach to identifying putative regulatory variants and linking them to specific genes. Up to now eQTL studies have been conducted in a relatively narrow range of tissues or cell types. However, understanding the biology of organismal phenotypes will involve understanding regulation in multiple tissues, and ongoing studies are collecting eQTL data in dozens of cell types. Here we present a statistical framework for powerfully detecting eQTLs in multiple tissues or cell types (or, more generally, multiple subgroups). The framework explicitly models the potential for each eQTL to be active in some tissues and inactive in others. By modeling the sharing of active eQTLs among tissues this framework increases power to detect eQTLs that are present in more than one tissue compared with…
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