Matrix eQTL: Ultra fast eQTL analysis via large matrix operations
Andrey A. Shabalin

TL;DR
Matrix eQTL introduces a highly efficient method for eQTL analysis using large matrix operations, significantly reducing computation time for large genomic datasets and supporting various statistical models.
Contribution
The paper presents Matrix eQTL, a novel software tool that accelerates eQTL analysis by leveraging matrix operations, enabling analysis of large datasets with complex models.
Findings
Matrix eQTL is thousands of times faster than existing tools.
Supports multiple statistical models including linear regression and ANOVA.
Compatible with Matlab and R on various operating systems.
Abstract
Expression quantitative trait loci (eQTL) mapping aims to determine genomic regions that regulate gene transcription. Expression QTL is used to study the regulatory structure of normal tissues and to search for genetic factors in complex diseases such as cancer, diabetes, and cystic fibrosis. A modern eQTL dataset contains millions of SNPs and thousands of transcripts measured for hundreds of samples. This makes the analysis computationally complex as it involves independent testing for association for every transcript-SNP pair. The heavy computational burden makes eQTL analysis less popular, often forces analysts to restrict their attention to just a subset of transcripts and SNPs. As larger genotype and gene expression datasets become available, the demand for fast tools for eQTL analysis increases. We present a new method for fast eQTL analysis via linear models, called Matrix eQTL.…
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