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Haplotype-aware modeling of cis-regulatory effects highlights the gaps remaining in eQTL data

Nava Ehsan, Bence Kotis, Stephane E. Castel, Eric Song, Nicholas Mancuso, Pejman Mohammadi

2024Nature Communications11 citationsDOIOpen Access PDF

Abstract

Abstract Expression Quantitative Trait Loci (eQTLs) are critical to understanding the mechanisms underlying disease-associated genomic loci. Nearly all protein-coding genes in the human genome have been associated with one or more eQTLs. Here we introduce a multi-variant generalization of allelic Fold Change (aFC), aFC-n, to enable quantification of the cis -regulatory effects in multi-eQTL genes under the assumption that all eQTLs are known and conditionally independent. Applying aFC-n to 458,465 eQTLs in the Genotype-Tissue Expression (GTEx) project data, we demonstrate significant improvements in accuracy over the original model in estimating the eQTL effect sizes and in predicting genetically regulated gene expression over the current tools. We characterize some of the empirical properties of the eQTL data and use this framework to assess the current state of eQTL data in terms of characterizing cis -regulatory landscape in individual genomes. Notably, we show that 77.4% of the genes with an allelic imbalance in a sample show 0.5 log 2 fold or more of residual imbalance after accounting for the eQTL data underlining the remaining gap in characterizing regulatory landscape in individual genomes. We further contrast this gap across tissue types, and ancestry backgrounds to identify its correlates and guide future studies.

Topics & Concepts

HaplotypeExpression quantitative trait lociComputational biologyComputer scienceBiologyGeneticsGeneSingle-nucleotide polymorphismGenotypeGene expression and cancer classificationBioinformatics and Genomic NetworksGenetic Associations and Epidemiology