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Whole Genome DNA and RNA Sequencing of Whole Blood Elucidates the Genetic Architecture of Gene Expression Underlying a Wide Range of Diseases

Authors :
Chunyu Liu
Roby Joehanes
Jiantao Ma
Yuxuan Wang
Xianbang Sun
Amena Keshawarz
Meera Sooda
Tianxiao Huan
Shih-Jen Hwang
Helena Bui
Brandon Tejada
Peter J. Munson
Demirkale Cumhur
Nancy L. Heard-Costa
Achilleas N Pitsillides
Gina M. Peloso
Michael Feolo
Nataliya Sharopova
Ramachandran S. Vasan
Daniel Levy
Source :
medRxiv
Publication Year :
2022
Publisher :
Cold Spring Harbor Laboratory, 2022.

Abstract

To create a scientific resource of expression quantitative trail loci (eQTL), we conducted a genome-wide association study (GWAS) using genotypes obtained from whole genome sequencing (WGS) of DNA and gene expression levels from RNA sequencing (RNA-seq) of whole blood in 2622 participants in Framingham Heart Study. We identified 6,778,286 cis-eQTL variant-gene transcript (eGene) pairs at p − 8 (2,855,111 unique cis-eQTL variants and 15,982 unique eGenes) and 1,469,754 trans-eQTL variant-eGene pairs at p trans-eQTL variants and 7,233 unique eGenes). In addition, 442,379 cis-eQTL variants were associated with expression of 1518 long non-protein coding RNAs (lncRNAs). Gene Ontology (GO) analyses revealed that the top GO terms for cis-eGenes are enriched for immune functions (FDR cis-eQTL variants are enriched for SNPs reported to be associated with 815 traits in prior GWAS, including cardiovascular disease risk factors. As proof of concept, we used this eQTL resource in conjunction with genetic variants from public GWAS databases in causal inference testing (e.g., COVID-19 severity). After Bonferroni correction, Mendelian randomization analyses identified putative causal associations of 60 eGenes with systolic blood pressure, 13 genes with coronary artery disease, and seven genes with COVID-19 severity. This study created a comprehensive eQTL resource via BioData Catalyst that will be made available to the scientific community. This will advance understanding of the genetic architecture of gene expression underlying a wide range of diseases.

Details

Database :
OpenAIRE
Journal :
medRxiv
Accession number :
edsair.doi.dedup.....7dd2eab3ec22b098e602403b503b97d0
Full Text :
https://doi.org/10.1101/2022.04.13.22273841