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Paper Details

eQTL Catalogue 2023: New datasets, X chromosome QTLs, and improved detection and visualisation of transcript-level QTLs.
PLoS Genet
1
2023
GWAS loci, QTL, QTLs, RNA, RNA sequencing, X chromosome QTLs, causal gene, eQTL, eQTL Catalogue, eQTLs, fine mapped associations, human, human molecular quantitative trait loci, large-effect gene expression QTLs, molecular QTLs, primary splicing QTLs, splice-junction usage QTLs, transcript-level QTLs, vitamin D
Author NameAffiliation
Masahiro KanaiMassachusetts General Hospital
Masahiro KanaiStanley Center for Psychiatric Research, Broad Institute of MIT and Harvard
Masahiro KanaiBroad Institute of MIT and Harvard
Mina RytenGreat Ormond Street Institute of Child Health, University College London
Sarah Kim-HellmuthInstitute of Translational Genomics
Sarah Kim-HellmuthDr. von Hauner Children's Hospital, University Hospital LMU Munich
Hedi PetersonInstitute of Computer Science, University of Tartu
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Datasets

eQTL CatalogueThe eQTL Catalogue aims to provide uniformly processed gene expression and splicing QTLs from all available public studies on human.Link
eQTL CatalogueThe eQTL Catalogue aims to provide uniformly processed gene expression and splicing QTLs from all available public studies on human.Link
eQTL CatalogueThe eQTL Catalogue aims to provide uniformly processed gene expression and splicing QTLs from all available public studies on human.Link
eQTL CatalogueThe eQTL Catalogue aims to provide uniformly processed gene expression and splicing QTLs from all available public studies on human.Link
eQTL CatalogueThe eQTL Catalogue aims to provide uniformly processed gene expression and splicing QTLs from all available public studies on human.Link
eQTL CatalogueThe eQTL Catalogue aims to provide uniformly processed gene expression and splicing QTLs from all available public studies on human.Link
eQTL CatalogueThe eQTL Catalogue aims to provide uniformly processed gene expression and splicing QTLs from all available public studies on human.Link