Author:
Aguirre-Gamboa Raúl,de Klein Niek,di Tommaso Jennifer,Claringbould Annique,van der Wijst Monique GP,de Vries Dylan,Brugge Harm,Oelen Roy,Võsa Urmo,Zorro Maria M.,Chu Xiaojin,Bakker Olivier B.,Borek Zuzanna,Ricaño-Ponce Isis,Deelen Patrick,Xu Cheng-Jiang,Swertz Morris,Jonkers Iris,Withoff Sebo,Joosten Irma,Sanna Serena,Kumar Vinod,Koenen Hans J. P. M.,Joosten Leo A. B.,Netea Mihai G.,Wijmenga Cisca,Franke Lude,Li Yang,
Abstract
Abstract
Background
Expression quantitative trait loci (eQTL) studies are used to interpret the function of disease-associated genetic risk factors. To date, most eQTL analyses have been conducted in bulk tissues, such as whole blood and tissue biopsies, which are likely to mask the cell type-context of the eQTL regulatory effects. Although this context can be investigated by generating transcriptional profiles from purified cell subpopulations, current methods to do this are labor-intensive and expensive. We introduce a new method, Decon2, as a framework for estimating cell proportions using expression profiles from bulk blood samples (Decon-cell) followed by deconvolution of cell type eQTLs (Decon-eQTL).
Results
The estimated cell proportions from Decon-cell agree with experimental measurements across cohorts (R ≥ 0.77). Using Decon-cell, we could predict the proportions of 34 circulating cell types for 3194 samples from a population-based cohort. Next, we identified 16,362 whole-blood eQTLs and deconvoluted cell type interaction (CTi) eQTLs using the predicted cell proportions from Decon-cell. CTi eQTLs show excellent allelic directional concordance with eQTL (≥ 96–100%) and chromatin mark QTL (≥87–92%) studies that used either purified cell subpopulations or single-cell RNA-seq, outperforming the conventional interaction effect.
Conclusions
Decon2 provides a method to detect cell type interaction effects from bulk blood eQTLs that is useful for pinpointing the most relevant cell type for a given complex disease. Decon2 is available as an R package and Java application (https://github.com/molgenis/systemsgenetics/tree/master/Decon2) and as a web tool (www.molgenis.org/deconvolution).
Funder
ZonMW-VIDI
ERC Starting Grant
ZonMW-OffRoad
IN-CONTROL CVON
Netherlands Organization for Scientific Research (NWO) Spinoza prize
ERC advanced
European Research Council (ERC) Consolidator grant
NWO Spinoza prize
European Union Seventh Framework Programme grant (EU FP7) TANDEM project
National Institutes of Health
CONACYT-I2T2 scholarship
Institute for Biospheric Studies, Yale University
Publisher
Springer Science and Business Media LLC
Subject
Applied Mathematics,Computer Science Applications,Molecular Biology,Biochemistry,Structural Biology