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Integrative analysis of loss-of-function variants in clinical and genomic data reveals novel genes associated with cardiovascular traits

Authors :
Benjamin S. Glicksberg
Letizia Amadori
Nicholas K. Akers
Katyayani Sukhavasi
Oscar Franzén
Li Li
Gillian M. Belbin
Kristin L. Akers
Khader Shameer
Marcus A. Badgeley
Kipp W. Johnson
Ben Readhead
Bruce J. Darrow
Eimear E. Kenny
Christer Betsholtz
Raili Ermel
Josefin Skogsberg
Arno Ruusalepp
Eric E. Schadt
Joel T. Dudley
Hongxia Ren
Jason C. Kovacic
Chiara Giannarelli
Shuyu D. Li
Johan L. M. Björkegren
Rong Chen
Source :
BMC Medical Genomics, Vol 12, Iss S6, Pp 1-16 (2019)
Publication Year :
2019
Publisher :
BMC, 2019.

Abstract

Abstract Background Genetic loss-of-function variants (LoFs) associated with disease traits are increasingly recognized as critical evidence for the selection of therapeutic targets. We integrated the analysis of genetic and clinical data from 10,511 individuals in the Mount Sinai BioMe Biobank to identify genes with loss-of-function variants (LoFs) significantly associated with cardiovascular disease (CVD) traits, and used RNA-sequence data of seven metabolic and vascular tissues isolated from 600 CVD patients in the Stockholm-Tartu Atherosclerosis Reverse Network Engineering Task (STARNET) study for validation. We also carried out in vitro functional studies of several candidate genes, and in vivo studies of one gene. Results We identified LoFs in 433 genes significantly associated with at least one of 10 major CVD traits. Next, we used RNA-sequence data from the STARNET study to validate 115 of the 433 LoF harboring-genes in that their expression levels were concordantly associated with corresponding CVD traits. Together with the documented hepatic lipid-lowering gene, APOC3, the expression levels of six additional liver LoF-genes were positively associated with levels of plasma lipids in STARNET. Candidate LoF-genes were subjected to gene silencing in HepG2 cells with marked overall effects on cellular LDLR, levels of triglycerides and on secreted APOB100 and PCSK9. In addition, we identified novel LoFs in DGAT2 associated with lower plasma cholesterol and glucose levels in BioMe that were also confirmed in STARNET, and showed a selective DGAT2-inhibitor in C57BL/6 mice not only significantly lowered fasting glucose levels but also affected body weight. Conclusion In sum, by integrating genetic and electronic medical record data, and leveraging one of the world’s largest human RNA-sequence datasets (STARNET), we identified known and novel CVD-trait related genes that may serve as targets for CVD therapeutics and as such merit further investigation.

Details

Language :
English
ISSN :
17558794
Volume :
12
Issue :
S6
Database :
Directory of Open Access Journals
Journal :
BMC Medical Genomics
Publication Type :
Academic Journal
Accession number :
edsdoj.76b99477ddb49caaac1147906552dfc
Document Type :
article
Full Text :
https://doi.org/10.1186/s12920-019-0542-3