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Integrating Mouse and Human Genetic Data to Move beyond GWAS and Identify Causal Genes in Cholesterol Metabolism

Authors :
Zhonggang Li
Cara L Green
James A Votava
Dudley W. Lamming
Julia M. Rios
Samantha L. St. Clair
Jenny N. Nguyen
Sushma Kaul
William R. Lagor
Mary G. Sorci-Thomas
Chi-Liang Eric Yen
Marco De Giorgi
David W. Nelson
Jacqueline A. Brinkman
Sophia M. Ly
Brian W. Parks
Sabrina L. Belisle
Gregory J.M. Zajac
Fernanda B. Leyva Jaimes
Source :
Cell Metab
Publication Year :
2019

Abstract

Identifying the causal gene(s) that connect genetic variation to a phenotype is a challenging problem in genome-wide association studies (GWASs). Here, wse develop a systematic approach that integrates mouse liver co-expression networks with human lipid GWAS data to identify regulators of cholesterol and lipid metabolism. Through our approach, we identified 48 genes showing replication in mice and associated with plasma lipid traits in humans and six genes on the X chromosome. Among these 54 genes, 25 have no previously identified role in lipid metabolism. Based on functional studies and integration with additional human lipid GWAS datasets, we pinpoint Sestrin1 as a causal gene associated with plasma cholesterol levels in humans. Our validation studies demonstrate that Sestrin1 influences plasma cholesterol in multiple mouse models and regulates cholesterol biosynthesis. Our results highlight the power of combining mouse and human datasets for prioritization of human lipid GWAS loci and discovery of lipid genes.

Details

ISSN :
19327420
Volume :
31
Issue :
4
Database :
OpenAIRE
Journal :
Cell metabolism
Accession number :
edsair.doi.dedup.....826d4aeae902f737c5e34931383af916