Disease areas:
  • heart and blood vessels
Last updated:
Author(s):
Ben Omega Petrazzini, Iain S. Forrest, Ghislain Rocheleau, Ha My T. Vy, Carla Márquez-Luna, Áine Duffy, Robert Chen, Joshua K. Park, Kyle Gibson, Sascha N. Goonewardena, Waqas A. Malick, Robert S. Rosenson, Daniel M. Jordan, Ron Do
Publish date:
11 June 2024
Journal:
Nature Genetics
PubMed ID:
38862854

Abstract

Coronary artery disease (CAD) exists on a spectrum of disease represented by a combination of risk factors and pathogenic processes. An in silico score for CAD built using machine learning and clinical data in electronic health records captures disease progression, severity and underdiagnosis on this spectrum and could enhance genetic discovery efforts for CAD. Here we tested associations of rare and ultrarare coding variants with the in silico score for CAD in the UK Biobank, All of Us Research Program and BioMe Biobank. We identified associations in 17 genes; of these, 14 show at least moderate levels of prior genetic, biological and/or clinical support for CAD. We also observed an excess of ultrarare coding variants in 321 aggregated CAD genes, suggesting more ultrarare variant associations await discovery. These results expand our understanding of the genetic etiology of CAD and illustrate how digital markers can enhance genetic association investigations for complex diseases.

Related projects

The major aim of this proposal is to use the genetic data produced by the UK BioBank to investigate key questions related to the genetic…

Institution:
Icahn School of Medicine at Mount Sinai, United States of America

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