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An atlas of genetic scores to predict multi-omic traits

Authors :
Yu Xu
Scott C. Ritchie
Yujian Liang
Paul R. H. J. Timmers
Maik Pietzner
Loïc Lannelongue
Samuel A. Lambert
Usman A. Tahir
Sebastian May-Wilson
Åsa Johansson
Praveen Surendran
Artika P Nath
Elodie Persyn
James E. Peters
Clare Oliver-Williams
Shuliang Deng
Bram Prins
Carles Foguet
Jian’an Luan
Lorenzo Bomba
Nicole Soranzo
Emanuele Di Angelantonio
Nicola Pirastu
E Shyong Tai
Rob M van Dam
Emma E Davenport
Dirk S. Paul
Christopher Yau
Robert E. Gerszten
Anders Mälarstig
John Danesh
Xueling Sim
Claudia Langenberg
James F. Wilson
Adam S. Butterworth
Michael Inouye
Publication Year :
2022
Publisher :
Cold Spring Harbor Laboratory, 2022.

Abstract

Genetically predicted levels of multi-omic traits can uncover the molecular underpinnings of common phenotypes in a highly efficient manner. Here, we utilised a large cohort (INTERVAL; N=50,000 participants) with extensive multi-omic data for plasma proteomics (SomaScan, N=3,175; Olink, N=4,822), plasma metabolomics (Metabolon HD4, N=8,153), serum metabolomics (Nightingale, N=37,359), and whole blood Illumina RNA sequencing (N=4,136). We used machine learning to train genetic scores for 17,227 molecular traits, including 10,521 which reached Bonferroni-adjusted significance. We evaluated genetic score performances in external validation across European, Asian and African American ancestries, and assessed their longitudinal stability within diverse individuals. We demonstrated the utility of these multi-omic genetic scores by quantifying the genetic control of biological pathways and by generating a synthetic multi-omic dataset of UK Biobank to identify disease associations using a phenome-wide scan. Finally, we developed a portal (OmicsPred.org) to facilitate public access to all genetic scores and validation results as well as to serve as a platform for future extensions and enhancements of multi-omic genetic scores.

Details

Database :
OpenAIRE
Accession number :
edsair.doi...........b56e4397af439f00ad888c393f4e3f8d
Full Text :
https://doi.org/10.1101/2022.04.17.488593