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An atlas of genetic scores to predict multi-omic traits

Author

Listed:
  • Yu Xu

    (University of Cambridge
    University of Cambridge
    University of Cambridge)

  • Scott C. Ritchie

    (University of Cambridge
    University of Cambridge
    University of Cambridge
    University of Cambridge)

  • Yujian Liang

    (National University of Singapore and National University Health System)

  • Paul R. H. J. Timmers

    (University of Edinburgh)

  • Maik Pietzner

    (University of Cambridge School of Clinical Medicine
    Berlin Institute of Health (BIH) at Charité – Universitätsmedizin Berlin
    Queen Mary University of London)

  • Loïc Lannelongue

    (University of Cambridge
    University of Cambridge
    University of Cambridge
    Wellcome Genome Campus and University of Cambridge)

  • Samuel A. Lambert

    (University of Cambridge
    University of Cambridge
    University of Cambridge
    University of Cambridge)

  • Usman A. Tahir

    (Beth Israel Deaconess Medical Center)

  • Sebastian May-Wilson

    (University of Edinburgh)

  • Carles Foguet

    (University of Cambridge
    University of Cambridge
    University of Cambridge
    Wellcome Genome Campus and University of Cambridge)

  • Åsa Johansson

    (Uppsala University)

  • Praveen Surendran

    (University of Cambridge)

  • Artika P. Nath

    (University of Cambridge
    Baker Heart and Diabetes Institute)

  • Elodie Persyn

    (University of Cambridge
    University of Cambridge
    University of Cambridge)

  • James E. Peters

    (Imperial College London)

  • Clare Oliver-Williams

    (University of Cambridge)

  • Shuliang Deng

    (Beth Israel Deaconess Medical Center)

  • Bram Prins

    (University of Cambridge)

  • Jian’an Luan

    (University of Cambridge School of Clinical Medicine)

  • Lorenzo Bomba

    (Wellcome Genome Campus
    BioMarin Pharmaceutical)

  • Nicole Soranzo

    (University of Cambridge
    Wellcome Genome Campus
    University of Cambridge
    University of Cambridge)

  • Emanuele Angelantonio

    (University of Cambridge
    University of Cambridge
    University of Cambridge
    Wellcome Genome Campus and University of Cambridge)

  • Nicola Pirastu

    (University of Edinburgh
    Human Technopole)

  • E. Shyong Tai

    (National University of Singapore and National University Health System
    National University of Singapore and National University Health System)

  • Rob M. Dam

    (National University of Singapore and National University Health System
    The George Washington University)

  • Helen Parkinson

    (European Bioinformatics Institute, Wellcome Genome Campus)

  • Emma E. Davenport

    (Wellcome Genome Campus)

  • Dirk S. Paul

    (University of Cambridge
    University of Cambridge)

  • Christopher Yau

    (University of Oxford
    University of Manchester
    Health Data Research UK)

  • Robert E. Gerszten

    (Beth Israel Deaconess Medical Center
    Broad Institute of Harvard University and Massachusetts Institute of Technology)

  • Anders Mälarstig

    (Karolinska Institutet
    Development and Medical)

  • John Danesh

    (University of Cambridge
    University of Cambridge
    University of Cambridge
    Wellcome Genome Campus and University of Cambridge)

  • Xueling Sim

    (National University of Singapore and National University Health System)

  • Claudia Langenberg

    (University of Cambridge School of Clinical Medicine
    Berlin Institute of Health (BIH) at Charité – Universitätsmedizin Berlin
    Queen Mary University of London)

  • James F. Wilson

    (University of Edinburgh
    University of Edinburgh)

  • Adam S. Butterworth

    (University of Cambridge
    University of Cambridge
    University of Cambridge
    Wellcome Genome Campus and University of Cambridge)

  • Michael Inouye

    (University of Cambridge
    University of Cambridge
    University of Cambridge
    University of Cambridge)

Abstract

The use of omic modalities to dissect the molecular underpinnings of common diseases and traits is becoming increasingly common. But multi-omic traits can be genetically predicted, which enables highly cost-effective and powerful analyses for studies that do not have multi-omics1. Here we examine a large cohort (the INTERVAL study2; 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), and use machine learning to train genetic scores for 17,227 molecular traits, including 10,521 that reach Bonferroni-adjusted significance. We evaluate the performance of genetic scores through external validation across cohorts of individuals of European, Asian and African American ancestries. In addition, we show 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 the UK Biobank3 to identify disease associations using a phenome-wide scan. We highlight a series of biological insights with regard to genetic mechanisms in metabolism and canonical pathway associations with disease; for example, JAK–STAT signalling and coronary atherosclerosis. Finally, we develop a portal ( https://www.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.

Suggested Citation

  • 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 & Carles Foguet & Åsa Johansson & Praveen, 2023. "An atlas of genetic scores to predict multi-omic traits," Nature, Nature, vol. 616(7955), pages 123-131, April.
  • Handle: RePEc:nat:nature:v:616:y:2023:i:7955:d:10.1038_s41586-023-05844-9
    DOI: 10.1038/s41586-023-05844-9
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