Exome sequencing and analysis of 454,787 UK Biobank participants
Author:
Backman Joshua D., Li Alexander H., Marcketta Anthony, Sun Dylan, Mbatchou Joelle, Kessler Michael D., Benner Christian, Liu Daren, Locke Adam E.ORCID, Balasubramanian Suganthi, Yadav Ashish, Banerjee Nilanjana, Gillies Christopher E., Damask Amy, Liu Simon, Bai Xiaodong, Hawes Alicia, Maxwell Evan, Gurski Lauren, Watanabe KyokoORCID, Kosmicki Jack A., Rajagopal Veera, Mighty Jason, Jones Marcus, Mitnaul Lyndon, Stahl Eli, Coppola GiovanniORCID, Jorgenson EricORCID, Habegger Lukas, Salerno William J., Shuldiner Alan R., Lotta Luca A., Overton John D., Cantor Michael N.ORCID, Reid Jeffrey G.ORCID, Yancopoulos George, Kang Hyun M., Marchini JonathanORCID, Baras ArisORCID, Abecasis Gonçalo R., Ferreira Manuel A. R.ORCID, ,
Abstract
AbstractA major goal in human genetics is to use natural variation to understand the phenotypic consequences of altering each protein-coding gene in the genome. Here we used exome sequencing1 to explore protein-altering variants and their consequences in 454,787 participants in the UK Biobank study2. We identified 12 million coding variants, including around 1 million loss-of-function and around 1.8 million deleterious missense variants. When these were tested for association with 3,994 health-related traits, we found 564 genes with trait associations at P ≤ 2.18 × 10−11. Rare variant associations were enriched in loci from genome-wide association studies (GWAS), but most (91%) were independent of common variant signals. We discovered several risk-increasing associations with traits related to liver disease, eye disease and cancer, among others, as well as risk-lowering associations for hypertension (SLC9A3R2), diabetes (MAP3K15, FAM234A) and asthma (SLC27A3). Six genes were associated with brain imaging phenotypes, including two involved in neural development (GBE1, PLD1). Of the signals available and powered for replication in an independent cohort, 81% were confirmed; furthermore, association signals were generally consistent across individuals of European, Asian and African ancestry. We illustrate the ability of exome sequencing to identify gene–trait associations, elucidate gene function and pinpoint effector genes that underlie GWAS signals at scale.
Publisher
Springer Science and Business Media LLC
Subject
Multidisciplinary
Reference48 articles.
1. Szustakowski, J. D. et al. Advancing human genetics research and drug discovery through exome sequencing of the UK Biobank. Nat. Genet. 53, 942–948 (2021). 2. Bycroft, C. et al. The UK Biobank resource with deep phenotyping and genomic data. Nature 562, 203–209 (2018). 3. Van Hout, C. V. et al. Exome sequencing and characterization of 49,960 individuals in the UK Biobank. Nature 586, 749–756 (2020). 4. Taliun, D. et al. Sequencing of 53,831 diverse genomes from the NHLBI TOPMed Program. Nature 590, 290–299 (2021). 5. Karczewski, K. J. et al. The mutational constraint spectrum quantified from variation in 141,456 humans. Nature 581, 434–443 (2020).
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