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Rare variant contribution to human disease in 281,104 UK Biobank exomes

Author

Listed:
  • Quanli Wang

    (AstraZeneca)

  • Ryan S. Dhindsa

    (AstraZeneca)

  • Keren Carss

    (AstraZeneca)

  • Andrew R. Harper

    (AstraZeneca)

  • Abhishek Nag

    (AstraZeneca)

  • Ioanna Tachmazidou

    (AstraZeneca)

  • Dimitrios Vitsios

    (AstraZeneca)

  • Sri V. V. Deevi

    (AstraZeneca)

  • Alex Mackay

    (AstraZeneca)

  • Daniel Muthas

    (AstraZeneca)

  • Michael Hühn

    (AstraZeneca)

  • Susan Monkley

    (AstraZeneca)

  • Henric Olsson

    (AstraZeneca)

  • Sebastian Wasilewski

    (AstraZeneca)

  • Katherine R. Smith

    (AstraZeneca)

  • Ruth March

    (AstraZeneca)

  • Adam Platt

    (AstraZeneca)

  • Carolina Haefliger

    (AstraZeneca)

  • Slavé Petrovski

    (AstraZeneca
    University of Melbourne, Austin Health
    University of Melbourne, Austin Health)

Abstract

Genome-wide association studies have uncovered thousands of common variants associated with human disease, but the contribution of rare variants to common disease remains relatively unexplored. The UK Biobank contains detailed phenotypic data linked to medical records for approximately 500,000 participants, offering an unprecedented opportunity to evaluate the effect of rare variation on a broad collection of traits1,2. Here we study the relationships between rare protein-coding variants and 17,361 binary and 1,419 quantitative phenotypes using exome sequencing data from 269,171 UK Biobank participants of European ancestry. Gene-based collapsing analyses revealed 1,703 statistically significant gene–phenotype associations for binary traits, with a median odds ratio of 12.4. Furthermore, 83% of these associations were undetectable via single-variant association tests, emphasizing the power of gene-based collapsing analysis in the setting of high allelic heterogeneity. Gene–phenotype associations were also significantly enriched for loss-of-function-mediated traits and approved drug targets. Finally, we performed ancestry-specific and pan-ancestry collapsing analyses using exome sequencing data from 11,933 UK Biobank participants of African, East Asian or South Asian ancestry. Our results highlight a significant contribution of rare variants to common disease. Summary statistics are publicly available through an interactive portal ( http://azphewas.com/ ).

Suggested Citation

  • Quanli Wang & Ryan S. Dhindsa & Keren Carss & Andrew R. Harper & Abhishek Nag & Ioanna Tachmazidou & Dimitrios Vitsios & Sri V. V. Deevi & Alex Mackay & Daniel Muthas & Michael Hühn & Susan Monkley & , 2021. "Rare variant contribution to human disease in 281,104 UK Biobank exomes," Nature, Nature, vol. 597(7877), pages 527-532, September.
  • Handle: RePEc:nat:nature:v:597:y:2021:i:7877:d:10.1038_s41586-021-03855-y
    DOI: 10.1038/s41586-021-03855-y
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    1. Lindsay A. Rutter & Matthew J. MacKay & Henry Cope & Nathaniel J. Szewczyk & JangKeun Kim & Eliah Overbey & Braden T. Tierney & Masafumi Muratani & Ben Lamm & Daniela Bezdan & Amber M. Paul & Michael , 2024. "Protective alleles and precision healthcare in crewed spaceflight," Nature Communications, Nature, vol. 15(1), pages 1-13, December.
    2. Matthias Wuttke & Eva König & Maria-Alexandra Katsara & Holger Kirsten & Saeed Khomeijani Farahani & Alexander Teumer & Yong Li & Martin Lang & Burulca Göcmen & Cristian Pattaro & Dorothee Günzel & An, 2023. "Imputation-powered whole-exome analysis identifies genes associated with kidney function and disease in the UK Biobank," Nature Communications, Nature, vol. 14(1), pages 1-16, December.
    3. Xiaoyi Raymond Gao & Marion Chiariglione & Alexander J. Arch, 2022. "Whole-exome sequencing study identifies rare variants and genes associated with intraocular pressure and glaucoma," Nature Communications, Nature, vol. 13(1), pages 1-10, December.
    4. Alexander T. Williams & Jing Chen & Kayesha Coley & Chiara Batini & Abril Izquierdo & Richard Packer & Erik Abner & Stavroula Kanoni & David J. Shepherd & Robert C. Free & Edward J. Hollox & Nigel J. , 2023. "Genome-wide association study of thyroid-stimulating hormone highlights new genes, pathways and associations with thyroid disease," Nature Communications, Nature, vol. 14(1), pages 1-14, December.
    5. Marcin Kierczak & Nima Rafati & Julia Höglund & Hadrien Gourlé & Valeria Lo Faro & Daniel Schmitz & Weronica E. Ek & Ulf Gyllensten & Stefan Enroth & Diana Ekman & Björn Nystedt & Torgny Karlsson & Ås, 2022. "Contribution of rare whole-genome sequencing variants to plasma protein levels and the missing heritability," Nature Communications, Nature, vol. 13(1), pages 1-12, December.
    6. Chang Lu & Jan Zaucha & Rihab Gam & Hai Fang & Smithers & Matt E. Oates & Miguel Bernabe-Rubio & James Williams & Natalie Zelenka & Arun Prasad Pandurangan & Himani Tandon & Hashem Shihab & Raju Kalai, 2023. "Hypothesis-free phenotype prediction within a genetics-first framework," Nature Communications, Nature, vol. 14(1), pages 1-14, December.
    7. Yunfeng Huang & Dora Bodnar & Chia-Yen Chen & Gabriela Sanchez-Andrade & Mark Sanderson & Jun Shi & Katherine G. Meilleur & Matthew E. Hurles & Sebastian S. Gerety & Ellen A. Tsai & Heiko Runz, 2023. "Rare genetic variants impact muscle strength," Nature Communications, Nature, vol. 14(1), pages 1-8, December.
    8. Sabrina Katrin Henne & Rana Aldisi & Sugirthan Sivalingam & Lara Maleen Hochfeld & Oleg Borisov & Peter Michael Krawitz & Carlo Maj & Markus Maria Nöthen & Stefanie Heilmann-Heimbach, 2023. "Analysis of 72,469 UK Biobank exomes links rare variants to male-pattern hair loss," Nature Communications, Nature, vol. 14(1), pages 1-13, December.
    9. Ozvan Bocher & Cristen J. Willer & Eleftheria Zeggini, 2023. "Unravelling the genetic architecture of human complex traits through whole genome sequencing," Nature Communications, Nature, vol. 14(1), pages 1-4, December.
    10. Sock Hoai Chan & Yasmin Bylstra & Jing Xian Teo & Jyn Ling Kuan & Nicolas Bertin & Mar Gonzalez-Porta & Maxime Hebrard & Roberto Tirado-Magallanes & Joanna Hui Juan Tan & Justin Jeyakani & Zhihui Li &, 2022. "Analysis of clinically relevant variants from ancestrally diverse Asian genomes," Nature Communications, Nature, vol. 13(1), pages 1-15, December.
    11. Mischan Vali-Pour & Solip Park & Jose Espinosa-Carrasco & Daniel Ortiz-Martínez & Ben Lehner & Fran Supek, 2022. "The impact of rare germline variants on human somatic mutation processes," Nature Communications, Nature, vol. 13(1), pages 1-21, December.
    12. Mihail Halachev & Viktoria-Eleni Gountouna & Alison Meynert & Gannie Tzoneva & Alan R. Shuldiner & Colin A. Semple & James F. Wilson, 2024. "Regionally enriched rare deleterious exonic variants in the UK and Ireland," Nature Communications, Nature, vol. 15(1), pages 1-14, December.
    13. Remo Monti & Pia Rautenstrauch & Mahsa Ghanbari & Alva Rani James & Matthias Kirchler & Uwe Ohler & Stefan Konigorski & Christoph Lippert, 2022. "Identifying interpretable gene-biomarker associations with functionally informed kernel-based tests in 190,000 exomes," Nature Communications, Nature, vol. 13(1), pages 1-16, December.
    14. Nazia Pathan & Wei Q. Deng & Matteo Di Scipio & Mohammad Khan & Shihong Mao & Robert W. Morton & Ricky Lali & Marie Pigeyre & Michael R. Chong & Guillaume Paré, 2024. "A method to estimate the contribution of rare coding variants to complex trait heritability," Nature Communications, Nature, vol. 15(1), pages 1-16, December.
    15. Matthew Tegtmeyer & Jatin Arora & Samira Asgari & Beth A. Cimini & Ajay Nadig & Emily Peirent & Dhara Liyanage & Gregory P. Way & Erin Weisbart & Aparna Nathan & Tiffany Amariuta & Kevin Eggan & Marzi, 2024. "High-dimensional phenotyping to define the genetic basis of cellular morphology," Nature Communications, Nature, vol. 15(1), pages 1-12, December.

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