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Quantifying constraint in the human mitochondrial genome

Author

Listed:
  • Nicole J. Lake

    (Yale School of Medicine
    Royal Children’s Hospital)

  • Kaiyue Ma

    (Yale School of Medicine)

  • Wei Liu

    (Yale University)

  • Stephanie L. Battle

    (Johns Hopkins University School of Medicine
    Bowie State University)

  • Kristen M. Laricchia

    (Broad Institute of MIT and Harvard
    Massachusetts General Hospital)

  • Grace Tiao

    (Broad Institute of MIT and Harvard
    Massachusetts General Hospital)

  • Daniela Puiu

    (Johns Hopkins University)

  • Kenneth K. Ng

    (Yale School of Medicine)

  • Justin Cohen

    (Yale School of Medicine)

  • Alison G. Compton

    (Royal Children’s Hospital
    University of Melbourne
    Royal Children’s Hospital)

  • Shannon Cowie

    (Royal Children’s Hospital)

  • John Christodoulou

    (Royal Children’s Hospital
    University of Melbourne
    Royal Children’s Hospital)

  • David R. Thorburn

    (Royal Children’s Hospital
    University of Melbourne
    Royal Children’s Hospital)

  • Hongyu Zhao

    (Yale School of Medicine
    Yale University
    Yale School of Public Health)

  • Dan E. Arking

    (Johns Hopkins University School of Medicine)

  • Shamil R. Sunyaev

    (Broad Institute of MIT and Harvard
    Harvard Medical School
    Brigham and Women’s Hospital and Harvard Medical School)

  • Monkol Lek

    (Yale School of Medicine)

Abstract

Mitochondrial DNA (mtDNA) has an important yet often overlooked role in health and disease. Constraint models quantify the removal of deleterious variation from the population by selection and represent powerful tools for identifying genetic variation that underlies human phenotypes1–4. However, nuclear constraint models are not applicable to mtDNA, owing to its distinct features. Here we describe the development of a mitochondrial genome constraint model and its application to the Genome Aggregation Database (gnomAD), a large-scale population dataset that reports mtDNA variation across 56,434 human participants5. Specifically, we analyse constraint by comparing the observed variation in gnomAD to that expected under neutrality, which was calculated using a mtDNA mutational model and observed maximum heteroplasmy-level data. Our results highlight strong depletion of expected variation, which suggests that many deleterious mtDNA variants remain undetected. To aid their discovery, we compute constraint metrics for every mitochondrial protein, tRNA and rRNA gene, which revealed a range of intolerance to variation. We further characterize the most constrained regions within genes through regional constraint and identify the most constrained sites within the entire mitochondrial genome through local constraint, which showed enrichment of pathogenic variation. Constraint also clustered in three-dimensional structures, which provided insight into functionally important domains and their disease relevance. Notably, we identify constraint at often overlooked sites, including in rRNA and noncoding regions. Last, we demonstrate that these metrics can improve the discovery of deleterious variation that underlies rare and common phenotypes.

Suggested Citation

  • Nicole J. Lake & Kaiyue Ma & Wei Liu & Stephanie L. Battle & Kristen M. Laricchia & Grace Tiao & Daniela Puiu & Kenneth K. Ng & Justin Cohen & Alison G. Compton & Shannon Cowie & John Christodoulou & , 2024. "Quantifying constraint in the human mitochondrial genome," Nature, Nature, vol. 635(8038), pages 390-397, November.
  • Handle: RePEc:nat:nature:v:635:y:2024:i:8038:d:10.1038_s41586-024-08048-x
    DOI: 10.1038/s41586-024-08048-x
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    Cited by:

    1. Yun Soo Hong & Sergiu Pasca & Wen Shi & Daniela Puiu & Nicole J. Lake & Monkol Lek & Meng Ru & Megan L. Grove & Anna Prizment & Corinne E. Joshu & Elizabeth A. Platz & Eliseo Guallar & Dan E. Arking &, 2024. "Mitochondrial heteroplasmy improves risk prediction for myeloid neoplasms," Nature Communications, Nature, vol. 15(1), pages 1-15, December.

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