4.7 Article

StrVCTVRE: A supervised learning method to predict the pathogenicity of human genome structural variants

Journal

AMERICAN JOURNAL OF HUMAN GENETICS
Volume 109, Issue 2, Pages 195-209

Publisher

CELL PRESS
DOI: 10.1016/j.ajhg.2021.12.007

Keywords

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Funding

  1. National Science Foundation Graduate Research Fellowship [DGE 1752814]
  2. NIH [P01 AI138962]
  3. Tata Consultancy Services
  4. Wellcome Trust
  5. Chan Zuckerberg Biohub
  6. National Human Genome Research Institute [UM1 HG008900, R01 HG009141]
  7. National Eye Institute [UM1 HG008900]
  8. National Heart, Lung, and Blood Institute [UM1 HG008900]

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This article introduces a method called StrVCTVRE to distinguish between pathogenic and benign structural variants (SVs). By integrating multiple features and using a rare training set for classification, this method reduces about half of the SVs while maintaining a high sensitivity. It provides support for further investigation into unresolved cases and understanding new mechanisms of disease.
Whole-genome sequencing resolves many clinical cases where standard diagnostic methods have failed. However, at least half of these cases remain unresolved after whole-genome sequencing. Structural variants (SVs; genomic variants larger than 50 base pairs) of uncertain significance are the genetic cause of a portion of these unresolved cases. As sequencing methods using long or linked reads become more accessible and SV detection algorithms improve, clinicians and researchers are gaining access to thousands of reliable SVs of unknown disease relevance. Methods to predict the pathogenicity of these SVs are required to realize the full diagnostic potential of long-read sequencing. To address this emerging need, we developed StrVCTVRE to distinguish pathogenic SVs from benign SVs that overlap exons. In a random forest classifier, we integrated features that capture gene importance, coding region, conservation, expression, and exon structure. We found that features such as expression and conservation are important but are absent from SV classification guidelines. We leveraged multiple resources to construct a size-matched training set of rare, putatively benign and pathogenic SVs. StrVCTVRE performs accurately across a wide SV size range on independent test sets, which will allow clinicians and researchers to eliminate about half of SVs from consideration while retaining a 90% sensitivity. We anticipate clinicians and researchers will use StrVCTVRE to prioritize SVs in probands where no SV is immediately compelling, empowering deeper investigation into novel SVs to resolve cases and understand new mechanisms of disease. StrVCTVRE runs rapidly and is publicly available.

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