Improved pathogenicity prediction for rare human missense variants

The success of personalized genomic medicine depends on our ability to assess the pathogenicity of rare human variants, including the important class of missense variation. There are many challenges in training accurate computational systems, e.g., in finding the balance between quantity, quality, a...

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Veröffentlicht in:American journal of human genetics 2021-10, Vol.108 (10), p.1891-1906
Hauptverfasser: Wu, Yingzhou, Liu, Hanqing, Li, Roujia, Sun, Song, Weile, Jochen, Roth, Frederick P.
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Sprache:eng
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Zusammenfassung:The success of personalized genomic medicine depends on our ability to assess the pathogenicity of rare human variants, including the important class of missense variation. There are many challenges in training accurate computational systems, e.g., in finding the balance between quantity, quality, and bias in the variant sets used as training examples and avoiding predictive features that can accentuate the effects of bias. Here, we describe VARITY, which judiciously exploits a larger reservoir of training examples with uncertain accuracy and representativity. To limit circularity and bias, VARITY excludes features informed by variant annotation and protein identity. To provide a rationale for each prediction, we quantified the contribution of features and feature combinations to the pathogenicity inference of each variant. VARITY outperformed all previous computational methods evaluated, identifying at least 10% more pathogenic variants at thresholds achieving high (90% precision) stringency.
ISSN:0002-9297
1537-6605
DOI:10.1016/j.ajhg.2021.08.012