Disease-specific variant pathogenicity prediction significantly improves variant interpretation in inherited cardiac conditions

Disease-specific variant pathogenicity prediction significantly improves variant interpretation in inherited cardiac conditions.

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Item Type: Article
Status: Published
Official URL: https://doi.org/10.1038/s41436-020-00972-3
Journal or Publication Title: Genetics in Medicine
Date: 2020
Divisions: Molecular Cardiology
Depositing User: General Admin
Identification Number: 10.1038/s41436-020-00972-3
ISSN: 1098-3600
Date Deposited: 03 Jan 2021 23:54
Abstract:

Purpose
Accurate discrimination of benign and pathogenic rare variation remains a priority for clinical genome interpretation. State-of-the-art machine learning variant prioritization tools are imprecise and ignore important parameters defining gene–disease relationships, e.g., distinct consequences of gain-of-function versus loss-of-function variants. We hypothesized that incorporating disease-specific information would improve tool performance.

Methods
We developed a disease-specific variant classifier, CardioBoost, that estimates the probability of pathogenicity for rare missense variants in inherited cardiomyopathies and arrhythmias. We assessed CardioBoost’s ability to discriminate known pathogenic from benign variants, prioritize disease-associated variants, and stratify patient outcomes.

Results
CardioBoost has high global discrimination accuracy (precision recall area under the curve [AUC] 0.91 for cardiomyopathies; 0.96 for arrhythmias), outperforming existing tools (4–24% improvement). CardioBoost obtains excellent accuracy (cardiomyopathies 90.2%; arrhythmias 91.9%) for variants classified with >90% confidence, and increases the proportion of variants classified with high confidence more than twofold compared with existing tools. Variants classified as disease-causing are associated with both disease status and clinical severity, including a 21% increased risk (95% confidence interval [CI] 11–29%) of severe adverse outcomes by age 60 in patients with hypertrophic cardiomyopathy.

Conclusions
A disease-specific variant classifier outperforms state-of-the-art genome-wide tools for rare missense variants in inherited cardiac conditions (https://www.cardiodb.org/cardioboost/), highlighting broad opportunities for improved pathogenicity prediction through disease specificity.

Creators:
Creators
Email
Zhang, Xiaolei
UNSPECIFIED
Walsh, Roddy
UNSPECIFIED
Whiffin, Nicola
UNSPECIFIED
Buchan, Rachel
UNSPECIFIED
Midwinter, William
UNSPECIFIED
Wilk, Alicja
UNSPECIFIED
Govind, Risha
UNSPECIFIED
Li, Nicholas
UNSPECIFIED
Ahmad, Mian
UNSPECIFIED
Mazzarotto, Francesco
UNSPECIFIED
Roberts, Angharad
UNSPECIFIED
Theotokis, Pantazis I.
UNSPECIFIED
Mazaika, Erica
UNSPECIFIED
Allouba, Mona
UNSPECIFIED
de Marvao, Antonio
UNSPECIFIED
Pua, Chee Jian
UNSPECIFIED
Day, Sharlene M.
UNSPECIFIED
Ashley, Euan
UNSPECIFIED
Colan, Steven D.
UNSPECIFIED
Michels, Michelle
UNSPECIFIED
Pereira, Alexandre C.
UNSPECIFIED
Jacoby, Daniel
UNSPECIFIED
Ho, Carolyn Y.
UNSPECIFIED
Olivotto, Iacopo
UNSPECIFIED
Gunnarsson, Gunnar T.
UNSPECIFIED
Jefferies, John L.
UNSPECIFIED
Semsarian, Chris
UNSPECIFIED
Ingles, Jodie
UNSPECIFIED
O’Regan, Declan P.
UNSPECIFIED
Aguib, Yasmine
UNSPECIFIED
Yacoub, Magdi H.
UNSPECIFIED
Cook, Stuart A.
UNSPECIFIED
Barton, Paul J. R.
UNSPECIFIED
Bottolo, Leonardo
UNSPECIFIED
Ware, James S.
UNSPECIFIED
Last Modified: 03 Jan 2021 23:54
URI: https://eprints.centenary.org.au/id/eprint/831

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