Comparison of Literature Mining Tools for Variant Classification: Through the Lens of Fifty RYR1 Variants

Zara Wermers,Seeley Yoo,Bailey Radenbaugh, Amber Douglass, Leslie G. Biesecker,Jennifer J. Johnston

Genetics in medicine : official journal of the American College of Medical Genetics(2024)

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摘要
PURPOSE:The American College of Medical Genetics and Genomics and the Association for Molecular Pathology have outlined a schema that allows for systematic classification of variant pathogenicity. While gnomAD is generally accepted as a reliable source of population frequency data and ClinGen has provided guidance on the utility of specific bioinformatic predictors, there is not a consensus source for identifying publications relevant to a variant. Multiple tools are available to aid in the identification of relevant variant literature including manually curated databases and literature search engines. We set out to determine the utility of four literature mining tools used for ascertainment to inform the discussion of the use of these tools. METHODS:Four literature mining tools including the Human Gene Mutation Database, Mastermind®, ClinVar, and LitVar 2.0 were used to identify relevant variant literature for 50 RYR1 variants. Sensitivity and precision were determined for each tool. RESULTS:Sensitivity among the four tools ranged from 0.332 to 0.687. Precision ranged from 0.389 to 0.906. No single tool retrieved all relevant publications. CONCLUSION:At the current time, the use of multiple tools is necessary to completely identify the literature relevant to curate a variant.
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关键词
biocuration,literature mining,ACMG guidelines,variant classification,RYR1
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