Litcius/Paper detail

A machine learning approach based on ACMG/AMP guidelines for genomic variant classification and prioritization

Giovanna Nicora, Susanna Zucca, Ivan Limongelli, Riccardo Bellazzi, Paolo Magni

2022Scientific Reports97 citationsDOIOpen Access PDF

Abstract

Genomic variant interpretation is a critical step of the diagnostic procedure, often supported by the application of tools that may predict the damaging impact of each variant or provide a guidelines-based classification. We propose the application of Machine Learning methodologies, in particular Penalized Logistic Regression, to support variant classification and prioritization. Our approach combines ACMG/AMP guidelines for germline variant interpretation as well as variant annotation features and provides a probabilistic score of pathogenicity, thus supporting the prioritization and classification of variants that would be interpreted as uncertain by the ACMG/AMP guidelines. We compared different approaches in terms of variant prioritization and classification on different datasets, showing that our data-driven approach is able to solve more variant of uncertain significance (VUS) cases in comparison with guidelines-based approaches and in silico prediction tools.

Topics & Concepts

PrioritizationComputer scienceProbabilistic logicMachine learningArtificial intelligenceInterpretation (philosophy)In silicoLogistic regressionBiologyGeneticsProgramming languageManagement scienceGeneEconomicsGenomics and Rare DiseasesGenetic Associations and EpidemiologyGenomics and Phylogenetic Studies