Litcius/Paper detail

Enhancing missense variant pathogenicity prediction with protein language models using VariPred

Weining Lin, Jude Wells, Zeyuan Wang, Christine Orengo, Andrew C.R. Martin

2024Scientific Reports22 citationsDOIOpen Access PDF

Abstract

Computational approaches for predicting the pathogenicity of genetic variants have advanced in recent years. These methods enable researchers to determine the possible clinical impact of rare and novel variants. Historically these prediction methods used hand-crafted features based on structural, evolutionary, or physiochemical properties of the variant. In this study we propose a novel framework that leverages the power of pre-trained protein language models to predict variant pathogenicity. We show that our approach VariPred (Variant impact Predictor) outperforms current state-of-the-art methods by using an end-to-end model that only requires the protein sequence as input. Using one of the best-performing protein language models (ESM-1b), we establish a robust classifier that requires no calculation of structural features or multiple sequence alignments. We compare the performance of VariPred with other representative models including 3Cnet, Polyphen-2, REVEL, MetaLR, FATHMM and ESM variant. VariPred performs as well as, or in most cases better than these other predictors using six variant impact prediction benchmarks despite requiring only sequence data and no pre-processing of the data.

Topics & Concepts

Computer sciencePathogenicityClassifier (UML)Missense mutationMachine learningSequence (biology)Artificial intelligenceProtein sequencingProtein structure predictionData miningMutationProtein structureGeneticsBiologyPeptide sequenceGeneBiochemistryMicrobiologyGenomics and Rare DiseasesGenomics and Phylogenetic StudiesBiomedical Text Mining and Ontologies