AI Article Synopsis

  • Genetic variation in humans significantly influences disease risk, yet many missense variants remain uncharacterized; this study develops a computational model leveraging saturation mutagenesis to predict the pathogenicity of these variants.
  • The model, called CPT-1, is trained on deep mutational scanning data from just five proteins and outperforms existing methods in clinical variant interpretation, particularly excelling in sensitivity and specificity for detecting disease-related variants.
  • By incorporating various predictive features from protein sequences and structures, the framework is versatile for future enhancements and has released predictions for missense variants in 90% of human genes, showcasing the potential of mutational scanning data in variant analysis.

Article Abstract

Background: Genetic variation in the human genome is a major determinant of individual disease risk, but the vast majority of missense variants have unknown etiological effects. Here, we present a robust learning framework for leveraging saturation mutagenesis experiments to construct accurate computational predictors of proteome-wide missense variant pathogenicity.

Results: We train cross-protein transfer (CPT) models using deep mutational scanning (DMS) data from only five proteins and achieve state-of-the-art performance on clinical variant interpretation for unseen proteins across the human proteome. We also improve predictive accuracy on DMS data from held-out proteins. High sensitivity is crucial for clinical applications and our model CPT-1 particularly excels in this regime. For instance, at 95% sensitivity of detecting human disease variants annotated in ClinVar, CPT-1 improves specificity to 68%, from 27% for ESM-1v and 55% for EVE. Furthermore, for genes not used to train REVEL, a supervised method widely used by clinicians, we show that CPT-1 compares favorably with REVEL. Our framework combines predictive features derived from general protein sequence models, vertebrate sequence alignments, and AlphaFold structures, and it is adaptable to the future inclusion of other sources of information. We find that vertebrate alignments, albeit rather shallow with only 100 genomes, provide a strong signal for variant pathogenicity prediction that is complementary to recent deep learning-based models trained on massive amounts of protein sequence data. We release predictions for all possible missense variants in 90% of human genes.

Conclusions: Our results demonstrate the utility of mutational scanning data for learning properties of variants that transfer to unseen proteins.

Download full-text PDF

Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10408151PMC
http://dx.doi.org/10.1186/s13059-023-03024-6DOI Listing

Publication Analysis

Top Keywords

cross-protein transfer
8
missense variants
8
mutational scanning
8
dms data
8
unseen proteins
8
protein sequence
8
transfer learning
4
learning improves
4
improves disease
4
variant
4

Similar Publications

Article Synopsis
  • Genetic variation in humans significantly influences disease risk, yet many missense variants remain uncharacterized; this study develops a computational model leveraging saturation mutagenesis to predict the pathogenicity of these variants.
  • The model, called CPT-1, is trained on deep mutational scanning data from just five proteins and outperforms existing methods in clinical variant interpretation, particularly excelling in sensitivity and specificity for detecting disease-related variants.
  • By incorporating various predictive features from protein sequences and structures, the framework is versatile for future enhancements and has released predictions for missense variants in 90% of human genes, showcasing the potential of mutational scanning data in variant analysis.
View Article and Find Full Text PDF

Want AI Summaries of new PubMed Abstracts delivered to your In-box?

Enter search terms and have AI summaries delivered each week - change queries or unsubscribe any time!