Predicting functional effects of ion channel variants using new phenotypic machine learning methods

PLoS Comput Biol. 2023 Mar 6;19(3):e1010959. doi: 10.1371/journal.pcbi.1010959. eCollection 2023 Mar.

Abstract

Missense variants in genes encoding ion channels are associated with a spectrum of severe diseases. Variant effects on biophysical function correlate with clinical features and can be categorized as gain- or loss-of-function. This information enables a timely diagnosis, facilitates precision therapy, and guides prognosis. Functional characterization presents a bottleneck in translational medicine. Machine learning models may be able to rapidly generate supporting evidence by predicting variant functional effects. Here, we describe a multi-task multi-kernel learning framework capable of harmonizing functional results and structural information with clinical phenotypes. This novel approach extends the human phenotype ontology towards kernel-based supervised machine learning. Our gain- or loss-of-function classifier achieves high performance (mean accuracy 0.853 SD 0.016, mean AU-ROC 0.912 SD 0.025), outperforming both conventional baseline and state-of-the-art methods. Performance is robust across different phenotypic similarity measures and largely insensitive to phenotypic noise or sparsity. Localized multi-kernel learning offered biological insight and interpretability by highlighting channels with implicit genotype-phenotype correlations or latent task similarity for downstream analysis.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Genetic Association Studies
  • Humans
  • Ion Channels* / genetics
  • Machine Learning*
  • Phenotype
  • Supervised Machine Learning

Substances

  • Ion Channels

Grants and funding

This work was supported by intramural funding of the Medical Faculty, University of Tuebingen (PATE F.1315137.1 to CB), the Federal Ministry for Education and Research (Treat-ION, 01GM1907A and 01GM2210A to UBSH and HL), the German Research Foundation (Research Unit FOR-2715, Le1030/16-2 to HL, and He8155/1-2 to UBSH), as well as the German Federal Ministry of Education and Research (BMBF): Tübingen AI Center, FKZ: 01IS18039A and the DFG Cluster of Excellence “Machine Learning – New Perspectives for Science”, EXC 2064/1, project number 390727645 (NP). The funders had no role in study design, data collection, data analysis or interpretation, and decision to prepare or publish the manuscript.