Combining Structural Modeling with Ensemble Machine Learning to Accurately Predict Protein Fold Stability and Binding Affinity Effects upon Mutation
Open Access
- 22 September 2014
- journal article
- research article
- Published by Public Library of Science (PLoS) in PLOS ONE
- Vol. 9 (9) , e107353
- https://doi.org/10.1371/journal.pone.0107353
Abstract
Advances in sequencing have led to a rapid accumulation of mutations, some of which are associated with diseases. However, to draw mechanistic conclusions, a biochemical understanding of these mutations is necessary. For coding mutations, accurate prediction of significant changes in either the stability of proteins or their affinity to their binding partners is required. Traditional methods have used semi-empirical force fields, while newer methods employ machine learning of sequence and structural features. Here, we show how combining both of these approaches leads to a marked boost in accuracy. We introduce ELASPIC, a novel ensemble machine learning approach that is able to predict stability effects upon mutation in both, domain cores and domain-domain interfaces. We combine semi-empirical energy terms, sequence conservation, and a wide variety of molecular details with a Stochastic Gradient Boosting of Decision Trees (SGB-DT) algorithm. The accuracy of our predictions surpasses existing methods by a considerable margin, achieving correlation coefficients of 0.77 for stability, and 0.75 for affinity predictions. Notably, we integrated homology modeling to enable proteome-wide prediction and show that accurate prediction on modeled structures is possible. Lastly, ELASPIC showed significant differences between various types of disease-associated mutations, as well as between disease and common neutral mutations. Unlike pure sequence-based prediction methods that try to predict phenotypic effects of mutations, our predictions unravel the molecular details governing the protein instability, and help us better understand the molecular causes of diseases.Keywords
This publication has 77 references indexed in Scilit:
- An integrated map of genetic variation from 1,092 human genomesNature, 2012
- Mapping copy number variation by population-scale genome sequencingNature, 2011
- Network medicine: a network-based approach to human diseaseNature Reviews Genetics, 2010
- A map of human genome variation from population-scale sequencingNature, 2010
- A comprehensive catalogue of somatic mutations from a human cancer genomeNature, 2009
- Fast and accurate predictions of protein stability changes upon mutations using statistical potentials and neural networks: PoPMuSiC-2.0Bioinformatics, 2009
- The cancer genomeNature, 2009
- Modeling Effects of Human Single Nucleotide Polymorphisms on Protein-Protein InteractionsBiophysical Journal, 2009
- Edgetic perturbation models of human inherited disordersMolecular Systems Biology, 2009
- Cancer driver mutations in protein kinase genesCancer Letters, 2008