Journal article
DDMut-PPI: Predicting effects of mutations on protein-protein interactions using graph-based deep learning
Y Zhou, Y Myung, CHM Rodrigues, DB Ascher
Nucleic Acids Research | OXFORD UNIV PRESS | Published : 2024
DOI: 10.1093/nar/gkae412
Abstract
Protein-protein interactions (PPIs) play a vital role in cellular functions and are essential for therapeutic development and understanding diseases. However, current predictive tools often struggle to balance efficiency and precision in predicting the effects of mutations on these complex interactions. To address this, we present DDMut-PPI, a deep learning model that efficiently and accurately predicts changes in PPI binding free energy upon single and multiple point mutations. Building on the robust Siamese network architecture with graph-based signatures from our prior work, DDMut, the DDMut-PPI model was enhanced with a graph convolutional network operated on the protein interaction inte..
View full abstractGrants
Awarded by State Government of Victoria
Funding Acknowledgements
Australian Government (to Y.Z.); National Health and Medical Research Council [GNT1174405 to D.B.A.]; Victorian Government (in part). Funding for open access charge: National Health and Medical Research Council.