GGL-PPI: Geometric Graph Learning to Predict Mutation-Induced Binding Free Energy Changes
Md Masud Rana, Duc Duy Nguyen

TL;DR
GGL-PPI is a novel geometric graph learning method that accurately predicts mutation-induced binding free energy changes in protein-protein interactions, aiding molecular understanding and drug discovery.
Contribution
It introduces a new approach combining geometric graph learning with machine learning for improved prediction of mutation effects on PPIs.
Findings
Superior performance on multiple datasets
Accurate predictions for direct and reverse mutations
Potential to assist drug design and molecular analysis
Abstract
Protein-protein interactions (PPIs) are critical for various biological processes, and understanding their dynamics is essential for decoding molecular mechanisms and advancing fields such as cancer research and drug discovery. Mutations in PPIs can disrupt protein binding affinity and lead to functional changes and disease. Predicting the impact of mutations on binding affinity is valuable but experimentally challenging. Computational methods, including physics-based and machine learning-based approaches, have been developed to address this challenge. Machine learning-based methods, fueled by extensive PPI datasets such as Ab-Bind, PINT, SKEMPI, and others, have shown promise in predicting binding affinity changes. However, accurate predictions and generalization of these models across different datasets remain challenging. Geometric graph learning has emerged as a powerful approach,…
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Taxonomy
TopicsComputational Drug Discovery Methods · Bioinformatics and Genomic Networks · Protein Structure and Dynamics
