Enhancing Protein-Ligand Binding Affinity Predictions Using Neural Network Potentials.
Francesc Sabanés ZariquieyRaimondas GalvelisEmilio GallicchioJohn D ChoderaThomas E MarklandGianni De FabritiisPublished in: Journal of chemical information and modeling (2024)
This letter gives results on improving protein-ligand binding affinity predictions based on molecular dynamics simulations using machine learning potentials with a hybrid neural network potential and molecular mechanics methodology (NNP/MM). We compute relative binding free energies with the Alchemical Transfer Method and validate its performance against established benchmarks and find significant enhancements compared with conventional MM force fields like GAFF2.