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AMARO: All Heavy-Atom Transferable Neural Network Potentials of Protein Thermodynamics

Journal of Chemical Theory and Computation (JCTC), 2024
Main:13 Pages
10 Figures
Bibliography:1 Pages
8 Tables
Appendix:8 Pages
Abstract

All-atom molecular simulations offer detailed insights into macromolecular phenomena, but their substantial computational cost hinders the exploration of complex biological processes. We introduce Advanced Machine-learning Atomic Representation Omni-force-field (AMARO), a new neural network potential (NNP) that combines an O(3)-equivariant message-passing neural network architecture, TensorNet, with a coarse-graining map that excludes hydrogen atoms. AMARO demonstrates the feasibility of training coarser NNP, without prior energy terms, to run stable protein dynamics with scalability and generalization capabilities.

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