2021
DOI: 10.26434/chemrxiv.14370962.v2
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Building Machine Learning Force Fields of Proteins with Fragment-Based Approach and Transfer Learning

Abstract: <p>Molecular dynamic (MD) simulation plays an essential role in understanding protein functions at atomic level. At present, MD simulations on proteins are mainly based on classical force fields. However, the accuracy of classical force fields for proteins is still insufficient for accurate descriptions of their structures and dynamical properties. Here we present a novel protocol to construct machine learning force field (MLFF) for a given protein with full quantum mechanics (QM) accuracy. In this proto… Show more

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