Abstract
Hydrogen atom transfer (HAT) reactions are important in many biological systems. As these reactions are hard to observe experimentally, it is of high interest to shed light on them using simulations. Here, we present a machine learning model based on graph neural networks for the prediction of energy barriers of HAT reactions in proteins. As input, the model uses exclusively non-optimized structures as obtained from classical simulations. It was trained on more than 17,000 energy barriers calculated using hybrid density functional theory. We built and evaluated the model in the context of HAT in collagen, but we show that the same workflow can easily be applied to HAT reactions in other biological or synthetic polymers. We obtain for relevant reactions (small reaction distances) a model with good predictive power (R2 ∼ 0.9 and mean absolute error of < 3 kcal/mol). As the inference speed is high, this model enables evaluations of dozens of chemical situations within seconds. When combined with molecular dynamics in a kinetic Monte-Carlo scheme, the model paves the way toward reactive simulations.
Supplementary materials
Title
Substituting density functional theory in reaction barrier calculations for hydrogen atom transfer in proteins
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Supplementary Information
Details on structure generation and used software.
Supplementary figures.
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Supplementary weblinks
Title
Barrier GNN for HAT
Description
Trained models for predicting HAT energy barriers and example code for loading the models.
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Substituting density functional theory in reaction barrier calculations for hydrogen atom transfer in proteins[data]
Description
Structures and energy barriers of HAT in collagen
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