Transferable Learning of Reaction Pathways from Geometric Priors
Transferable Learning of Reaction Pathways from Geometric Priors
Identifying minimum-energy paths (MEPs) is crucial for understanding chemical reaction mechanisms but remains computationally demanding. We introduce MEPIN, a scalable machine-learning method for efficiently predicting MEPs from reactant and product configurations, without relying on transition-state geometries or pre-optimized reaction paths during training. The task is defined as predicting deviations from geometric interpolations along reaction coordinates. We address this task with a continuous reaction path model based on a symmetry-broken equivariant neural network that generates a flexible number of intermediate structures. The model is trained using an energy-based objective, with efficiency enhanced by incorporating geometric priors from geodesic interpolation as initial interpolations or pre-training objectives. Our approach generalizes across diverse chemical reactions and achieves accurate alignment with reference intrinsic reaction coordinates, as demonstrated on various small molecule reactions and [3+2] cycloadditions. Our method enables the exploration of large chemical reaction spaces with efficient, data-driven predictions of reaction pathways.
Juno Nam、Miguel Steiner、Max Misterka、Soojung Yang、Avni Singhal、Rafael Gómez-Bombarelli
化学
Juno Nam,Miguel Steiner,Max Misterka,Soojung Yang,Avni Singhal,Rafael Gómez-Bombarelli.Transferable Learning of Reaction Pathways from Geometric Priors[EB/OL].(2025-04-21)[2025-05-14].https://arxiv.org/abs/2504.15370.点此复制
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