4.7 Article

Chemistrees: Data-Driven Identification of Reaction Pathways via Machine Learning

Journal

JOURNAL OF CHEMICAL THEORY AND COMPUTATION
Volume 17, Issue 10, Pages 6193-6202

Publisher

AMER CHEMICAL SOC
DOI: 10.1021/acs.jctc.1c00458

Keywords

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Funding

  1. Project HPC-EUROPA3 [INFRAIA-2016-1-730897]
  2. EC Research Innovation Action under the H2020 Programme
  3. Department of Chemistry at the University of Helsinki
  4. Academy of Finland [294752]
  5. Jane and Aatos Erkko Foundation

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This study proposes a method to analyze molecular dynamics output using a supervised machine learning algorithm - decision tree, and successfully applies it to analyze proton exchange reactions. The data-driven algorithm can identify the predominant geometric features correlated with trajectories transitioning between states, without the bias of human chemical intuition.
We propose to analyze molecular dynamics (MD) output via a supervised machine learning (ML) algorithm, the decision tree. The approach aims to identify the predominant geometric features which correlate with trajectories that transition between two arbitrarily defined states. The data-driven algorithm aims to identify these features without the bias of human chemical intuition. We demonstrate the method by analyzing the proton exchange reactions in formic acid solvated in small water clusters. The simulations were performed with ab initio MD combined with a method to efficiently sample the rare event, path sampling. Our ML analysis identified relevant geometric variables involved in the proton transfer reaction and how they may change as the number of solvating water molecules changes.

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