TY - JOUR
T1 - HEPOM
T2 - Using Graph Neural Networks for the Accelerated Predictions of Hydrolysis Free Energies in Different pH Conditions
AU - Guha, Rishabh D.
AU - Vargas, Santiago
AU - Spotte-Smith, Evan Walter Clark
AU - Epstein, Alexander Rizzolo
AU - Venetos, Maxwell
AU - Kingsbury, Ryan
AU - Wen, Mingjian
AU - Blau, Samuel M.
AU - Persson, Kristin A.
N1 - Publisher Copyright:
© 2025 The Authors. Published by American Chemical Society.
PY - 2025/4/28
Y1 - 2025/4/28
N2 - Hydrolysis is a fundamental family of chemical reactions where water facilitates the cleavage of bonds. The process is ubiquitous in biological and chemical systems, owing to water’s remarkable versatility as a solvent. However, accurately predicting the feasibility of hydrolysis through computational techniques is a difficult task, as subtle changes in reactant structure like heteroatom substitutions or neighboring functional groups can influence the reaction outcome. Furthermore, hydrolysis is sensitive to the pH of the aqueous medium, and the same reaction can have different reaction properties at different pH conditions. In this work, we have combined reaction templates and high-throughput ab initio calculations to construct a diverse data set of hydrolysis free energies. The developed framework automatically identifies reaction centers, generates hydrolysis products, and utilizes a trained graph neural network (GNN) model to predict ΔG values for all potential hydrolysis reactions in a given molecule. The long-term goal of the work is to develop a data-driven, computational tool for high-throughput screening of pH-specific hydrolytic stability and the rapid prediction of reaction products, which can then be applied in a wide array of applications including chemical recycling of polymers and ion-conducting membranes for clean energy generation and storage.
AB - Hydrolysis is a fundamental family of chemical reactions where water facilitates the cleavage of bonds. The process is ubiquitous in biological and chemical systems, owing to water’s remarkable versatility as a solvent. However, accurately predicting the feasibility of hydrolysis through computational techniques is a difficult task, as subtle changes in reactant structure like heteroatom substitutions or neighboring functional groups can influence the reaction outcome. Furthermore, hydrolysis is sensitive to the pH of the aqueous medium, and the same reaction can have different reaction properties at different pH conditions. In this work, we have combined reaction templates and high-throughput ab initio calculations to construct a diverse data set of hydrolysis free energies. The developed framework automatically identifies reaction centers, generates hydrolysis products, and utilizes a trained graph neural network (GNN) model to predict ΔG values for all potential hydrolysis reactions in a given molecule. The long-term goal of the work is to develop a data-driven, computational tool for high-throughput screening of pH-specific hydrolytic stability and the rapid prediction of reaction products, which can then be applied in a wide array of applications including chemical recycling of polymers and ion-conducting membranes for clean energy generation and storage.
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U2 - 10.1021/acs.jcim.4c02443
DO - 10.1021/acs.jcim.4c02443
M3 - Article
C2 - 40183476
AN - SCOPUS:105003947850
SN - 1549-9596
VL - 65
SP - 3963
EP - 3975
JO - Journal of Chemical Information and Modeling
JF - Journal of Chemical Information and Modeling
IS - 8
ER -