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HEPOM:利用图神经网络加速预测不同pH条件下的水解自由能

HEPOM: Using Graph Neural Networks for the Accelerated Predictions of Hydrolysis Free Energies in Different pH Conditions.

作者信息

Guha Rishabh D, Vargas Santiago, Spotte-Smith Evan Walter Clark, Epstein Alexander Rizzolo, Venetos Maxwell, Kingsbury Ryan, Wen Mingjian, Blau Samuel M, Persson Kristin A

机构信息

Materials Science Division, Lawrence Berkeley National Laboratory, 1 Cyclotron Road, Berkeley, California 94720, United States.

Chemical Sciences Division, Lawrence Berkeley National Laboratory, 1 Cyclotron Road, Berkeley, California 94720, United States.

出版信息

J Chem Inf Model. 2025 Apr 28;65(8):3963-3975. doi: 10.1021/acs.jcim.4c02443. Epub 2025 Apr 4.

Abstract

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 Δ 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.

摘要

水解是一类基本的化学反应,其中水促进键的断裂。由于水作为溶剂具有非凡的通用性,该过程在生物和化学系统中无处不在。然而,通过计算技术准确预测水解的可行性是一项艰巨的任务,因为反应物结构的细微变化,如杂原子取代或相邻官能团,会影响反应结果。此外,水解对水介质的pH值敏感,相同的反应在不同的pH条件下可能具有不同的反应特性。在这项工作中,我们结合了反应模板和高通量从头算计算,构建了一个多样化的水解自由能数据集。所开发的框架自动识别反应中心,生成水解产物,并利用经过训练的图神经网络(GNN)模型预测给定分子中所有潜在水解反应的Δ值。这项工作的长期目标是开发一种数据驱动的计算工具,用于高通量筛选特定pH值下的水解稳定性并快速预测反应产物,然后可将其应用于广泛的应用中,包括聚合物的化学回收以及用于清洁能源生成和存储的离子传导膜。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ca05/12042266/8e19a7f687b4/ci4c02443_0001.jpg

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