计算机科学
生成语法
生成模型
扩散
过渡(遗传学)
过渡状态
生物系统
人工智能
统计物理学
算法
机器学习
化学
物理
热力学
催化作用
生物
基因
生物化学
作者
Seong-Hwan Kim,Jeheon Woo,Woo Youn Kim
标识
DOI:10.1038/s41467-023-44629-6
摘要
Abstract The exploration of transition state (TS) geometries is crucial for elucidating chemical reaction mechanisms and modeling their kinetics. Recently, machine learning (ML) models have shown remarkable performance for prediction of TS geometries. However, they require 3D conformations of reactants and products often with their appropriate orientations as input, which demands substantial efforts and computational cost. Here, we propose a generative approach based on the stochastic diffusion method, namely TSDiff, for prediction of TS geometries just from 2D molecular graphs. TSDiff outperforms the existing ML models with 3D geometries in terms of both accuracy and efficiency. Moreover, it enables to sample various TS conformations, because it learns the distribution of TS geometries for diverse reactions in training. Thus, TSDiff finds more favorable reaction pathways with lower barrier heights than those in the reference database. These results demonstrate that TSDiff shows promising potential for an efficient and reliable TS exploration.
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