基于图的反应势垒高度预测与跃迁态的动态预测。

IF 6.2 Q1 CHEMISTRY, MULTIDISCIPLINARY
Johannes Karwounopoulos, Jasper De Landsheere, Leonard Galustian, Tobias Jechtl, Esther Heid
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引用次数: 0

摘要

准确预测反应垒高度对理解化学反应性和指导反应设计至关重要。机器学习(ML)模型的最新进展,特别是图神经网络,在捕获复杂的化学相互作用方面显示出巨大的希望。在这里,有向信息传递神经网络(D-MPNNs)在反应物和产物结构的图形叠加上被证明为反应性质预测提供了有希望的准确性。它们完全依赖于分子图的变化作为输入,因此在推理过程中不需要额外的信息。然而,反应势垒高度本质上取决于反应物、过渡态和产物的构象,而这些在标准的d - mpnn中没有考虑到。在这项工作中,我们提出了一种混合方法,将d - mpnn预测势垒高度的能力与生成模型预测有机反应的动态过渡态几何形状相结合。因此,生成的模型只需要二维图形信息作为输入,而内部利用三维信息来提高准确性。我们进一步评估了附加物理特征对反应垒高度的D-MPNN模型的影响,发现附加特征只略微提高了预测精度,对小数据集特别有帮助。相比之下,我们的混合图/坐标方法减少了两个研究数据集RDB7和RGD1的屏障高度预测误差。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Graph-based prediction of reaction barrier heights with on-the-fly prediction of transition states.

The accurate prediction of reaction barrier heights is crucial for understanding chemical reactivity and guiding reaction design. Recent advances in machine learning (ML) models, particularly graph neural networks, have shown great promise in capturing complex chemical interactions. Here, directed message-passing neural networks (D-MPNNs) on graph overlays of the reactant and product structures were shown to provide promising accuracies for reaction property prediction. They rely solely on molecular graph changes as input and thus require no additional information during inference. However, the reaction barrier height intrinsically depends on the conformations of the reactants, transition state, and products, which are not taken into account in standard D-MPNNs. In this work, we present a hybrid approach where we combine the power of D-MPNNs predicting barrier heights with generative models predicting transition state geometries on-the-fly for organic reactions. The resulting model thus only requires two-dimensional graph information as input, while internally leveraging three-dimensional information to increase accuracy. We furthermore evaluate the influence of additional physical features on D-MPNN models of reaction barrier heights, where we find that additional features only marginally enhance predictive accuracy and are especially helpful for small datasets. In contrast, our hybrid graph/coordinate approach reduces the error of barrier height predictions for the two investigated datasets RDB7 and RGD1.

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CiteScore
2.80
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