Reaction performance prediction with an extrapolative and interpretable graph model based on chemical knowledge

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作者
Shu-Wen Li
Li-Cheng Xu
Cheng Zhang
Shuo-Qing Zhang
Xin Hong
机构
[1] Zhejiang University,Center of Chemistry for Frontier Technologies, Department of Chemistry, State Key Laboratory of Clean Energy Utilization
[2] University of Science and Technology of China,Department of Chemistry
[3] Zhongguancun North First Street No. 2,Beijing National Laboratory for Molecular Sciences
[4] School of Science,Key Laboratory of Precise Synthesis of Functional Molecules of Zhejiang Province
[5] Westlake University,undefined
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Accurate prediction of reactivity and selectivity provides the desired guideline for synthetic development. Due to the high-dimensional relationship between molecular structure and synthetic function, it is challenging to achieve the predictive modelling of synthetic transformation with the required extrapolative ability and chemical interpretability. To meet the gap between the rich domain knowledge of chemistry and the advanced molecular graph model, herein we report a knowledge-based graph model that embeds the digitalized steric and electronic information. In addition, a molecular interaction module is developed to enable the learning of the synergistic influence of reaction components. In this study, we demonstrate that this knowledge-based graph model achieves excellent predictions of reaction yield and stereoselectivity, whose extrapolative ability is corroborated by additional scaffold-based data splittings and experimental verifications with new catalysts. Because of the embedding of local environment, the model allows the atomic level of interpretation of the steric and electronic influence on the overall synthetic performance, which serves as a useful guide for the molecular engineering towards the target synthetic function. This model offers an extrapolative and interpretable approach for reaction performance prediction, pointing out the importance of chemical knowledge-constrained reaction modelling for synthetic purpose.
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