A machine learning approach for predicting the reactivity power of hypervalent iodine compounds

Vaneet Saini , Ramesh Kataria, Shruti Rajput
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Abstract

The knowledge of chemical reactivity of substrates is a prerequisite to accurately design a chemical reaction; however, it has been a challenging task due to the slow trial-and-error experimental approaches and the high computational cost associated with in silico investigations. Artificial intelligence techniques could serve as an alternative to efficiently determine the relative reactivity of chemical entities. In the context of this research, we propose an artificial neural network model to predict the bond dissociation energies of hypervalent iodine reagents. An open-source cheminformatics package, namely, Mordred, was employed for calculating various 1D, 2D and topological descriptors. The approach utilizes a dataset of more than 1000 hypervalent iodine reagents, and the bond dissociation energies can be predicted with a remarkable accuracy, as suggested by an R2 score of 0.97 and a mean absolute error of 1.96 kcal/mol. Owing to the low cost and high efficiency, this machine learning approach can provide an alternative to the theoretical/experimental approaches to rationally design a chemical reaction and without having to go through the hassle of high-throughput experimentation to reach the desired reaction outcome. In an effort to make the model interpretable, a feature importance algorithm was applied, which identified descriptors contributing most to the development of the model. Features describing electronegativity and polarizability are some of the important contributors to the model’s training.

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预测高价碘化合物反应能力的机器学习方法
了解底物的化学反应性是准确设计化学反应的先决条件;然而,由于硅学研究采用缓慢的试错实验方法,且计算成本高昂,因此这是一项具有挑战性的任务。人工智能技术可以作为有效确定化学实体相对反应性的替代方法。在这项研究中,我们提出了一个人工神经网络模型来预测超价碘试剂的键解离能。我们采用了一个开源化学信息学软件包,即 Mordred,来计算各种一维、二维和拓扑描述符。该方法利用了一个包含 1000 多种高价碘试剂的数据集,可以非常准确地预测键解离能,R2 得分为 0.97,平均绝对误差为 1.96 kcal/mol。由于成本低、效率高,这种机器学习方法可以替代理论/实验方法,合理地设计化学反应,而无需通过高通量实验来达到理想的反应结果。为了使模型具有可解释性,我们采用了一种特征重要性算法,以确定对模型发展贡献最大的描述符。描述电负性和极化性的特征是模型训练的一些重要贡献。
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Artificial intelligence chemistry
Artificial intelligence chemistry Chemistry (General)
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审稿时长
21 days
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