亲核细胞
电泳剂
反应性(心理学)
化学
计算化学
机器学习
人工智能
代表(政治)
计算机科学
组合化学
生物系统
生化工程
有机化学
催化作用
病理
工程类
替代医学
生物
医学
政治学
政治
法学
作者
Yidi Liu,Qi Yang,Junjie Cheng,Long Zhang,Sanzhong Luo,Jin‐Pei Cheng
标识
DOI:10.1002/cphc.202300162
摘要
Nucleophilicity and electrophilicity dictate the reactivity of polar organic reactions. In the past decades, Mayr et al. established a quantitative scale for nucleophilicity (N) and electrophilicity (E), which proved to be a useful tool for the rationalization of chemical reactivity. In this study, a holistic prediction model was developed through a machine-learning approach. rSPOC, an ensemble molecular representation with structural, physicochemical and solvent features, was developed for this purpose. With 1115 nucleophiles, 285 electrophiles, and 22 solvents, the dataset is currently the largest one for reactivity prediction. The rSPOC model trained with the Extra Trees algorithm showed high accuracy in predicting Mayr's N and E parameters with R2 of 0.92 and 0.93, MAE of 1.45 and 1.45, respectively. Furthermore, the practical applications of the model, for instance, nucleophilicity prediction of NADH, NADPH and a series of enamines showed potential in predicting molecules with unknown reactivity within seconds. An online prediction platform (http://isyn.luoszgroup.com/) was constructed based on the current model, which is available free to the scientific community.
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