Nucleophilicity Prediction Using Graph Neural Networks

被引:8
|
作者
Nie, Wan [1 ,2 ]
Liu, Deguang [1 ]
Li, Shuaicheng [2 ]
Yu, Haizhu [3 ,4 ]
Fu, Yao [1 ]
机构
[1] Univ Sci & Technol China, Hefei Comprehens Natl Sci Ctr, Ctr Excellence Mol Synth CAS, Inst Energy,Hefei Natl Lab Phys Sci Microscale,CAS, Hefei 230026, Peoples R China
[2] City Univ Hong Kong, Dept Comp Sci, Hong Kong 999077, Peoples R China
[3] Anhui Univ, Dept Chem, Hefei 230601, Peoples R China
[4] Anhui Univ, Ctr Atom Engn Adv Mat, Anhui Prov Key Lab Chem Inorgan Organ Hybrid Funct, Hefei 230601, Peoples R China
基金
中国国家自然科学基金;
关键词
MOLECULAR-FORCE FIELD; DIARYLCARBENIUM IONS; BASIS-SETS; ELECTROPHILICITY; REACTIVITY; PARAMETERS; GEOMETRIES; ENERGIES; EQUATION; KINETICS;
D O I
10.1021/acs.jcim.2c00696
中图分类号
R914 [药物化学];
学科分类号
100701 ;
摘要
The quantitative description between chemical reaction rates and nucleophilicity parameters plays a crucial role in organic chemistry. In this regard, the formula proposed by Mayr et al. and the constructed reactivity database are important representatives. However, the determination of Mayr's nucleophilicity parameter N often requires time-consuming experiments with reference electrophiles in the solvent. Several machine learning (ML)-based models have been proposed to realize the data-driven prediction of N in recent years. However, in addition to DFT-calculated electronic descriptors, most of them also use a set of artificially predefined structural descriptors as input, which may result in a biased representation of the nucleophile's structural information depending on descriptors' definition preference. Compared with traditional ML algorithms, graph neural networks (GNNs) can naturally take the molecule's structural information into account by applying the message passing technique. We herein proposed a SchNet-based GNN model that only takes the molecular conformation and solvent type as input. The model achieves a comparable performance to the previous benchmark study on 10-fold cross-validation of 894 data points (R-2 = 0.91, RMSE = 2.25). To enhance the model's ability to capture the molecule's electronic information, some DFT-calculated parameters are then incorporated into the model via graph global features, and substantial improvement is achieved in the prediction precision (R-2 = 0.95, RMSE = 1.63). These results demonstrate that both structural and electronic information are important for the prediction of N, and GNN can integrate these two kinds of information more effectively.
引用
收藏
页码:4319 / 4328
页数:10
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