数量结构-活动关系
乙酰胆碱酯酶
氢键
化学
对接(动物)
合理设计
计算化学
静电相互作用
离子液体
分子模型
非共价相互作用
生物系统
组合化学
计算机科学
人工智能
机器学习
分子
立体化学
纳米技术
材料科学
化学物理
有机化学
酶
生物
催化作用
护理部
医学
作者
Jiachen Yan,Xiliang Yan,Song Hu,Hao Zhu,Bing Yan
标识
DOI:10.1021/acs.est.1c02960
摘要
Quantitative structure–activity relationship (QSAR) modeling can be used to predict the toxicity of ionic liquids (ILs), but most QSAR models have been constructed by arbitrarily selecting one machine learning method and ignored the overall interactions between ILs and biological systems, such as proteins. In order to obtain more reliable and interpretable QSAR models and reveal the related molecular mechanism, we performed a systematic analysis of acetylcholinesterase (AChE) inhibition by 153 ILs using machine learning and molecular modeling. Our results showed that more reliable and stable QSAR models (R2 > 0.85 for both cross-validation and external validation) were obtained by combining the results from multiple machine learning approaches. In addition, molecular docking results revealed that the cations and organic anions of ILs bound to specific amino acid residues of AChE through noncovalent interactions such as π interactions and hydrogen bonds. The calculation results of binding free energy showed that an electrostatic interaction (ΔEele < −285 kJ/mol) was the main driving force for the binding of ILs to AChE. The overall findings from this investigation demonstrate that a systematic approach is much more convincing. Future research in this direction will help design the next generation of biosafe ILs.
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