虚拟筛选
新烟碱
生成语法
人工智能
计算生物学
生成模型
计算机科学
机器学习
生物
药物发现
生物信息学
杀虫剂
生态学
益达胺
作者
Yijin Kong,Cong Zhou,Du Tan,Xiaoyong Xu,Zhong Li,Jiagao Cheng
标识
DOI:10.1021/acs.jafc.3c06895
摘要
The identification of neonicotinoid insecticides bearing novel scaffolds is of great importance for pesticide discovery. Here, artificial intelligence-based tools and virtual screening strategy were integrated to discover potential leads of neonicotinoid insecticides. A deep generative model was successfully constructed using a recurrent neural network combined with transfer learning. The model evaluation showed that the pretrained model could accurately grasp the SMILES grammar of drug-like molecules and generate potential neonicotinoid compounds after transfer learning. The generated molecules were evaluated by hierarchical virtual screening, hits were subjected to a similarity search, and the most similar structures were purchased for the bioassay. Compounds A2 and A5 displayed 52.5 and 50.3% mortality rates against Aphis craccivora at 100 mg/L, respectively. The docking study indicated that these two compounds have similar binding modes to neonicotinoids, which were verified by further molecular dynamics simulations.
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