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Discovery of Potential Neonicotinoid Insecticides by an Artificial Intelligence Generative Model and Structure-Based Virtual Screening

Yijin Kong, Cong Zhou, Du Tan, Xiaoyong Xu, Zhong Li, Jiagao Cheng

2024Journal of Agricultural and Food Chemistry17 citationsDOI

Abstract

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.

Topics & Concepts

Virtual screeningNeonicotinoidArtificial intelligenceGenerative modelComputer scienceMachine learningDrug discoveryComputational biologyBiologyGenerative grammarBioinformaticsPesticideEcologyImidaclopridInsect and Pesticide ResearchInsect Resistance and GeneticsInsect Pest Control Strategies
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