Improved Ensemble Model for Insecticide Recognition by Incorporating Insect Toxicity Data

Pesticide molecules, such as insecticides, play a critical role in modern agricultural production. Traditional pesticide development methods are often inefficient and expensive, while data-driven artificial intelligence (AI) techniques have emerged as a useful tool to facilitate drug discovery. Howe...

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Veröffentlicht in:Journal of agricultural and food chemistry 2024-11, Vol.72 (44), p.24219-24227
Hauptverfasser: Yang, Ruoqi, Ma, Zhepeng, Wei, Zhiheng, Wang, Fan, Yang, Guangfu
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container_end_page 24227
container_issue 44
container_start_page 24219
container_title Journal of agricultural and food chemistry
container_volume 72
creator Yang, Ruoqi
Ma, Zhepeng
Wei, Zhiheng
Wang, Fan
Yang, Guangfu
description Pesticide molecules, such as insecticides, play a critical role in modern agricultural production. Traditional pesticide development methods are often inefficient and expensive, while data-driven artificial intelligence (AI) techniques have emerged as a useful tool to facilitate drug discovery. However, currently available commercial pesticide data is limited, which makes the trained models unsatisfactory in terms of performance and generalization. From a domain knowledge perspective, insect toxicity data were incorporated to improve the insecticide recognition of AI models. Compared to the models trained with the original data set, the new models performed better in the external validation, and their generalization was more desirable. In addition, by integrating different types of individual models, we obtained an ensemble model with better performance. Based on this, an online platform was developed to provide researchers with free access to insecticide screening (https://dpai.ccnu.edu.cn/InsectiVS/). Finally, two potential insecticide molecules with insecticidal activity against Plutella xylostella were successfully identified in a real-world scenario. In conclusion, this idea connects the fields of AI and agricultural chemistry and is expected to have wide application in pesticide research.
doi_str_mv 10.1021/acs.jafc.4c04252
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subjects Agricultural and Environmental Chemistry
Animals
Artificial Intelligence
Insecticides - chemistry
Insecticides - toxicity
Moths - drug effects
title Improved Ensemble Model for Insecticide Recognition by Incorporating Insect Toxicity Data
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