生态毒性
农药
标杆管理
计算机科学
基线(sea)
环境科学
机器学习
集合(抽象数据类型)
人工智能
精确性和召回率
化学毒性
生化工程
图形
生态学
班级(哲学)
钥匙(锁)
一套
作者
Xuanlin Chen,Lilai Shen,Y N Huang,Yuchen Gao,Kai Chen,Dirong Zhang,Jianing Liu,Jinhui Yuan,Sidie Zhuang
标识
DOI:10.1021/acs.est.5c18162
摘要
Agrochemical exposure can threaten bees with substantial ecological risks. The rapid and accurate prediction of agrochemical ecotoxicity to bees is thus urgently needed; however, existing models are constrained by single-type structural inputs, resulting in limited accuracy and generalizability. This study presents BeeEcoTox, a multimodal graph-learning framework for predicting agrochemical ecotoxicity to bees. The model fuses ChemFM-derived semantic features with molecular graphs through a graph isomorphism network with internal batch normalization, combined with structural features from 1,139 agrochemicals. Inherent class imbalance in the curated data set is addressed through a cost-sensitive learning approach to ensure that the model prioritizes high recall in detecting ecotoxic agrochemicals without compromising overall performance. BeeEcoTox achieves state-of-the-art performance, with area under the curve and recall values of 0.91 and 0.90, respectively, following rigorous benchmarking against a suite of baseline models. Model explainability is enhanced through the use of GNNExplainer, a model-agnostic approach for identifying key toxicophores. BeeEcoTox is deployed as a publicly available web-based platform (https://www.ai4environ.cn/BeeEcoTox) to support advanced ecological risk assessments of agrochemicals and the development of new approach methodologies.
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