Wang Fan, Yang Jing-Fang, Wang Meng-Yao, Jia Chen-Yang, Shi Xing-Xing, Hao Ge-Fei, Yang Guang-Fu
Key Laboratory of Pesticide & Chemical Biology, Ministry of Education, College of Chemistry, Central China Normal University, Wuhan 430079, China; International Joint Research Center for Intelligent Biosensor Technology and Health, Central China Normal University, Wuhan 430079, China.
Key Laboratory of Pesticide & Chemical Biology, Ministry of Education, College of Chemistry, Central China Normal University, Wuhan 430079, China; International Joint Research Center for Intelligent Biosensor Technology and Health, Central China Normal University, Wuhan 430079, China.
Sci Bull (Beijing). 2020 Jul 30;65(14):1184-1191. doi: 10.1016/j.scib.2020.04.006. Epub 2020 Apr 3.
The impact of pesticides on insect pollinators has caused worldwide concern. Both global bee decline and stopping the use of pesticides may have serious consequences for food security. Automated and accurate prediction of chemical poisoning of honey bees is a challenging task owing to a lack of understanding of chemical toxicity and introspection. Deep learning (DL) shows potential utility for general and highly variable tasks across fields. Here, we developed a new DL model of deep graph attention convolutional neural networks (GACNN) with the combination of undirected graph (UG) and attention convolutional neural networks (ACNN) to accurately classify chemical poisoning of honey bees. We used a training dataset of 720 pesticides and an external validation dataset of 90 pesticides, which is one order of magnitude larger than the previous datasets. We tested its performance in two ways: poisonous versus non-poisonous and GACNN versus other frequently-used machine learning models. The first case represents the accuracy in identifying bee poisonous chemicals. The second represents performance advantages. The GACNN achieved ~6% higher performance for predicting toxic samples and more stable with ~7% Matthews Correlation Coefficient (MCC) higher compared to all tested models, demonstrating GACNN is capable of accurately classifying chemicals and has considerable potential in practical applications. In addition, we also summarized and evaluated the mechanisms underlying the response of honey bees to chemical exposure based on the mapping of molecular similarity. Moreover, our cloud platform (http://beetox.cn) of this model provides low-cost universal access to information, which could vitally enhance environmental risk assessment.
农药对昆虫传粉者的影响已引起全球关注。全球蜜蜂数量减少以及停止使用农药都可能对粮食安全产生严重后果。由于对化学毒性缺乏了解以及缺乏自省,对蜜蜂化学中毒进行自动化和准确预测是一项具有挑战性的任务。深度学习(DL)在跨领域的一般和高度可变任务中显示出潜在效用。在此,我们结合无向图(UG)和注意力卷积神经网络(ACNN)开发了一种新的深度图注意力卷积神经网络(GACNN)深度学习模型,以准确分类蜜蜂的化学中毒情况。我们使用了一个包含720种农药的训练数据集和一个包含90种农药的外部验证数据集,该数据集比以前的数据集大一个数量级。我们通过两种方式测试了其性能:有毒与无毒以及GACNN与其他常用机器学习模型。第一种情况代表识别蜜蜂有毒化学物质的准确性。第二种代表性能优势。与所有测试模型相比,GACNN在预测有毒样本方面的性能提高了约6%,并且更稳定,马修斯相关系数(MCC)高出约7%,这表明GACNN能够准确分类化学物质,在实际应用中具有相当大的潜力。此外,我们还基于分子相似性映射总结并评估了蜜蜂对化学暴露反应的潜在机制。而且,我们这个模型的云平台(http://beetox.cn)提供了低成本的信息通用访问途径,这对加强环境风险评估至关重要。