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深度学习神经网络和分子对接支持扑草净的毒性特征。

Deep neural network and molecular docking supported toxicity profile of prometryn.

机构信息

Department of Biology, Institute of Science, Giresun University, Giresun, Turkiye.

Department of Herbal and Animal Production, Kırıkkale Vocational School, Kırıkkale University, Kırıkkale, Turkiye.

出版信息

Chemosphere. 2023 Nov;340:139962. doi: 10.1016/j.chemosphere.2023.139962. Epub 2023 Aug 24.

Abstract

In this study, the versatile toxicity profile of prometryn herbicide on Allium cepa was investigated. In this context, 4 different groups were formed. While the control group was treated with distilled water, Groups II, III and IV were treated with 200 mg/L, 400 mg/L and 800 mg/L prometryn, respectively. After 72 h of germination, cytogenetic, biochemical, physiological and anatomical changes were investigated. As a result increase in malondialdehyde levels, decrease in glutathione level, changes in superoxide dismutase and catalase activities in root tip cells show that prometryn causes oxidative stress. The decrease in mitotic index values and the increase in the frequency of micronucleus and chromosomal abnormalities observed after prometryn treatment indicate genotoxic effects. The genotoxic effects may be due to the induced oxidative stress as well as the promethryn-DNA interaction. Molecular docking analyses revealed that prometryn interacts with various bases in DNA. As a result of the Comet assay, exposure to prometryn was found to cause DNA fragmentation. In physiological parameters final weight, germination percentage and root length decreased by 23.8%, 59.1% and 87.3%, respectively, in the 800 mg/L prometryn applied group. Deep neural network (DNN) model was optimized to predict the effects of different doses of prometryn on 4 different endpoints: micronucleus, mitotic index, chromosomal abnormalities and DNA Damage. The predicted data was found to be very similar to the actual data. The performance of the model was evaluated using MAE, MAPE, RMSE and R, and these metrics indicate that the model performed well. Overall, the findings of this study suggest that the DNN model developed here is a valuable tool for predicting genotoxicity biomarkers in response to the application doses of prometryn, and has the potential to contribute to the development of safer and more sustainable agricultural practices.

摘要

在这项研究中,研究了普草津除草剂对洋葱的多功能毒性特征。在这种情况下,形成了 4 个不同的组。对照组用蒸馏水处理,第 II、III 和 IV 组分别用 200mg/L、400mg/L 和 800mg/L 的普草津处理。在发芽 72 小时后,研究了细胞遗传学、生化、生理和解剖变化。结果表明,丙草津导致 MDA 水平升高,谷胱甘肽水平降低,根尖细胞中超氧化物歧化酶和过氧化氢酶活性改变,引起氧化应激。丙草津处理后观察到有丝分裂指数值降低,微核和染色体异常频率增加,表明存在遗传毒性作用。遗传毒性作用可能是由于诱导的氧化应激以及普草津-DNA 相互作用。分子对接分析表明,普草津与 DNA 中的各种碱基相互作用。彗星试验结果表明,暴露于普草津会导致 DNA 断裂。在生理参数中,800mg/L 普草津处理组的最终重量、发芽率和根长分别下降了 23.8%、59.1%和 87.3%。利用深度神经网络(DNN)模型优化,预测不同剂量的普草津对 4 个不同终点的影响:微核、有丝分裂指数、染色体异常和 DNA 损伤。预测数据与实际数据非常相似。使用 MAE、MAPE、RMSE 和 R 评估模型的性能,这些指标表明模型表现良好。总的来说,本研究的结果表明,这里开发的 DNN 模型是预测普草津应用剂量下遗传毒性生物标志物的有价值的工具,并且有可能为更安全和更可持续的农业实践做出贡献。

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