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首页> 外文期刊>Chemical research in toxicology >Prediction of Synergistic Toxicity of Binary Mixtures to Vibrio fischeri Based on Biomolecular Interaction Networks
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Prediction of Synergistic Toxicity of Binary Mixtures to Vibrio fischeri Based on Biomolecular Interaction Networks

机译:基于生物分子相互作用网络对二元混合物的协同毒性预测二元混合物的协同毒性

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摘要

The paradigm of chemical safety assessment is shifting from 'chemical management focusing on single chemicals' to 'product management extending to mixtures and articles'. However, because of the enormous combinatorial complexity, testing the toxicity of all conceivable mixture products is currently not feasible. There exist only few models that allow predicting the synergistic toxicity potentially caused by toxicological interactions among components. In this study, we present a novel approach to qualitatively predict the synergistic toxicity of binary mixtures to Vibrio fischeri. On the basis of information derived from protein-chemical and protein-protein interaction networks, we trained machine learning models for classifying chemical mixtures to have synergistic or nonsynergistic toxicity with accuracies and an area under the receiver operating characteristic (ROC) curve (AUC) up to 0.73. The numbers of shared targets and their neighborhood were found to be the most important features for classifying chemicals into synergistic and nonsynergistic groups.
机译:化学安全评估的范式从“化学管理专注于单一化学物质”到“产品管理延伸到混合物和物品”的化学管理。然而,由于组合复杂性巨大,测试所有可想到的混合物产品的毒性目前不可行。只有很少的模型,允许预测组分之间毒理学相互作用可能引起的协同毒性。在这项研究中,我们提出了一种新颖的方法来定性预测二元混合物对vibriofischeri的协同毒性。在源自蛋白质 - 化学和蛋白质 - 蛋白质相互作用网络的信息的基础上,我们培训了用于对化学混合物进行分类的机器学习模型,以在接收器操作特征(ROC)曲线(AUC)下方的精度和区域具有协同或非粘性毒性0.73。被发现共享目标及其邻居的数量是将化学品分类为协同和非营养群体的最重要的特征。

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