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首页> 外文期刊>Environmental Science and Pollution Research >Comparative performance of'descriptors in a multiple linear and Kriging models: a case study on the acute toxicity of organic chemicals to algae
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Comparative performance of'descriptors in a multiple linear and Kriging models: a case study on the acute toxicity of organic chemicals to algae

机译:描述符在多个线性和克里格模型中的比较性能:有机化学物质对藻类的急性毒性的案例研究

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This study presents quantitative structure-toxicity relationship (QSTR) models on the toxicity of 91 organic compounds to Chlorella vulgaris using multiple linear regression (MLR) and Kriging techniques. The molecular descriptors were calculated using SPARTAN and DRAGON programs, and descriptor selection was made by "all subset" method available in the QSARINS software. MLR and Kriging models developed with the same descriptors were compared. In addition to these models, Kriging method was used for descriptor selection, and model development. The selected descriptors showed the importance of hydrophobici-ty, molecular weight and atomic ionization state in describing the toxicity of a diverse set of chemicals to C. vulgaris. A QSTR model should be associated with appropriate measures of goodness-of-fit, robustness, and predictivity in order to be used for regulatory purpose. Therefore, while the internal performances (goodness-of-fit and robustness) of the models were determined by using a training set, the predictive abilities of the models were determined by using a test set. The results of the study showed that while MLR method is easier to apply, the Kriging method was more successful in predicting toxicity.
机译:这项研究使用多元线性回归(MLR)和Kriging技术,提出了91种有机化合物对小球藻毒性的定量结构-毒性关系(QSTR)模型。使用SPARTAN和DRAGON程序计算分子描述符,并通过QSARINS软件中可用的“所有子集”方法进行描述符选择。比较了使用相同描述符开发的MLR和Kriging模型。除了这些模型之外,还使用Kriging方法进行描述符选择和模型开发。所选的描述符显示了疏水性,分子量和原子电离态在描述多种化学物质对寻常梭菌的毒性中的重要性。 QSTR模型应与适合度,稳健性和可预测性的适当度量相关联,以便用于监管目的。因此,虽然使用训练集确定了模型的内部性能(拟合优度和鲁棒性),但使用测试集确定了模型的预测能力。研究结果表明,尽管MLR方法更易于应用,但Kriging方法在预测毒性方面更为成功。

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