School of Chemical Engineering and Material Science, Tianjin University of Science and Technology, 13St. 29, TEDA, 300457 Tianjin, PR China.
School of Marine and Environmental Science, Tianjin University of Science and Technology, 13St. 29, TEDA, 300457 Tianjin, PR China.
Sci Total Environ. 2019 May 1;663:560-567. doi: 10.1016/j.scitotenv.2019.01.362. Epub 2019 Jan 29.
Quantitative structure-toxicity relationship (QSTR) models with the same mathematical structure were proposed for predicting the multiple toxicity endpoints of substituted phenols and anilines towards Chlorella vulgaris (C. vulgaris) based on the norm indexes. Four aquatic toxicity endpoints including growth inhibition concentrations of IC, IC, LOEC and NOEC towards C. vulgaris were involved in the modeling work. The results indicated that the developed models could produce satisfactory predictive results for the four different toxicity endpoints with high squared correlation coefficients (R). Leave-one-out cross validation, Y-randomized validation and application domain analysis demonstrated the accuracy, robustness and reliability of these models. Accordingly, the results obtained in this work suggested that it might be possible to develop QSTR models with the same mathematical structure for predicting multiple toxicity endpoints successfully via norm index descriptors.
基于范数指标,提出了具有相同数学结构的定量结构-毒性关系(QSTR)模型,用于预测取代酚和苯胺对小球藻(C. vulgaris)的多种毒性终点。建模工作涉及到四种水生态毒性终点,包括对小球藻的生长抑制浓度 IC 50 、IC 10 、LOEC 和 NOEC。结果表明,所开发的模型可以为四种不同的毒性终点产生令人满意的预测结果,具有高的平方相关系数(R)。留一法交叉验证、Y 随机验证和应用域分析证明了这些模型的准确性、稳健性和可靠性。因此,本工作的结果表明,通过范数指标描述符,有可能成功地开发出具有相同数学结构的 QSTR 模型,用于预测多种毒性终点。