Silico Methodologies Modelling of Aquatic Toxicity in Tetrahymena Pyriformis Via Aromatic Amines

N. Ziani, Khadidja Amirat, Souhaila Meneceur, Fatiha Mebarki, Abderrhmane Bouafia
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Abstract

EU Directive for the Protection of Laboratory Animals mandates and encourages the use of alternative methods that could substitute, cut down on, and generally improve animal testing. Quantitative structure-activity relationship models (QSAR) as well as in vitro toxicity testing are among the most notable of such. QSARs are defined as computerized mathematical models that can utilize a compound’s (aromatic amine) biological activity—aquatic toxicity—to calculate or provide the experimental descriptors of the chemical structure of this compound. Multiple Linear Regression (MLR) and Artificial Neural Networks (ANN) are the approaches we use for the aim of predicting aquatic toxicity. The best models for two descriptors are the electrotopological descriptors derived from E-calc, and the partition coefficient derived by the Hyperchem software, applying a genetic algorithm—variable subset selection procedure. The important values of the statistical parameters obtained by the two approaches were as follows: By MLR: R2= 92.18, Q2 = 90.51, Q2ext= 95.26, F=188.5466, S = 0.1995. By ANN were: Q2 = 94.79, RMSE= 0.16, Q2ext= 91.71, RMSEext=0.18.
通过芳香胺对梨形四膜虫水生毒性的硅方法模拟
欧盟保护实验动物指令要求并鼓励使用可以替代、减少和普遍改善动物试验的替代方法。定量构效关系模型(QSAR)以及体外毒性测试是其中最值得注意的。qsar被定义为计算机化的数学模型,可以利用化合物(芳香胺)的生物活性-水生毒性-来计算或提供该化合物化学结构的实验描述符。多元线性回归(MLR)和人工神经网络(ANN)是我们用于预测水生毒性的方法。两个描述符的最佳模型是由E-calc导出的电拓扑描述符和由Hyperchem软件导出的分配系数,应用遗传算法-变量子集选择程序。两种方法得到的统计参数的重要值为:MLR: R2= 92.18, Q2 = 90.51, Q2ext= 95.26, F=188.5466, S = 0.1995。经人工神经网络分析:Q2 = 94.79, RMSE= 0.16, Q2ext= 91.71, RMSEext=0.18。
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