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A quantitative structure--activity relationships model for the acute toxicity of substituted benzenes to Tetrahymena pyriformis using Bayesian-regularized neural networks.

机译:定量结构-活性关系模型,用于使用贝叶斯规则神经网络对取代苯对梨形四膜虫的急性毒性。

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We have used a new, robust structure-activity mapping technique, a Bayesian-regularized neural network, to develop a quantitative structure-activity relationships (QSAR) model for the toxicity of 278 substituted benzenes toward Tetrahymena pyriformis. The independent variables used in the modeling were derived solely from the molecular structure, and the model was tested on 20% of the data set selected from the whole set by cluster analysis and which had not been used in training the network. The results show that the method is robust and reliable and give results for mixed class compounds which are comparable to earlier QSAR work on single-chemical class subsets of the 278 compounds and which employed measured physicochemical parameters as independent variables. Comparisons of Bayesian neural net models with those derived by classical PLS analysis showed the superiority of our method. The method appears to be able to model more diverse chemical classes and more than one mechanism of toxicity.
机译:我们已经使用了一种新的,健壮的结构-活性作图技术(贝叶斯正则化神经网络)来开发定量结构-活性关系(QSAR)模型,用于分析278个取代苯对吡喃四膜菌的毒性。建模中使用的自变量仅来自分子结构,并且通过聚类分析对选自整个数据集中的20%的数据集进行了模型测试,这些数据尚未用于训练网络。结果表明,该方法是可靠且可靠的,并给出了混合类化合物的结果,该类化合物可与较早的QSAR对278种化合物的单化学类子集进行的工作相当,并且采用了实测的理化参数作为自变量。贝叶斯神经网络模型与经典PLS分析得出的模型的比较表明了我们方法的优越性。该方法似乎能够模拟更多不同的化学类别和不止一种毒性机制。

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