Barratt M D
Unilever Environmental Safety Laboratory, Colworth House, Sharnbrook, Bedford MK44 1LQ, UK.
Toxicol In Vitro. 1996 Feb;10(1):85-94. doi: 10.1016/0887-2333(95)00101-8.
Quantitative structure-activity relationships (QSARs) relating skin corrosivity data of organic acids, bases and phenols to their log(octanol/water partition coefficient), molecular volume, melting point and pK(a). have been extended to substantially larger datasets. In addition to principal components analysis, as used in earlier work, the datasets have also been analysed using neural networks. Plots of the first two principal components of the four independent variables, which broadly model skin permeability and cytotoxicity, for each of the extended datasets confirmed that the analysis was able to discriminate well between corrosive and non-corrosive chemicals. Neural networks using the same parameters as inputs, were trained to an output in the range 0.0 to 1.0, with non-corrosive chemicals being assigned the value 0 and corrosive chemicals the value 1. As well as yielding classification predictions in agreement with those in the training sets, predicted outputs in the 0 to 1 range gave a useful indication of the confidence of the predicted classification. These QSARs are useful (a) for the prediction of the skin corrosivity potentials of new or untested chemicals and (b) for determining the confidence of predictions in regions of 'biological uncertainty' which exist at the classification threshold between corrosive and non-corrosive chemicals.
将有机酸、碱和酚类的皮肤腐蚀性数据与其辛醇/水分配系数对数、分子体积、熔点和pKa相关联的定量构效关系(QSARs)已扩展到更大的数据集。除了早期工作中使用的主成分分析外,这些数据集还使用神经网络进行了分析。对于每个扩展数据集,对四个独立变量的前两个主成分进行绘图,这些变量大致模拟皮肤渗透性和细胞毒性,证实该分析能够很好地区分腐蚀性和非腐蚀性化学物质。使用相同参数作为输入的神经网络被训练到0.0到1.0的输出范围,非腐蚀性化学物质被赋值为0,腐蚀性化学物质被赋值为1。除了产生与训练集中一致的分类预测外,0到1范围内的预测输出还给出了预测分类置信度的有用指示。这些QSARs在以下方面很有用:(a)预测新的或未经测试的化学物质的皮肤腐蚀潜力;(b)确定在腐蚀性和非腐蚀性化学物质分类阈值处存在的“生物不确定性”区域中预测的置信度。