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首页> 外文期刊>SAR and QSAR in Environmental Research >Counter propagation artificial neural network categorical models for prediction of carcinogenicity for non-congeneric chemicals
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Counter propagation artificial neural network categorical models for prediction of carcinogenicity for non-congeneric chemicals

机译:逆传播人工神经网络分类模型预测非同类化学品的致癌性

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摘要

One of the main goals of the new chemical regulation REACH (Registration, Evaluation and Authorization of Chemicals) is to fill the gaps on the toxicological properties of chemicals that affect human health. Carcinogenicity is one of the endpoints under consideration. The information obtained from (quantitative) structure-activity relationship ((Q)SAR) models is accepted as an alternative solution to avoid expensive and time-consuming animal tests. The reported results were obtained within the framework of the European project 'Computer Assisted Evaluation of industrial chemical Substances According to Regulations (CAESAR)'. In this article, we demonstrate intermediate results for counter propagation artificial neural network (CP ANN) models for the prediction category of the carcinogenic potency using two-dimensional (2D) descriptors from different software programs. A total of 805 non-congeneric chemicals were extracted from the Carcinogenic Potency Database (CPDBAS). The resulting models had prediction accuracies for internal (training) and external (test) sets as high as 91-93% and 68-70%, respectively. The sensitivity and specificity of the test set were 69-73 and 63-72% correspondingly. High specificity is critical in models for regulatory use that are aimed at ensuring public safety. Thus, the errors that give rise to false negatives are much more relevant. We discuss how we can increase the number of correctly predicted carcinogens using the correlation between the threshold and the values of the sensitivity and specificity.
机译:新的化学法规REACH(化学品注册,评估和授权)的主要目标之一是填补影响人类健康的化学品毒理学特性的空白。致癌性是考虑的终点之一。从(定量)结构-活性关系((Q)SAR)模型获得的信息被接受为替代解决方案,从而避免了昂贵且费时的动物测试。报告的结果是在欧洲项目“根据法规对工业化学物质进行计算机辅助评估(CAESAR)”的框架内获得的。在本文中,我们使用来自不同软件程序的二维(2D)描述符展示了针对致癌力预测类别的反向传播人工神经网络(CP ANN)模型的中间结果。从致癌潜能数据库(CPDBAS)中提取了总共805种非同类化学品。结果模型对内部(训练)和外部(测试)集的预测准确性分别高达91-93%和68-70%。测试组的敏感性和特异性分别为69-73%和63-72%。高特异性对于旨在确保公共安全的法规使用模型至关重要。因此,引起假阴性的错误更为相关。我们讨论了如何使用阈值与敏感性和特异性值之间的相关性来增加正确预测的致癌物的数量。

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