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New public QSAR model for carcinogenicity

机译:新型QSAR致癌性新模型

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Background One of the main goals of the new chemical regulation REACH (Registration, Evaluation and Authorization of Chemicals) is to fulfill the gaps in data concerned with properties of chemicals affecting the human health. (Q)SAR models are accepted as a suitable source of information. The EU funded CAESAR project aimed to develop models for prediction of 5 endpoints for regulatory purposes. Carcinogenicity is one of the endpoints under consideration. Results Models for prediction of carcinogenic potency according to specific requirements of Chemical regulation were developed. The dataset of 805 non-congeneric chemicals extracted from Carcinogenic Potency Database (CPDBAS) was used. Counter Propagation Artificial Neural Network (CP ANN) algorithm was implemented. In the article two alternative models for prediction carcinogenicity are described. The first model employed eight MDL descriptors (model A) and the second one twelve Dragon descriptors (model B). CAESAR's models have been assessed according to the OECD principles for the validation of QSAR . For the model validity we used a wide series of statistical checks. Models A and B yielded accuracy of training set (644 compounds) equal to 91% and 89% correspondingly; the accuracy of the test set (161 compounds) was 73% and 69%, while the specificity was 69% and 61%, respectively. Sensitivity in both cases was equal to 75%. The accuracy of the leave 20% out cross validation for the training set of models A and B was equal to 66% and 62% respectively. To verify if the models perform correctly on new compounds the external validation was carried out. The external test set was composed of 738 compounds. We obtained accuracy of external validation equal to 61.4% and 60.0%, sensitivity 64.0% and 61.8% and specificity equal to 58.9% and 58.4% respectively for models A and B. Conclusion Carcinogenicity is a particularly important endpoint and it is expected that QSAR models will not replace the human experts opinions and conventional methods. However, we believe that combination of several methods will provide useful support to the overall evaluation of carcinogenicity. In present paper models for classification of carcinogenic compounds using MDL and Dragon descriptors were developed. Models could be used to set priorities among chemicals for further testing. The models at the CAESAR site were implemented in java and are publicly accessible.
机译:背景技术新的化学法规REACH(化学物质的注册,评估和授权)的主要目标之一是填补与影响人类健康的化学物质有关的数据空白。 (Q)SAR模型被认为是合适的信息来源。欧盟资助的CAESAR项目旨在开发用于预测5个端点的模型,以用于监管目的。致癌性是考虑的终点之一。结果根据化学法规的具体要求,建立了预测致癌性的模型。使用从致癌潜能数据库(CPDBAS)中提取的805种非同类化学品的数据集。实现了逆向传播人工神经网络(CP ANN)算法。在本文中,描述了两种预测致癌性的替代模型。第一个模型使用八个MDL描述符(模型A),第二个模型使用十二个Dragon描述符(模型B)。已根据OECD原则对CAESAR的模型进行了评估,以验证QSAR。对于模型有效性,我们使用了一系列的统计检查。模型A和B产生的训练集(644种化合物)的准确度分别等于91%和89%;测试集(161种化合物)的准确度分别为73%和69%,而特异性分别为69%和61%。两种情况下的灵敏度均等于75%。对于模型A和B的训练集,离开交叉验证的20%的准确度分别等于66%和62%。为了验证模型对新化合物是否正确执行,进行了外部验证。外部测试集由738种化合物组成。对于模型A和模型B,我们分别获得了61.4%和60.0%的外部验证准确度,64.0%和61.8%的敏感性以及58.9%和58.4%的特异性。结论致癌性是一个特别重要的终点,可以预期QSAR模型不会取代人类专家的意见和常规方法。但是,我们认为几种方法的组合将为总体致癌性评估提供有用的支持。在目前的论文中,使用MDL和Dragon描述符对致癌化合物进行分类的模型得以开发。可使用模型来设置化学品之间的优先级以进行进一步测试。 CAESAR站点上的模型是用Java实现的,可以公开访问。

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