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Integrated Decision Strategies for Skin Sensitization Hazard

机译:皮肤过敏危害的综合决策策略

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摘要

One of the top priorities of ICCVAM is the identification and evaluation of non-animal alternatives for skin sensitization testing. Although skin sensitization is a complex process, the key biological events of the process have been well characterized in an adverse outcome pathway (AOP) proposed by OECD. Accordingly, ICCVAM is working to develop integrated decision strategies based on the AOP using in vitro, in chemico, and in silico information. Data were compiled for 120 substances tested in the murine local lymph node assay (LLNA), direct peptide reactivity assay (DPRA), human cell line activation test (h-CLAT), and KeratinoSens assay. Data for six physicochemical properties that may affect skin penetration were also collected, and skin sensitization read-across predictions were performed using OECD QSAR Toolbox. All data were combined into a variety of potential integrated decision strategies to predict LLNA outcomes using a training set of 94 substances and an external test set of 26 substances. Fifty-four models were built using multiple combinations of machine learning approaches and predictor variables. The seven models with the highest accuracy (89–96% for the test set and 96–99% for the training set) for predicting LLNA outcomes used a support vector machine (SVM) approach with different combinations of predictor variables. The performance statistics of the SVM models were higher than any of the non-animal tests alone and higher than simple test battery approaches using these methods. These data suggest that computational approaches are promising tools to effectively integrate data sources to identify potential skin sensitizers without animal testing.
机译:ICCVAM的首要任务之一是识别和评估皮肤过敏测试中的非动物替代品。尽管皮肤致敏是一个复杂的过程,但该过程的关键生物学事件已在经合组织提出的不良结局途径(AOP)中得到了很好的表征。因此,ICCVAM正在使用体外,化学和计算机信息开发基于AOP的综合决策策略。收集了在鼠局部淋巴结试验(LLNA),直接肽反应性试验(DPRA),人细胞系激活试验(h-CLAT)和KeratinoSens试验中测试的120种物质的数据。还收集了可能影响皮肤渗透的六种理化特性数据,并使用OECD QSAR Toolbox进行了皮肤致敏性的交叉预测。使用一组94种物质的培训和一组26种物质的外部测试,将所有数据组合到各种潜在的综合决策策略中,以预测LLNA的结果。使用机器学习方法和预测变量的多种组合构建了54个模型。预测LLNA结果的七个准确性最高的模型(测试集为89–96%,培训集为96–99%)使用了支持向量机(SVM)方法,并具有不同的预测变量组合。 SVM模型的性能统计数据高于单独的任何非动物测试,也高于使用这些方法的简单测试电池方法。这些数据表明,计算方法是有希望的工具,可以有效地整合数据源以识别潜在的皮肤致敏剂而无需进行动物测试。

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