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Skin Doctor: Machine Learning Models for Skin Sensitization Prediction that Provide Estimates and Indicators of Prediction Reliability

机译:皮肤医生:用于皮肤过敏预测的机器学习模型可提供预测可靠性的估计值和指标

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摘要

The ability to predict the skin sensitization potential of small organic molecules is of high importance to the development and safe application of cosmetics, drugs and pesticides. One of the most widely accepted methods for predicting this hazard is the local lymph node assay (LLNA). The goal of this work was to develop in silico models for the prediction of the skin sensitization potential of small molecules that go beyond the state of the art, with larger LLNA data sets and, most importantly, a robust and intuitive definition of the applicability domain, paired with additional indicators of the reliability of predictions. We explored a large variety of molecular descriptors and fingerprints in combination with random forest and support vector machine classifiers. The most suitable models were tested on holdout data, on which they yielded competitive performance (Matthews correlation coefficients up to 0.52; accuracies up to 0.76; areas under the receiver operating characteristic curves up to 0.83). The most favorable models are available via a public web service that, in addition to predictions, provides assessments of the applicability domain and indicators of the reliability of the individual predictions.
机译:预测有机小分子的皮肤致敏潜能的能力对于化妆品,药​​物和农药的开发和安全应用非常重要。预测这种危害的最广泛接受的方法之一是局部淋巴结测定(LLNA)。这项工作的目的是开发计算机模型,用于预测超出现有技术水平的小分子的皮肤致敏潜力,该模型具有更大的LLNA数据集,最重要的是,对适用范围进行了稳健而直观的定义,与预测可靠性的其他指标配对。我们结合随机森林和支持向量机分类器探索了多种分子描述符和指纹。在保留数据上测试了最合适的模型,这些模型产生了竞争性能(Matthews相关系数高达0.52;精确度高达0.76;接收器工作特性曲线下的面积高达0.83)。可以通过公共Web服务获得最有利的模型,该模型除提供预测外,还提供适用范围的评估以及各个预测的可靠性指标。

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