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Prediction of Skin Sensitization with a Particle Swarm Optimized Support Vector Machine

机译:粒子群优化支持向量机在皮肤敏感性预测中的应用

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Skin sensitization is the most commonly reported occupational illness, causing much suffering to a wide range of people. Identification and labeling of environmental allergens is urgently required to protect people from skin sensitization. The guinea pig maximization test (GPMT) and murine local lymph node assay (LLNA) are the two most important in vivo models for identification of skin sensitizers. In order to reduce the number of animal tests, quantitative structure-activity relationships (QSARs) are strongly encouraged in the assessment of skin sensitization of chemicals. This paper has investigated the skin sensitization potential of 162 compounds with LLNA results and 92 compounds with GPMT results using a support vector machine. A particle swarm optimization algorithm was implemented for feature selection from a large number of molecular descriptors calculated by Dragon. For the LLNA data set, the classification accuracies are 95.37% and 88.89% for the training and the test sets, respectively. For the GPMT data set, the classification accuracies are 91.80% and 90.32% for the training and the test sets, respectively. The classification performances were greatly improved compared to those reported in the literature, indicating that the support vector machine optimized by particle swarm in this paper is competent for the identification of skin sensitizers.
机译:皮肤过敏是最常报告的职业病,给许多人造成很大的痛苦。迫切需要对环境过敏原进行识别和标记,以保护人们免受皮肤过敏。豚鼠最大化试验(GPMT)和鼠局部淋巴结试验(LLNA)是鉴定皮肤敏化剂的两个最重要的体内模型。为了减少动物试验的数量,在化学物质对皮肤的敏感性评估中,强烈建议建立定量构效关系(QSAR)。本文使用支持向量机研究了162种具有LLNA结果的化合物和92种具有GPMT结果的化合物的皮肤致敏性。实现了粒子群优化算法,用于从Dragon计算的大量分子描述符中进行特征选择。对于LLNA数据集,训练集和测试集的分类准确度分别为95.37%和88.89%。对于GPMT数据集,训练集和测试集的分类准确度分别为91.80%和90.32%。与文献报道相比,分类性能得到了很大的提高,这表明本文提出的粒子群优化的支持向量机可以识别皮肤敏化剂。

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