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Prediction of metabolic reactions based on atomic and molecular properties of small-molecule compounds

机译:基于小分子化合物的原子和分子特性的代谢反应预测

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Results: We classified 4843 reactions documented in the KEGG database, from all six Enzyme Commission classes (EC 1-6), into 80 reaction classes, each of which is marked by a characteristic functional group transformation. Reaction centers and surrounding local structures in substrates and products of these reactions were represented using SMARTS. We found that each of the SMARTS-defined chemical substructures is widely distributed among metabolites, but only a fraction of the functional groups in these substructures are reactive. Using atomic properties of atoms in a putative reaction center and molecular properties as features, we trained support vector machine (SVM) classifiers to discriminate between functional groups that are reactive and non-reactive. Classifier accuracy was assessed by cross-validation analysis. A typical sensitivity [TP/(TP+FN)] or specificity [TN/(TN+FP)] is approximate to 0.8. Our results suggest that metabolic reactivity of small-molecule compounds can be predicted with reasonable accuracy based on the presence of a potentially reactive functional group and the chemical features of its local environment.
机译:结果:我们将KEGG数据库中记录的4843个反应分类为来自所有六个酶委员会类别(EC 1-6)的80个反应类别,每个类别均具有特征性的官能团转化标记。使用SMARTS表示底物和这些反应产物中的反应中心和周围局部结构。我们发现每个SMARTS定义的化学亚结构广泛分布在代谢产物之间,但这些亚结构中只有一小部分官能团具有反应性。利用推定的反应中心中原子的原子性质和分子性质作为特征,我们训练了支持向量机(SVM)分类器,以区分反应性和非反应性官能团。通过交叉验证分析评估分类器的准确性。典型的敏感性[TP /(TP + FN)]或特异性[TN /(TN + FP)]约为0.8。我们的结果表明,基于潜在的反应性官能团的存在及其局部环境的化学特征,可以合理合理地预测小分子化合物的代谢反应性。

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