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Predicting the Metabolic Sites by Flavin-Containing Monooxygenase on Drug Molecules Using SVM Classification on Computed Quantum Mechanics and Circular Fingerprints Molecular Descriptors

机译:使用支持向量机分类的计算机量子力学和圆形指纹分子描述符通过含黄素的单加氧酶对药物分子的代谢位点进行预测

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摘要

As an important enzyme in Phase I drug metabolism, the flavin-containing monooxygenase (FMO) also metabolizes some xenobiotics with soft nucleophiles. The site of metabolism (SOM) on a molecule is the site where the metabolic reaction is exerted by an enzyme. Accurate prediction of SOMs on drug molecules will assist the search for drug leads during the optimization process. Here, some quantum mechanics features such as the condensed Fukui function and attributes from circular fingerprints (called Molprint2D) are computed and classified using the support vector machine (SVM) for predicting some potential SOMs on a series of drugs that can be metabolized by FMO enzymes. The condensed Fukui function fA representing the nucleophilicity of central atom A and the attributes from circular fingerprints accounting the influence of neighbors on the central atom. The total number of FMO substrates and non-substrates collected in the study is 85 and they are equally divided into the training and test sets with each carrying roughly the same number of potential SOMs. However, only N-oxidation and S-oxidation features were considered in the prediction since the available C-oxidation data was scarce. In the training process, the LibSVM package of WEKA package and the option of 10-fold cross validation are employed. The prediction performance on the test set evaluated by accuracy, Matthews correlation coefficient and area under ROC curve computed are 0.829, 0.659, and 0.877 respectively. This work reveals that the SVM model built can accurately predict the potential SOMs for drug molecules that are metabolizable by the FMO enzymes.
机译:作为一期药物代谢中的重要酶,含黄素的单加氧酶(FMO)还通过软亲核试剂代谢某些异生素。分子上的代谢位点(SOM)是由酶进行代谢反应的位点。药物分子上SOM的准确预测将有助于优化过程中寻找药物线索。在这里,使用支持向量机(SVM)计算并分类了一些量子力学特征,例如浓缩的Fukui函数和圆形指纹的属性(称为Molprint2D),以预测可被FMO酶代谢的一系列药物上的潜在SOM。 。浓缩的Fukui函数fA -表示中心原子A的亲核性,并且圆形指纹的属性说明了邻居对中心原子的影响。该研究中收集的FMO底物和非底物总数为85,将它们平均分为训练集和测试集,每套携带的潜在SOM数量大致相同。但是,由于缺乏可用的C-氧化数据,因此在预测中仅考虑了N-氧化和S-氧化特征。在培训过程中,采用了WEKA软件包的LibSVM软件包和10倍交叉验证选项。通过准确性,马修斯相关系数和计算的ROC曲线下面积评估的测试集的预测性能分别为0.829、0.659和0.877。这项工作表明,建立的SVM模型可以准确预测可被FMO酶代谢的药物分子的潜在SOM。

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  • 作者

    Chien-wei Fu; Thy-Hou Lin;

  • 作者单位
  • 年(卷),期 -1(12),1
  • 年度 -1
  • 页码 e0169910
  • 总页数 20
  • 原文格式 PDF
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