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Site of metabolism prediction for six biotransformations mediated by cytochromes P450

机译:由细胞色素介导的六种生物转移的代谢预测部位P450

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Motivation: One goal of metabolomics is to define and monitor the entire metabolite complement of a cell, while it is still far from reach since systematic and rapid approaches for determining the biotransformations of newly discovered metabolites are lacking. For drug development, such metabolic biotransformation of a new chemical entity (NICE) is of more interest because it may profoundly affect its bioavailability, activity and toxicrty profile. The use of In silico methods to predict the site of metabolism (SOM) in phase I cytochromes P450-mediated reactions is usually a starting point of metabolic pathway studies, which may also assist in the process of drug/lead optimization. Results: This article reports the Cytochromes P450 (CYP450)-mediated SOM prediction for the six most important metabolic reactions by incorporating the use of machine learning and semi-empirical quantum chemical calculations. Non-local models were developed on the basis of a large dataset comprising 1858 metabolic reactions extracted from 1034 heterogeneous chemicals. For validation, the overall accuracies of all six reaction types are higher than 0.81, four of which exceed 0.90. In further receiver operating characteristic (ROC) analyses, each of the SOM model gave a significant area under curve (AUC) value over 0.86, indicating a good predicting power. An external test was made on a previously published dataset, of which 80% of the experimentally observed SOMs can be correctly identified by applying the full set of our SOM models.
机译:动机:代谢组的一个目标是定义和监测细胞的整个代谢物补充,而缺乏用于确定新发现的代谢物生物转化的系统和快速方法仍然远离威胁。对于药物开发来说,这种新化学实体(漂亮)的这种代谢生物转化是更感兴趣的,因为它可能会对其生物利用度,活动和毒性概况深入影响。在I阶段I细胞中预测代谢(SOM)的二氧化硅方法的使用通常是代谢途径研究的起点,也可以有助于药物/铅优化过程。结果:本文通过结合使用机器学习和半经验量子化学计算,向六种最重要的代谢反应进行了细胞色素P450(CYP450)介导的SOM预测。基于包含从1034个异质化学物质提取的1858个代谢反应的大型数据集进行非局部模型。为了验证,所有六种反应类型的总体准确性高于0.81,其中4个超过0.90。在进一步的接收器操作特征(ROC)分析中,SOM模型中的每一个在曲线(AUC)值下的显着面积超过0.86,表示良好的预测功率。外部测试是在先前发表的数据集上进行的,其中可以通过应用全套我们的SOM模型来正确识别80%的实验观察到的SOM。

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