Site of metabolism prediction for six biotransformations mediated by cytochromes P450
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.
Mingyue Zheng Xiaomin Luo Qiancheng Shen Yong Wang Yun Du Weiliang Zhu Hualiang Jiang
Drug Discovery and Design Center, State Key Laboratory of Drug Research, Shanghai Institute of Mater Drug Discovery and Design Center, State Key Laboratory of Drug Research, Shanghai Institute of Mater
国际会议
武汉
英文
688-695
2010-09-01(万方平台首次上网日期,不代表论文的发表时间)