Yap C W, Xue Y, Li Z R, Chen Y Z
Bioinformatics and Drug Design Group, Department of Pharmacy and Centre for Computational Science and Engineering, National University of Singapore, Blk S16, Level 8, 3 Science Drive 2, Singapore 117543.
Curr Top Med Chem. 2006;6(15):1593-607. doi: 10.2174/156802606778108942.
Cytochrome P450 enzymes are responsible for phase I metabolism of the majority of drugs and xenobiotics. Identification of the substrates and inhibitors of these enzymes is important for the analysis of drug metabolism, prediction of drug-drug interactions and drug toxicity, and the design of drugs that modulate cytochrome P450 mediated metabolism. The substrates and inhibitors of these enzymes are structurally diverse. It is thus desirable to explore methods capable of predicting compounds of diverse structures without over-fitting. Support vector machine is an attractive method with these qualities, which has been employed for predicting the substrates and inhibitors of several cytochrome P450 isoenzymes as well as compounds of various other pharmacodynamic, pharmacokinetic, and toxicological properties. This article introduces the methodology, evaluates the performance, and discusses the underlying difficulties and future prospects of the application of support vector machines to in silico prediction of cytochrome P450 substrates and inhibitors.
细胞色素P450酶负责大多数药物和外源性物质的I相代谢。鉴定这些酶的底物和抑制剂对于药物代谢分析、药物-药物相互作用和药物毒性预测以及调节细胞色素P450介导代谢的药物设计至关重要。这些酶的底物和抑制剂在结构上多种多样。因此,需要探索能够预测不同结构化合物且不会过度拟合的方法。支持向量机是一种具有这些特性的有吸引力的方法,已被用于预测几种细胞色素P450同工酶的底物和抑制剂以及具有各种其他药效学、药代动力学和毒理学特性的化合物。本文介绍了该方法,评估了性能,并讨论了将支持向量机应用于细胞色素P450底物和抑制剂的计算机模拟预测的潜在困难和未来前景。