Li Haiyan, Sun Jin, Fan Xiaowen, Sui Xiaofan, Zhang Lan, Wang Yongjun, He Zhonggui
Department of Biopharmaceutics, School of Pharmacy, Shenyang Pharmaceutical University, Shenyang, China.
J Comput Aided Mol Des. 2008 Nov;22(11):843-55. doi: 10.1007/s10822-008-9225-4. Epub 2008 Jun 24.
Quantitative structure-activity relationships (QSAR) methods are urgently needed for predicting ADME/T (absorption, distribution, metabolism, excretion and toxicity) properties to select lead compounds for optimization at the early stage of drug discovery, and to screen drug candidates for clinical trials. Use of suitable QSAR models ultimately results in lesser time-cost and lower attrition rate during drug discovery and development. In the case of ADME/T parameters, drug metabolism is a key determinant of metabolic stability, drug-drug interactions, and drug toxicity. QSAR models for predicting drug metabolism have undergone significant advances recently. However, most of the models used lack sufficient interpretability and offer poor predictability for novel drugs. In this review, we describe some considerations to be taken into account by QSAR for modeling drug metabolism, such as the accuracy/consistency of the entire data set, representation and diversity of the training and test sets, and variable selection. We also describe some novel statistical techniques (ensemble methods, multivariate adaptive regression splines and graph machines), which are not yet used frequently to develop QSAR models for drug metabolism. Subsequently, rational recommendations for developing predictable and interpretable QSAR models are made. Finally, the recent advances in QSAR models for cytochrome P450-mediated drug metabolism prediction, including in vivo hepatic clearance, in vitro metabolic stability, inhibitors and substrates of cytochrome P450 families, are briefly summarized.
在药物发现的早期阶段,迫切需要定量构效关系(QSAR)方法来预测药物的吸收、分布、代谢、排泄和毒性(ADME/T)特性,以选择先导化合物进行优化,并筛选用于临床试验的候选药物。使用合适的QSAR模型最终会在药物发现和开发过程中降低时间成本并降低损耗率。就ADME/T参数而言,药物代谢是代谢稳定性、药物相互作用和药物毒性的关键决定因素。用于预测药物代谢的QSAR模型最近取得了重大进展。然而,大多数使用的模型缺乏足够的可解释性,对新药的预测性也很差。在本综述中,我们描述了QSAR在药物代谢建模时应考虑的一些因素,例如整个数据集的准确性/一致性、训练集和测试集的代表性和多样性以及变量选择。我们还描述了一些尚未经常用于开发药物代谢QSAR模型的新颖统计技术(集成方法、多元自适应回归样条和图机器)。随后,针对开发可预测和可解释的QSAR模型提出了合理建议。最后,简要总结了用于细胞色素P450介导的药物代谢预测的QSAR模型的最新进展,包括体内肝脏清除率、体外代谢稳定性、细胞色素P450家族的抑制剂和底物。