Pfizer Worldwide R&D, Department of Pharmacokinetics, Dynamics and Metabolism, Sandwich, Kent, United Kingdom.
Drug Metab Dispos. 2012 May;40(5):1007-17. doi: 10.1124/dmd.111.042994. Epub 2012 Feb 16.
With efforts to reduce cytochrome P450-mediated clearance (CL) during the early stages of drug discovery, transporter-mediated CL mechanisms are becoming more prevalent. However, the prediction of plasma concentration-time profiles for such compounds using physiologically based pharmacokinetic (PBPK) modeling is far less established in comparison with that for compounds with passively mediated pharmacokinetics (PK). In this study, we have assessed the predictability of human PK for seven organic anion-transporting polypeptide (OATP) substrates (pravastatin, cerivastatin, bosentan, fluvastatin, rosuvastatin, valsartan, and repaglinide) for which clinical intravenous data were available. In vitro data generated from the sandwich culture human hepatocyte system were simultaneously fit to estimate parameters describing both uptake and biliary efflux. Use of scaled active uptake, passive distribution, and biliary efflux parameters as inputs into a PBPK model resulted in the overprediction of exposure for all seven drugs investigated, with the exception of pravastatin. Therefore, fitting of in vivo data for each individual drug in the dataset was performed to establish empirical scaling factors to accurately capture their plasma concentration-time profiles. Overall, active uptake and biliary efflux were under- and overpredicted, leading to average empirical scaling factors of 58 and 0.061, respectively; passive diffusion required no scaling factor. This study illustrates the mechanistic and model-driven application of in vitro uptake and efflux data for human PK prediction for OATP substrates. A particular advantage is the ability to capture the multiphasic plasma concentration-time profiles for such compounds using only preclinical data. A prediction strategy for novel OATP substrates is discussed.
在药物发现的早期阶段努力减少细胞色素 P450 介导的清除(CL)的过程中,转运体介导的 CL 机制变得越来越普遍。然而,与具有被动介导的药代动力学(PK)的化合物相比,使用基于生理学的药代动力学(PBPK)模型预测此类化合物的血浆浓度-时间曲线还远未得到充分确立。在这项研究中,我们评估了七种有机阴离子转运多肽(OATP)底物(普伐他汀、西立伐他汀、波生坦、氟伐他汀、罗苏伐他汀、缬沙坦和瑞格列奈)的人体 PK 可预测性,这些化合物具有临床静脉内数据。从夹心培养人肝细胞系统中生成的体外数据同时拟合,以估计描述摄取和胆汁外排的参数。将缩放的主动摄取、被动分布和胆汁外排参数用作输入到 PBPK 模型中,导致所有七种研究药物的暴露均被高估,普伐他汀除外。因此,对数据集内的每种药物的体内数据进行拟合,以建立经验性缩放因子,以准确捕获其血浆浓度-时间曲线。总体而言,主动摄取和胆汁外排被低估和高估,导致平均经验性缩放因子分别为 58 和 0.061;被动扩散不需要缩放因子。这项研究说明了体外摄取和外排数据在预测 OATP 底物的人体 PK 中的机制和模型驱动应用。一个特别的优势是仅使用临床前数据即可捕获此类化合物的多相血浆浓度-时间曲线。讨论了用于预测新型 OATP 底物的预测策略。