Sayama Hiroyuki, Takubo Hiroaki, Komura Hiroshi, Kogayu Motohiro, Iwaki Masahiro
Drug Metabolism & Pharmacokinetics Research Laboratories, Central Pharmaceutical Research Institute, Japan Tobacco Inc., Osaka, Japan,
AAPS J. 2014 Sep;16(5):1018-28. doi: 10.1208/s12248-014-9626-3. Epub 2014 Jun 11.
Quantitative prediction of the impact of chronic kidney disease (CKD) on drug disposition has become important for the optimal design of clinical studies in patients. In this study, clinical data of 151 compounds under CKD conditions were extensively surveyed, and alterations in pharmacokinetic parameters were evaluated. In CKD patients, the unbound hepatic intrinsic clearance decreased to a similar extent for drugs eliminated via hepatic metabolism by cytochrome P450, UDP-glucuronosyltransferase, and other mechanisms. Renal clearance showed a similar decrease to glomerular filtration rate, irrespective of the contribution of tubular secretion. The scaling factor (SF) obtained from the interquartile range of the relative change in each parameter was applied to the well-stirred model to predict clearance in patients. Hepatic and renal clearance could be successfully predicted for approximately half and two-thirds, respectively, of the applied compounds, showing the high utility of SFs. SFs were also introduced to a physiologically based pharmacokinetic (PBPK) model, and the plasma concentration profiles of 12 model compounds with different elimination pathways were predicted for CKD patients. The PBPK model combined with SFs provided good predictability for plasma concentration. The developed PBPK model with information on SFs would accelerate translational research in drug development by predicting pharmacokinetics in CKD patients.
慢性肾脏病(CKD)对药物处置影响的定量预测对于患者临床研究的优化设计已变得至关重要。在本研究中,广泛调查了151种化合物在CKD条件下的临床数据,并评估了药代动力学参数的变化。在CKD患者中,对于通过细胞色素P450、UDP - 葡萄糖醛酸转移酶和其他机制经肝脏代谢消除的药物,其非结合型肝脏内在清除率下降程度相似。无论肾小管分泌的贡献如何,肾清除率与肾小球滤过率呈相似程度的下降。从每个参数相对变化的四分位间距获得的比例因子(SF)应用于充分搅拌模型以预测患者的清除率。对于大约一半和三分之二的应用化合物,肝脏和肾脏清除率分别能够成功预测,显示出SF的高实用性。SF也被引入到基于生理的药代动力学(PBPK)模型中,并预测了12种具有不同消除途径的模型化合物在CKD患者中的血浆浓度曲线。结合SF的PBPK模型对血浆浓度具有良好的预测性。所开发的具有SF信息的PBPK模型将通过预测CKD患者的药代动力学来加速药物开发中的转化研究。