首页> 美国卫生研究院文献>The Korean Journal of Physiology Pharmacology : Official Journal of the Korean Physiological Society and the Korean Society of Pharmacology >Prediction of pharmacokinetics and drug-drug interaction potential using physiologically based pharmacokinetic (PBPK) modeling approach: A case study of caffeine and ciprofloxacin
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Prediction of pharmacokinetics and drug-drug interaction potential using physiologically based pharmacokinetic (PBPK) modeling approach: A case study of caffeine and ciprofloxacin

机译:基于生理学药代动力学(PBPK)建模方法的药代动力学和药物相互作用的预测:以咖啡因和环丙沙星为例

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摘要

Over the last decade, physiologically based pharmacokinetics (PBPK) application has been extended significantly not only to predicting preclinical/human PK but also to evaluating the drug-drug interaction (DDI) liability at the drug discovery or development stage. Herein, we describe a case study to illustrate the use of PBPK approach in predicting human PK as well as DDI using in silico, in vivo and in vitro derived parameters. This case was composed of five steps such as: simulation, verification, understanding of parameter sensitivity, optimization of the parameter and final evaluation. Caffeine and ciprofloxacin were used as tool compounds to demonstrate the “fit for purpose” application of PBPK modeling and simulation for this study. Compared to caffeine, the PBPK modeling for ciprofloxacin was challenging due to several factors including solubility, permeability, clearance and tissue distribution etc. Therefore, intensive parameter sensitivity analysis (PSA) was conducted to optimize the PBPK model for ciprofloxacin. Overall, the increase in Cmax of caffeine by ciprofloxacin was not significant. However, the increase in AUC was observed and was proportional to the administered dose of ciprofloxacin. The predicted DDI and PK results were comparable to observed clinical data published in the literatures. This approach would be helpful in identifying potential key factors that could lead to significant impact on PBPK modeling and simulation for challenging compounds.
机译:在过去的十年中,基于生理的药代动力学(PBPK)应用已大大扩展,不仅用于预测临床前/人PK,而且还用于评估在药物发现或开发阶段的药物相互作用(DDI)责任。在这里,我们描述了一个案例研究,以说明PBPK方法在计算机,体内和体外衍生参数预测人类PK和DDI中的用途。该案例由五个步骤组成,例如:仿真,验证,对参数敏感性的理解,参数的优化和最终评估。咖啡因和环丙沙星被用作工具化合物,以证明本研究的PBPK建模和模拟的“适合目的”应用。与咖啡因相比,环丙沙星的PBPK模型具有许多挑战性,包括溶解度,通透性,清除率和组织分布等因素。因此,进行了密集参数敏感性分析(PSA)以优化环丙沙星的PBPK模型。总体而言,环丙沙星对咖啡因的Cmax的增加并不显着。然而,观察到AUC的增加并且与环丙沙星的给药剂量成比例。预测的DDI和PK结果与文献中观察到的临床数据相当。这种方法将有助于确定可能对PBPK建模和挑战性化合物的模拟产生重大影响的潜在关键因素。

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