Cherkaoui-Rbati Mohammed H, Paine Stuart W, Littlewood Peter, Rauch Cyril
School of Veterinary Medicine and Science, University of Nottingham, Sutton Bonington, Leicestershire, United Kingdom.
Vertex Pharmaceuticals (Europe) Limited, Abingdon, Oxfordshire, United Kingdom.
PLoS One. 2017 Sep 14;12(9):e0183794. doi: 10.1371/journal.pone.0183794. eCollection 2017.
All pharmaceutical companies are required to assess pharmacokinetic drug-drug interactions (DDIs) of new chemical entities (NCEs) and mathematical prediction helps to select the best NCE candidate with regard to adverse effects resulting from a DDI before any costly clinical studies. Most current models assume that the liver is a homogeneous organ where the majority of the metabolism occurs. However, the circulatory system of the liver has a complex hierarchical geometry which distributes xenobiotics throughout the organ. Nevertheless, the lobule (liver unit), located at the end of each branch, is composed of many sinusoids where the blood flow can vary and therefore creates heterogeneity (e.g. drug concentration, enzyme level). A liver model was constructed by describing the geometry of a lobule, where the blood velocity increases toward the central vein, and by modeling the exchange mechanisms between the blood and hepatocytes. Moreover, the three major DDI mechanisms of metabolic enzymes; competitive inhibition, mechanism based inhibition and induction, were accounted for with an undefined number of drugs and/or enzymes. The liver model was incorporated into a physiological-based pharmacokinetic (PBPK) model and simulations produced, that in turn were compared to ten clinical results. The liver model generated a hierarchy of 5 sinusoidal levels and estimated a blood volume of 283 mL and a cell density of 193 × 106 cells/g in the liver. The overall PBPK model predicted the pharmacokinetics of midazolam and the magnitude of the clinical DDI with perpetrator drug(s) including spatial and temporal enzyme levels changes. The model presented herein may reduce costs and the use of laboratory animals and give the opportunity to explore different clinical scenarios, which reduce the risk of adverse events, prior to costly human clinical studies.
所有制药公司都需要评估新化学实体(NCEs)的药代动力学药物-药物相互作用(DDIs),并且在进行任何成本高昂的临床研究之前,数学预测有助于选择在DDI导致的不良反应方面最佳的NCE候选物。目前大多数模型都假定肝脏是一个均匀的器官,其中大部分代谢过程发生于此。然而,肝脏的循环系统具有复杂的层次结构,可将外源性物质分布于整个器官。尽管如此,位于每个分支末端的肝小叶(肝脏单位)由许多血窦组成,血流在这些血窦中可能会有所不同,因此会产生异质性(例如药物浓度、酶水平)。通过描述肝小叶的几何形状构建了一个肝脏模型,其中血流速度朝着中央静脉增加,并对血液与肝细胞之间的交换机制进行建模。此外,还考虑了代谢酶的三种主要DDI机制;竞争性抑制、基于机制的抑制和诱导,涉及数量不定的药物和/或酶。将肝脏模型纳入基于生理学的药代动力学(PBPK)模型并进行模拟,然后将模拟结果与十个临床结果进行比较。肝脏模型生成了5个血窦水平的层次结构,并估计肝脏中的血容量为283 mL,细胞密度为193×106个细胞/g。整体PBPK模型预测了咪达唑仑的药代动力学以及与肇事药物的临床DDI的程度,包括空间和时间上酶水平的变化。本文提出的模型可能会降低成本和减少实验动物的使用,并提供机会在进行成本高昂的人体临床研究之前探索不同的临床情况,从而降低不良事件的风险。