Jeong Hyeon-Cheol, Chae Yoon-Jee, Shin Kwang-Hee
Research Institute of Pharmaceutical Sciences, College of Pharmacy, Kyungpook National University, Daegu 41566, Korea.
Research Institute of Pharmaceutical Sciences, College of Pharmacy, Woosuk University, Wanju 55338, Korea.
Transl Clin Pharmacol. 2022 Dec;30(4):201-211. doi: 10.12793/tcp.2022.30.e20. Epub 2022 Dec 21.
Nafamostat has been actively studied for its neuroprotective activity and effect on various indications, such as coronavirus disease 2019 (COVID-19). Nafamostat has low water solubility at a specific pH and is rapidly metabolized in the blood. Therefore, it is administered only intravenously, and its distribution is not well known. The main purposes of this study are to predict and evaluate the pharmacokinetic (PK) profiles of nafamostat in a virtual healthy population under various dosing regimens. The most important parameters were assessed using a physiologically based pharmacokinetic (PBPK) approach and global sensitivity analysis with the Sobol sensitivity analysis. A PBPK model was constructed using the SimCYP simulator. Data regarding the metabolism and clinical studies were extracted from the literature to assess the predicted results. The model was verified using the arithmetic mean maximum concentration (C), the area under the curve from 0 to the last time point (AUC), and AUC from 0 to infinity (AUC) ratio (predicted/observed), which were included in the 2-fold range. The simulation results suggested that the 2 dosing regimens for the treatment of COVID-19 used in the case reports could maintain the proposed effective concentration for inhibiting severe acute respiratory syndrome coronavirus 2 entry into the plasma and lung tissue. Global sensitivity analysis indicated that hematocrit, plasma half-life, and microsomal protein levels significantly influenced the systematic exposure prediction of nafamostat. Therefore, the PBPK modeling approach is valuable in predicting the PK profile and designing an appropriate dosage regimen.
纳法莫司他已针对其神经保护活性以及对多种适应症(如2019冠状病毒病(COVID-19))的作用进行了积极研究。纳法莫司他在特定pH值下的水溶性较低,且在血液中迅速代谢。因此,它仅通过静脉给药,其分布情况尚不清楚。本研究的主要目的是预测和评估纳法莫司他在虚拟健康人群中不同给药方案下的药代动力学(PK)特征。使用基于生理的药代动力学(PBPK)方法和基于Sobol敏感性分析的全局敏感性分析评估了最重要的参数。使用SimCYP模拟器构建了PBPK模型。从文献中提取了有关代谢和临床研究的数据以评估预测结果。使用算术平均最大浓度(C)、从0到最后一个时间点的曲线下面积(AUC)以及从0到无穷大的AUC(AUC)比值(预测值/观察值)对模型进行验证,这些比值在2倍范围内。模拟结果表明,病例报告中用于治疗COVID-19的两种给药方案可以维持提议的有效浓度,以抑制严重急性呼吸综合征冠状病毒2进入血浆和肺组织。全局敏感性分析表明,血细胞比容、血浆半衰期和微粒体蛋白水平对纳法莫司他的全身暴露预测有显著影响。因此,PBPK建模方法在预测PK特征和设计合适的给药方案方面具有重要价值。