Kunze Annett, Poller Birk, Huwyler Jörg, Camenisch Gian
Drug Metab Pers Ther. 2015 Sep;30(3):175-88. doi: 10.1515/dmdi-2015-0003.
During drug development, it is an important safety factor to identify the potential of new molecular entities to become a victim of drug-drug interactions (DDIs). In preclinical development, however, anticipation of clinical DDIs remains challenging due to the lack of in vivo human pharmacokinetic data.
We applied a recently developed in vitro-in vivo extrapolation method, including hepatic metabolism and transport processes, herein referred to as the Extended Clearance Concept Classification System (ECCCS). The human hepatic clearances and the victim DDI potentials were predicted for atorvastatin, cerivastatin, fluvastatin, lovastatin acid, pitavastatin, pravastatin, rosuvastatin, and simvastatin acid.
Hepatic statin clearances were well-predicted by the ECCCS with six out of eight clearances projected within a two-fold deviation to reported values. In addition, worst-case DDI predictions were projected for each statin. Based on the ECCCS class assignment (4 classes), the mechanistic interplay of metabolic and transport processes, resulting in different DDI risks, was well-reflected by our model. Furthermore, predictions of clinically observed statins DDIs in combination with relevant perpetrator drugs showed good quantitative correlations with clinical observations.
The ECCCS represents a powerful tool to anticipate the DDI potential of victim drugs based on in vitro drug metabolism and transport data.
在药物研发过程中,确定新分子实体成为药物相互作用(DDIs)受害者的可能性是一个重要的安全因素。然而,在临床前研发中,由于缺乏体内人体药代动力学数据,预测临床DDIs仍然具有挑战性。
我们应用了一种最近开发的体外-体内外推方法,该方法包括肝脏代谢和转运过程,在此称为扩展清除概念分类系统(ECCCS)。预测了阿托伐他汀、西立伐他汀、氟伐他汀、洛伐他汀酸、匹伐他汀、普伐他汀、瑞舒伐他汀和辛伐他汀酸的人体肝脏清除率和受害者DDI潜力。
ECCCS对他汀类药物的肝脏清除率预测良好,8个清除率中有6个预测值与报告值的偏差在两倍以内。此外,还对每种他汀类药物进行了最坏情况的DDI预测。基于ECCCS分类(4类),我们的模型很好地反映了代谢和转运过程的机制相互作用,导致不同的DDI风险。此外,对临床观察到的他汀类药物与相关肇事药物联合使用的DDIs预测与临床观察结果显示出良好的定量相关性。
ECCCS是一种基于体外药物代谢和转运数据预测受害者药物DDI潜力的强大工具。