Chen Yuan, Mao Jialin, Hop Cornelis E C A
Drug Metabolism and Pharmacokinetics, Genentech Inc., South San Francisco, California
Drug Metabolism and Pharmacokinetics, Genentech Inc., South San Francisco, California.
Drug Metab Dispos. 2015 Feb;43(2):182-9. doi: 10.1124/dmd.114.059311. Epub 2014 Oct 16.
Evaluation of drug-drug interaction (DDI) involving circulating inhibitory metabolites of perpetrator drugs has recently drawn more attention from regulatory agencies and pharmaceutical companies. Here, using amiodarone (AMIO) as an example, we demonstrate the use of physiologically based pharmacokinetic (PBPK) modeling to assess how a potential inhibitory metabolite can contribute to clinically significant DDIs. Amiodarone was reported to increase the exposure of simvastatin, dextromethorphan, and warfarin by 1.2- to 2-fold, which was not expected based on its weak inhibition observed in vitro. The major circulating metabolite, mono-desethyl-amiodarone (MDEA), was later identified to have a more potent inhibitory effect. Using a combined "bottom-up" and "top-down" approach, a PBPK model was built to successfully simulate the pharmacokinetic profile of AMIO and MDEA, particularly their accumulation in plasma and liver after a long-term treatment. The clinical AMIO DDIs were predicted using the verified PBPK model with incorporation of cytochrome P450 inhibition from both AMIO and MDEA. The closest prediction was obtained for CYP3A (simvastatin) DDI when the competitive inhibition from both AMIO and MDEA was considered, for CYP2D6 (dextromethorphan) DDI when the competitive inhibition from AMIO and the competitive plus time-dependent inhibition from MDEA were incorporated, and for CYP2C9 (warfarin) DDI when the competitive plus time-dependent inhibition from AMIO and the competitive inhibition from MDEA were considered. The PBPK model with the ability to simulate DDI by considering dynamic change and accumulation of inhibitor (parent and metabolite) concentration in plasma and liver provides advantages in understanding the possible mechanism of clinical DDIs involving inhibitory metabolites.
涉及肇事药物循环抑制性代谢物的药物相互作用(DDI)评估最近引起了监管机构和制药公司的更多关注。在此,我们以胺碘酮(AMIO)为例,展示如何使用基于生理的药代动力学(PBPK)模型来评估潜在的抑制性代谢物如何导致具有临床意义的药物相互作用。据报道,胺碘酮可使辛伐他汀、右美沙芬和华法林的暴露量增加1.2至2倍,而这在体外观察到的其微弱抑制作用的基础上是无法预期的。后来发现主要循环代谢物单去乙基胺碘酮(MDEA)具有更强的抑制作用。采用“自下而上”和“自上而下”相结合的方法,构建了一个PBPK模型,成功模拟了AMIO和MDEA的药代动力学特征,特别是它们在长期治疗后在血浆和肝脏中的蓄积情况。使用经过验证的PBPK模型,并纳入AMIO和MDEA对细胞色素P450的抑制作用,预测了临床AMIO药物相互作用。当考虑AMIO和MDEA的竞争性抑制时,对CYP3A(辛伐他汀)药物相互作用的预测最为接近;当纳入AMIO的竞争性抑制和MDEA的竞争性加时间依赖性抑制时,对CYP2D6(右美沙芬)药物相互作用的预测最为接近;当考虑AMIO的竞争性加时间依赖性抑制和MDEA的竞争性抑制时,对CYP2C9(华法林)药物相互作用的预测最为接近。能够通过考虑血浆和肝脏中抑制剂(母体和代谢物)浓度的动态变化和蓄积来模拟药物相互作用的PBPK模型,在理解涉及抑制性代谢物的临床药物相互作用的可能机制方面具有优势。