Literature DB >> 25324279

Physiologically based pharmacokinetic modeling to predict drug-drug interactions involving inhibitory metabolite: a case study of amiodarone.

Yuan Chen1, Jialin Mao2, Cornelis E C A Hop2.   

Abstract

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.
Copyright © 2014 by The American Society for Pharmacology and Experimental Therapeutics.

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Year:  2014        PMID: 25324279     DOI: 10.1124/dmd.114.059311

Source DB:  PubMed          Journal:  Drug Metab Dispos        ISSN: 0090-9556            Impact factor:   3.922


  13 in total

Review 1.  Physiologically Based Pharmacokinetic (PBPK) Modeling and Simulation Approaches: A Systematic Review of Published Models, Applications, and Model Verification.

Authors:  Jennifer E Sager; Jingjing Yu; Isabelle Ragueneau-Majlessi; Nina Isoherranen
Journal:  Drug Metab Dispos       Date:  2015-08-21       Impact factor: 3.922

2.  P450-Based Drug-Drug Interactions of Amiodarone and its Metabolites: Diversity of Inhibitory Mechanisms.

Authors:  Matthew G McDonald; Nicholas T Au; Allan E Rettie
Journal:  Drug Metab Dispos       Date:  2015-08-21       Impact factor: 3.922

3.  An S-warfarin and AZD1981 interaction: in vitro and clinical pilot data suggest the N-deacetylated amino acid metabolite as the primary perpetrator.

Authors:  Ken Grime; Rikard Pehrson; Pär Nordell; Michael Gillen; Wolfgang Kühn; Timothy Mant; Marie Brännström; Petter Svanberg; Barry Jones; Clive Brealey
Journal:  Br J Clin Pharmacol       Date:  2016-10-13       Impact factor: 4.335

4.  A Physiologically Based Pharmacokinetic Model of Amiodarone and its Metabolite Desethylamiodarone in Rats: Pooled Analysis of Published Data.

Authors:  Jing-Tao Lu; Ying Cai; Feng Chen; Wei-Wei Jia; Zhe-Yi Hu; Yuan-Sheng Zhao
Journal:  Eur J Drug Metab Pharmacokinet       Date:  2016-12       Impact factor: 2.441

5.  Applicability of a Single Time Point Strategy for the Prediction of Area Under the Concentration Curve of Linezolid in Patients: Superiority of Ctrough- over Cmax-Derived Linear Regression Models.

Authors:  Nuggehally R Srinivas; Muzeeb Syed
Journal:  Drugs R D       Date:  2016-03

6.  Quantitative Prediction of Drug-Drug Interactions Involving Inhibitory Metabolites in Drug Development: How Can Physiologically Based Pharmacokinetic Modeling Help?

Authors:  I E Templeton; Y Chen; J Mao; J Lin; H Yu; S Peters; M Shebley; M V Varma
Journal:  CPT Pharmacometrics Syst Pharmacol       Date:  2016-09-19

7.  Prediction of Drug-Drug Interactions with Bupropion and Its Metabolites as CYP2D6 Inhibitors Using a Physiologically-Based Pharmacokinetic Model.

Authors:  Caifu Xue; Xunjie Zhang; Weimin Cai
Journal:  Pharmaceutics       Date:  2017-12-21       Impact factor: 6.321

8.  A Drug-Drug Interaction Study to Evaluate the Effect of TAS-303 on CYP3A Activity in the Small Intestine and Liver.

Authors:  Yuji Kumagai; Tomoe Fujita; Mika Maeda; Yoshinobu Sasaki; Makoto Nagaoka; Jinhong Huang; Toru Takenaka; Masaki Kawai
Journal:  J Clin Pharmacol       Date:  2020-02-05       Impact factor: 3.126

Review 9.  Computational Modeling of Electrophysiology and Pharmacotherapy of Atrial Fibrillation: Recent Advances and Future Challenges.

Authors:  Márcia Vagos; Ilsbeth G M van Herck; Joakim Sundnes; Hermenegild J Arevalo; Andrew G Edwards; Jussi T Koivumäki
Journal:  Front Physiol       Date:  2018-09-04       Impact factor: 4.566

Review 10.  Cardiovascular Risk Management and Hepatitis C: Combining Drugs.

Authors:  Elise J Smolders; Peter J G Ter Horst; Sharon Wolters; David M Burger
Journal:  Clin Pharmacokinet       Date:  2019-05       Impact factor: 6.447

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