Literature DB >> 25223698

Physiologically based pharmacokinetic modeling as a tool to predict drug interactions for antibody-drug conjugates.

Yuan Chen1, Divya Samineni, Sophie Mukadam, Harvey Wong, Ben-Quan Shen, Dan Lu, Sandhya Girish, Cornelis Hop, Jin Yan Jin, Chunze Li.   

Abstract

BACKGROUND AND OBJECTIVES: Monomethyl auristatin E (MMAE, a cytotoxic agent), upon releasing from valine-citrulline-MMAE (vc-MMAE) antibody-drug conjugates (ADCs), is expected to behave like small molecules. Therefore, evaluating the drug-drug interaction (DDI) potential associated with MMAE is important in the clinical development of ADCs. The objective of this work was to build a physiologically based pharmacokinetic (PBPK) model to assess MMAE-drug interactions for vc-MMAE ADCs.
METHODS: A PBPK model linking antibody-conjugated MMAE (acMMAE) to its catabolite unconjugated MMAE associated with vc-MMAE ADCs was developed using a mixed 'bottom-up' and 'top-down' approach. The model was developed using in silico and in vitro data and in vivo pharmacokinetic data from anti-CD22-vc-MMAE ADC. Subsequently, the model was validated using clinical pharmacokinetic data from another vc-MMAE ADC, brentuximab vedotin. Finally, the verified model was used to simulate the results of clinical DDI studies between brentuximab vedotin and midazolam, ketoconazole, and rifampicin.
RESULTS: The pharmacokinetic profile of acMMAE and unconjugated MMAE following administration of anti-CD22-vc-MMAE was well described by simulations using the developed PBPK model. The model's performance in predicting unconjugated MMAE pharmacokinetics was verified by successful simulation of the pharmacokinetic profile following brentuximab vedotin administration. The model simulated DDIs, expressed as area under the concentration-time curve (AUC) and maximum concentration (C max) ratios, were well within the two-fold of the observed data from clinical DDI studies.
CONCLUSIONS: This work is the first demonstration of the use of PBPK modelling to predict MMAE-based DDI potential. The described model can be extended to assess the DDI potential of other vc-MMAE ADCs.

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Year:  2015        PMID: 25223698     DOI: 10.1007/s40262-014-0182-x

Source DB:  PubMed          Journal:  Clin Pharmacokinet        ISSN: 0312-5963            Impact factor:   6.447


  13 in total

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4.  Bioanalysis of antibody-drug conjugates: American Association of Pharmaceutical Scientists Antibody-Drug Conjugate Working Group position paper.

Authors:  Boris Gorovits; Stephen C Alley; Sanela Bilic; Brian Booth; Surinder Kaur; Phillip Oldfield; Shobha Purushothama; Chetana Rao; Stacy Shord; Patricia Siguenza
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Review 5.  Utility of in vitro drug metabolism data in predicting in vivo metabolic clearance.

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6.  DCDT2980S, an anti-CD22-monomethyl auristatin E antibody-drug conjugate, is a potential treatment for non-Hodgkin lymphoma.

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Journal:  Methods Mol Biol       Date:  2013

9.  CYP3A-mediated drug-drug interaction potential and excretion of brentuximab vedotin, an antibody-drug conjugate, in patients with CD30-positive hematologic malignancies.

Authors:  Tae H Han; Ajay K Gopal; Radhakrishnan Ramchandren; Andre Goy; Robert Chen; Jeffrey V Matous; Maureen Cooper; Laurie E Grove; Stephen C Alley; Carmel M Lynch; Owen A O'Connor
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  14 in total

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7.  Development of a Physiologically-Based Pharmacokinetic Model for Whole-Body Disposition of MMAE Containing Antibody-Drug Conjugate in Mice.

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8.  Semi-mechanistic Multiple-Analyte Pharmacokinetic Model for an Antibody-Drug-Conjugate in Cynomolgus Monkeys.

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Review 9.  Clinical Pharmacology of Antibody-Drug Conjugates.

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Review 10.  Recent Advances in Development and Application of Physiologically-Based Pharmacokinetic (PBPK) Models: a Transition from Academic Curiosity to Regulatory Acceptance.

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Journal:  Curr Pharmacol Rep       Date:  2016-04-14
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