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Towards a Platform Quantitative Systems Pharmacology (QSP) Model for Preclinical to Clinical Translation of Antibody Drug Conjugates (ADCs)

Overview
Publisher Springer
Specialty Pharmacology
Date 2023 Oct 3
PMID 37787918
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Abstract

A next generation multiscale quantitative systems pharmacology (QSP) model for antibody drug conjugates (ADCs) is presented, for preclinical to clinical translation of ADC efficacy. Two HER2 ADCs (trastuzumab-DM1 and trastuzumab-DXd) were used for model development, calibration, and validation. The model integrates drug specific experimental data including in vitro cellular disposition data, pharmacokinetic (PK) and tumor growth inhibition (TGI) data for T-DM1 and T-DXd, as well as system specific data such as properties of HER2, tumor growth rates, and volumes. The model incorporates mechanistic detail at the intracellular level, to account for different mechanisms of ADC processing and payload release. It describes the disposition of the ADC, antibody, and payload inside and outside of the tumor, including binding to off-tumor, on-target sinks. The resulting multiscale PK model predicts plasma and tumor concentrations of ADC and payload. Tumor payload concentrations predicted by the model were linked to a TGI model and used to describe responses following ADC administration to xenograft mice. The model was translated to humans and virtual clinical trial simulations were performed that successfully predicted progression free survival response for T-DM1 and T-DXd for the treatment of HER2+ metastatic breast cancer, including differential efficacy based upon HER2 expression status. In conclusion, the presented model is a step toward a platform QSP model and strategy for ADCs, integrating multiple types of data and knowledge to predict ADC efficacy. The model has potential application to facilitate ADC design, lead candidate selection, and clinical dosing schedule optimization.

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References
1.
Zhu A . Quantitative translational modeling to facilitate preclinical to clinical efficacy & toxicity translation in oncology. Future Sci OA. 2018; 4(5):FSO306. PMC: 5961452. DOI: 10.4155/fsoa-2017-0152. View

2.
van der Lee M, Groothuis P, Ubink R, van der Vleuten M, van Achterberg T, Loosveld E . The Preclinical Profile of the Duocarmycin-Based HER2-Targeting ADC SYD985 Predicts for Clinical Benefit in Low HER2-Expressing Breast Cancers. Mol Cancer Ther. 2015; 14(3):692-703. DOI: 10.1158/1535-7163.MCT-14-0881-T. View

3.
Betts A, Haddish-Berhane N, Tolsma J, Jasper P, King L, Sun Y . Preclinical to Clinical Translation of Antibody-Drug Conjugates Using PK/PD Modeling: a Retrospective Analysis of Inotuzumab Ozogamicin. AAPS J. 2016; 18(5):1101-1116. DOI: 10.1208/s12248-016-9929-7. View

4.
Lee S, Kim Y, Han W, Ryu H, Chang J, Cho N . Tumor growth rate of invasive breast cancers during wait times for surgery assessed by ultrasonography. Medicine (Baltimore). 2016; 95(37):e4874. PMC: 5402599. DOI: 10.1097/MD.0000000000004874. View

5.
Helmlinger G, Sokolov V, Peskov K, Hallow K, Kosinsky Y, Voronova V . Quantitative Systems Pharmacology: An Exemplar Model-Building Workflow With Applications in Cardiovascular, Metabolic, and Oncology Drug Development. CPT Pharmacometrics Syst Pharmacol. 2019; 8(6):380-395. PMC: 6617832. DOI: 10.1002/psp4.12426. View