Model-based assessment of combination therapies - ranking of radiosensitizing agents in oncology
Journal article, 2023

BACKGROUND: To increase the chances of finding efficacious anticancer drugs, improve development times and reduce costs, it is of interest to rank test compounds based on their potential for human use as early as possible in the drug development process. In this paper, we present a method for ranking radiosensitizers using preclinical data. METHODS: We used data from three xenograft mice studies to calibrate a model that accounts for radiation treatment combined with radiosensitizers. A nonlinear mixed effects approach was utilized where between-subject variability and inter-study variability were considered. Using the calibrated model, we ranked three different Ataxia telangiectasia-mutated inhibitors in terms of anticancer activity. The ranking was based on the Tumor Static Exposure (TSE) concept and primarily illustrated through TSE-curves. RESULTS: The model described data well and the predicted number of eradicated tumors was in good agreement with experimental data. The efficacy of the radiosensitizers was evaluated for the median individual and the 95% population percentile. Simulations predicted that a total dose of 220 Gy (5 radiation sessions a week for 6 weeks) was required for 95% of tumors to be eradicated when radiation was given alone. When radiation was combined with doses that achieved at least 8 [Formula: see text] of each radiosensitizer in mouse blood, it was predicted that the radiation dose could be decreased to 50, 65, and 100 Gy, respectively, while maintaining 95% eradication. CONCLUSIONS: A simulation-based method for calculating TSE-curves was developed, which provides more accurate predictions of tumor eradication than earlier, analytically derived, TSE-curves. The tool we present can potentially be used for radiosensitizer selection before proceeding to subsequent phases of the drug discovery and development process.

Inter-study variability

Non-linear mixed effects

Radiation therapy

Tumor static exposure

Combination therapy

Author

Marcus Baaz

Fraunhofer-Chalmers Centre

Chalmers, Mathematical Sciences, Applied Mathematics and Statistics

Tim Cardilin

Fraunhofer-Chalmers Centre

Floriane Lignet

Merck KGaA

Astrid Zimmermann

Merck KGaA

S. El Bawab

Merck KGaA

Laboratoires Servier

Johan Gabrielsson

MedDoor AB

Mats Jirstrand

Fraunhofer-Chalmers Centre

BMC Cancer

14712407 (eISSN)

Vol. 23 1 409-

Subject Categories

Pharmaceutical Sciences

Radiology, Nuclear Medicine and Medical Imaging

Cancer and Oncology

DOI

10.1186/s12885-023-10899-y

PubMed

37149596

More information

Latest update

5/25/2023