Rapid optimization of drug combinations for the optimal angiostatic treatment of cancer

Author:

Weiss Andrea,Ding Xianting,van Beijnum Judy R.,Wong Ieong,Wong Tse J.,Berndsen Robert H.,Dormond Olivier,Dallinga Marchien,Shen Li,Schlingemann Reinier O.,Pili Roberto,Ho Chih-Ming,Dyson Paul J.,van den Bergh Hubert,Griffioen Arjan W.,Nowak-Sliwinska Patrycja

Abstract

AbstractDrug combinations can improve angiostatic cancer treatment efficacy and enable the reduction of side effects and drug resistance. Combining drugs is non-trivial due to the high number of possibilities. We applied a feedback system control (FSC) technique with a population-based stochastic search algorithm to navigate through the large parametric space of nine angiostatic drugs at four concentrations to identify optimal low-dose drug combinations. This implied an iterative approach of in vitro testing of endothelial cell viability and algorithm-based analysis. The optimal synergistic drug combination, containing erlotinib, BEZ-235 and RAPTA-C, was reached in a small number of iterations. Final drug combinations showed enhanced endothelial cell specificity and synergistically inhibited proliferation (p < 0.001), but not migration of endothelial cells, and forced enhanced numbers of endothelial cells to undergo apoptosis (p < 0.01). Successful translation of this drug combination was achieved in two preclinical in vivo tumor models. Tumor growth was inhibited synergistically and significantly (p < 0.05 and p < 0.01, respectively) using reduced drug doses as compared to optimal single-drug concentrations. At the applied conditions, single-drug monotherapies had no or negligible activity in these models. We suggest that FSC can be used for rapid identification of effective, reduced dose, multi-drug combinations for the treatment of cancer and other diseases.

Publisher

Springer Science and Business Media LLC

Subject

Cancer Research,Clinical Biochemistry,Physiology

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