Consensus–Fuzzy Ecological Joint Therapy for Multitumor Populations
Jiayue Sun, Ying Yan, Huaguang Zhang, MING-RUI SHAO
Abstract
This article investigates a class of optimal joint therapeutic regimens based on adaptive dynamic programming (ADP) and generalized fuzzy hyperbolic model (GFHM) for multiple tumor populations subject to immune effects as well as multiple drugs. Obtaining a model of the abnormal proliferation process of single tumor cells with multiple interventions is then the first step to conducting the treatment. In this article, the trajectories of healthy and unhealthy systems are obtained by constructing a virtual affine proliferation model. A strong connected trace of multiple agents is further developed by constructing a Hamiltonian function of the drug delivery cost of the unhealthy system. ADP and GFHM are gathered as consensus–fuzzy policy iterative algorithms, in which convergence and stability are ensured and the optimal dosing scheme achieves tumor cell inhibition.