Publication | Closed Access
Optimal Intervention in Markovian Gene Regulatory Networks With Random-Length Therapeutic Response to Antitumor Drug
21
Citations
18
References
2013
Year
Cancer ManagementTumor CellsAntitumor DrugGene Regulatory NetworkTumor BiologyOncologyTumor HeterogeneityBiological NetworkEffective Cancer TreatmentsRandom-length Therapeutic ResponseRadiation OncologyCancer ResearchHealth SciencesOptimal InterventionPathway AnalysisCancer TreatmentCell BiologyTumor MicroenvironmentMarkov Decision ProcessComputational BiologyTumor Growth InhibitionCancer GenomicsRegulatory Network ModellingSystems BiologyMedicineCancer Growth
The most effective cancer treatments are the ones that prolong patients' lives while offering a reasonable quality of life during and after treatment. The treatments must also carry out their actions rapidly and with high efficiency such that a very large percentage of tumor cells die or shift into a state where they stop proliferating. Due to biological and microenvironmental variabilities within tumor cells, the action period of an administered drug can vary among a population of patients. In this paper, based on a recently proposed model for tumor growth inhibition, we first probabilistically characterize the variability of the length of drug action. Then, we present a methodology to devise optimal intervention strategies for any Markovian genetic regulatory network governing the tumor when the antitumor drug has a random-length duration of action.
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