MATHEMATICAL MODELING OF CANCER
DOI:
https://doi.org/10.18623/rvd.v23.6215Keywords:
Process, Drug Therapy, Mathematical Model, Optimization, TheoryAbstract
Cancer treatment is a complex and multidisciplinary process, which requires the cooperation of various medical fields (biology, pharmacology, clinical medicine, etc.). Mathematical modeling is used as a powerful tool to analyze the effectiveness of drug therapy in cancer treatment and optimize the fight against the disease. This article will present mathematical models related to cancer treatment, theories on tumor cell growth, drug effects, and optimization of the treatment process.
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