Cellular-automaton simulation of tumor growth dynamics: from computational implementation to case analysis
Resumen
Mathematical oncology explores the development and application of models to cancer-related phenomena [5]. As an important advantage, mathematical models can test and reproduce several scenarios, which could be either unfeasible or impossible through in vitro experiments. [...]
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