A contribution to the mathematical modeling of immune-cancer competition
Communications in Applied and Industrial Mathematics, ISSN: 2038-0909, Vol: 9, Issue: 2, Page: 76-90
2018
- 3Citations
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Article Description
This paper deals with the modeling of interactions between the immune system and cancer cells, in the framework of the mathematical kinetic theory for active particles. The work deepens a previous paper of Belloquid et al. that assumes spatial homogeneity and discrete values of the activity of cancer and immune cells. A number of simulations are made with the aim to investigate how the state of the various cell populations evolves in time depending on the choice of the free parameters.
Bibliographic Details
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