Monamorn PrecharattanaWannapong TriampoCharin ModchangDarapond TriampoYongwimon LenburyMahidol UniversitySouth Carolina Commission on Higher EducationPERDO2018-09-242018-09-242010-12-01International Conference on Applied Computer Science - Proceedings. (2010), 375-380179248632-s2.0-79958721202https://repository.li.mahidol.ac.th/handle/20.500.14594/28989As infection of target immune cells by HIV mainly takes place in the lymphoid tissue, cellular automata (CA) models thus represent a significant step of understanding when the infected population is dispersed over the tissue. Motivated by these considerations, we have introduced a stochastic CA model for HIV dynamics and, particularly, explored its spatiotemporal pattern of infection. In good agreement, the model is successful to reproduce the typical evolution of HIV which is observed in the dynamics of CD4+T cells and infected CD+T cells in infected patients. The geographical result illustrates how infected cell distributions can be dispersed by spatial community. We have found that pattern formation is based on the relationship among cell states, the set of local transition rules, the conditions and the parameters in the system. The main finding is that the characteristics of dead cells barriers, which greatly control pattern formation in our system, take part in limiting the spread of infection, as well as in bringing the system dynamics toward the end phase of the time course of infection.Mahidol UniversityComputer ScienceSimulation of a stochastic cellular automata HIV/AIDS model for investigation of spatial pattern formation mediated by CD4+ T cells and HIV dynamicsConference PaperSCOPUS