Comparison Between Deterministic and Stochastic Model for Interaction (COVID-19) With Host Cells in Humans

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Ahmed M. Kareem
https://orcid.org/0000-0003-4041-9079
Saad Naji Al-Azzawi

Abstract

In this paper, the deterministic and the stochastic models are proposed to study the interaction of the Coronavirus (COVID-19) with host cells inside the human body. In the deterministic model, the value of the basic reproduction number   determines the persistence or extinction of the COVID-19. If   , one infected cell will transmit the virus to less than one cell, as a result,  the person carrying the Coronavirus will get rid of the disease .If   the infected cell  will be able to infect  all  cells that contain ACE receptors. The stochastic model proves that if  are sufficiently large then maybe  give  us ultimate disease extinction although ,  and this  facts also proved by computer simulation.

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Kareem AM, Al-Azzawi SN. Comparison Between Deterministic and Stochastic Model for Interaction (COVID-19) With Host Cells in Humans. Baghdad Sci.J [Internet]. 2022 Oct. 23 [cited 2022 Nov. 30];19(5):1140. Available from: https://bsj.uobaghdad.edu.iq/index.php/BSJ/article/view/6111
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