Computational algorithms for the analysis of cancer virotherapy model
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Date
2022
Authors
Raza, Ali
Baleanu, Dumitru
Rafiq, Muhammad
Abbas, Syed Zaheer
Siddique, Abubakar
Javed, Umer
Naz, Mehvish
Fatima, Arooj
Munawar, Tayyba
Batool, Hira
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Abstract
Cancer is a common term for many diseases that can affect any part of the body. In 2020, ten million people will die due to cancer. A worldwide leading cause of death is cancer by theWorld Health Organization (WHO) report. Interaction of cancer cells, viral therapy, and immune response are identified in this model. Mathematical and computational modeling is an effective tool to predict the dynamics of cancer virotherapy. The cell population is categorized into three parts like uninfected cells (x), infected cells (y), virus-free cells (v), and immune cells (z). The modeling of cancerlike diseases is based on the law of mass action (the rate of change of reacting substances is directly proportional to the product of interacting substances). Positivity, boundedness, equilibria, threshold analysis, are part of deterministic modeling. Later on, a numerical analysis is designed by using the standard and non-standard finite difference methods. The non-standard finite difference method is developed to study the long-term behavior of the cancer model. For its efficiency, a comparison of the methods is investigated.
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Keywords
Algorithms, Cancer Disease, Epidemic Model, Stability Analysis
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Citation
Raza, Ali;...et.al. (2022). "Computational algorithms for the analysis of cancer virotherapy model", Computers, Materials and Continua, Vol.71, No.2, pp.3621-3634.
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Source
Computers, Materials and Continua
Volume
71
Issue
2
Start Page
3621
End Page
3634