Modeling the dynamics of COVID-19 with real data from Thailand
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Publication Details
Author list: Alhassan Ibrahim, Usa Wannasingha Humphries, Parinya Sa Ngiamsunthorn, Isa Abdullahi Baba, Sania Qureshi & Amir Khan
Publisher: Nature Research
Publication year: 2023
Volume number: 13
Start page: 13082
ISSN: 2045-2322
eISSN: 2045-2322
URL: https://www.nature.com/articles/s41598-023-39798-9
Languages: English-Great Britain (EN-GB)
Abstract
In recent years, COVID-19 has evolved into many variants, posing new challenges for disease control and prevention. The Omicron variant, in particular, has been found to be highly contagious. In this study, we constructed and analyzed a mathematical model of COVID-19 transmission that incorporates vaccination and three different compartments of the infected population: asymptomatic (Ia), symptomatic (Is), and Omicron (Im). The model is formulated in the Caputo sense, which allows for fractional derivatives that capture the memory effects of the disease dynamics. We proved the existence and uniqueness of the solution of the model, obtained the effective reproduction number, showed that the model exhibits both endemic and disease-free equilibrium points, and showed that backward bifurcation can occur. Furthermore, we documented the effects of asymptomatic infected individuals on the disease transmission. We validated the model using real data from Thailand and found that vaccination alone is insufficient to completely eradicate the disease. We also found that Thailand must monitor asymptomatic individuals through stringent testing to halt and subsequently eradicate the disease. Our study provides novel insights into the behavior and impact of the Omicron variant and suggests possible strategies to mitigate its spread.
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