Incorporating global dynamics to improve the accuracy of disease models: Example of a COVID-19 SIR model
Hadeel AlQadi (1,2), Majid Bani-Yaghoub (1) ((1) Department of, Mathematics, Statistics, University of Missouri-Kansas City, Kansas City,, Missouri, United States of America (2) Department of Mathematics, Jazan, University, Saudi Arabia)

TL;DR
This paper enhances COVID-19 disease modeling by integrating global travel dynamics into the standard SIR model, leading to more accurate predictions of infection trends in Kansas City.
Contribution
The study introduces a global dynamics extension to the standard SIR model, improving its predictive accuracy for COVID-19 by accounting for international travel and quarantine effects.
Findings
Extended SIR model outperforms standard model in accuracy.
Model reveals oscillatory infection behaviors.
Global dynamics significantly improve disease prediction.
Abstract
Mathematical models of infectious diseases exhibit robust dynamics such as stable endemic or a disease-free equilibrium, or convergence of the solutions to periodic epidemic waves. The present work shows that the accuracy of such dynamics can be significantly improved by incorporating both local and global dynamics of the infection in disease models. To demonstrate improved accuracies, we extended a standard Susceptible-Infected-Recovered (SIR) model by incorporating global dynamics of the COVID-19 pandemic. The extended SIR model assumes three possibilities for the susceptible individuals traveling outside of their community: They can return to the community without any exposure to the infection, they can be exposed and develop symptoms after returning to the community, or they can be tested positive during the trip and remain quarantined until fully recovered. To examine the…
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