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1a Deterministic compartmental disease modelling Method1 #714685
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+Citaten (1) - CitatenVoeg citaat toeList by: CiterankMapLink[1] Usage of Compartmental Models in Predicting COVID-19 Outbreaks
Citerend uit: Peijue Zhang, Kairui Feng, Yuqing Gong, Jieon Lee, Sara Lomonaco, Liang Zhao Publication date: 2 September 2022 Publication info: AAPS J. 2022 Sep 2;24(5):98. PMID: 36056223 PMCID: PMC9439263 Geciteerd door: David Price 7:55 PM 5 November 2023 GMT URL: DOI: https://doi.org/10.1208/s12248-022-00743-9
| Fragment- [The AAPS Journal, 2 September 2022]
Accurately predicting the spread of the SARS-CoV-2, the cause of the COVID-19 pandemic, is of great value for global regulatory authorities to overcome a number of challenges including medication shortage, outcome of vaccination, and control strategies planning. Modeling methods that are used to simulate and predict the spread of COVID-19 include compartmental model, structured metapopulations, agent-based networks, deep learning, and complex network, with compartmental modeling as one of the most widely used methods. Compartmental model has two noteworthy features, a flexible framework that allows users to easily customize the model structure and its high adaptivity that allows well-matured approaches (e.g., Bayesian inference and mixed-effects modeling) to improve parameter estimation. We retrospectively evaluated the prediction performances of the compartmental models on the CDC COVID-19 Mathematical Modeling webpage based on data collected between August 2020 and February 2021, and subsequently discussed in detail their corresponding model enhancement. Finally, we presented examples using the compartmental models to assist policymaking. By evaluating all models in parallel, we systemically evaluated the performance and evolution of using compartmental models for COVID-19 pandemic prediction. In summary, as a 100-year-old epidemic approach, the compartmental model presents a powerful tool that is extremely adaptive and can be readily customized and implemented to address new data or emerging needs during a pandemic. |
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