SBDiEM: A new mathematical model of infectious disease dynamics

•We introduce the SBDiEM approach for modeling, forecasting and nowcasting disease dynamics.•Our model can be adjusted to describe past outbreaks as well as COVID-19.•The novel methodology could have important implications for NHSs, international stakeholders and policy makers.•We aim at the improve...

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Veröffentlicht in:Chaos, solitons and fractals solitons and fractals, 2020-07, Vol.136, p.109828-109828, Article 109828
Hauptverfasser: Bekiros, Stelios, Kouloumpou, Dimitra
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Sprache:eng
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Zusammenfassung:•We introduce the SBDiEM approach for modeling, forecasting and nowcasting disease dynamics.•Our model can be adjusted to describe past outbreaks as well as COVID-19.•The novel methodology could have important implications for NHSs, international stakeholders and policy makers.•We aim at the improvement of outbreak control, vaccination and prevention strategies.•The model can be embedded into a global AI surveillance system for combating epidemic and pandemic outbreaks. A worldwide multi-scale interplay among a plethora of factors, ranging from micro-pathogens and individual or population interactions to macro-scale environmental, socio-economic and demographic conditions, entails the development of highly sophisticated mathematical models for robust representation of the contagious disease dynamics that would lead to the improvement of current outbreak control strategies and vaccination and prevention policies. Due to the complexity of the underlying interactions, both deterministic and stochastic epidemiological models are built upon incomplete information regarding the infectious network. Hence, rigorous mathematical epidemiology models can be utilized to combat epidemic outbreaks. We introduce a new spatiotemporal approach (SBDiEM) for modeling, forecasting and nowcasting infectious dynamics, particularly in light of recent efforts to establish a global surveillance network for combating pandemics with the use of artificial intelligence. This model can be adjusted to describe past outbreaks as well as COVID-19. Our novel methodology may have important implications for national health systems, international stakeholders and policy makers.
ISSN:0960-0779
1873-2887
0960-0779
DOI:10.1016/j.chaos.2020.109828