Adding Space to Disease Models: A Case Study with COVID-19 in Oregon, USA
Título
Adding Space to Disease Models: A Case Study with COVID-19 in Oregon, USA
Autor
Nathan H. Schumaker, Sydney M. Watkins
Descripción
We selected the COVID-19 outbreak in the state of Oregon, USA as a system for developing a general geographically nuanced epidemiological forecasting model that balances simplicity, realism, and accessibility. Using the life history simulator HexSim, we inserted a mathematical SIRD disease model into a spatially explicit framework, creating a distributed array of linked compartment models. Our spatial model introduced few additional parameters, but casting the SIRD equations into a geographic setting significantly altered the system’s emergent dynamics. Relative to the non-spatial model, our simple spatial model better replicated the record of observed infection rates in Oregon. We also observed that estimates of vaccination efficacy drawn from the non-spatial model tended to be higher than those obtained from models that incorporate geographic variation. Our spatially explicit SIRD simulations of COVID-19 in Oregon suggest that modest additions of spatial complexity can bring considerable realism to a traditional disease model.
Fecha
2021
Materia
epidemiology, covid-19, SIRD-model, simulation model, spatially-explicit model, HexSim
Identificador
10.3390/land10040438
Fuente
Epidemiology and Health
Editor
Korean Society of Epidemiology
Cobertura
Agriculture
Colección
Citación
Nathan H. Schumaker, Sydney M. Watkins, “Adding Space to Disease Models: A Case Study with COVID-19 in Oregon, USA,” SOCICT Open, consulta 18 de abril de 2026, https://www.socictopen.socict.org/items/show/10458.
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