- Published
- 30 May 2023
- Journal article
Spatiotemporal modelling of the association between neighborhood factors and COVID-19 incidence rates in Scotland
- Authors
- Source
- The Professional Geographer
Abstract
This study aims to investigate the association between neighborhood-level factors and COVID-19 incidence in Scotland from a spatiotemporal perspective. The outcome variable is the COVID-19 incidence in Scotland. Based on the identification of the wave peaks for COVID-19 cases between 2020 and 2021, confirmed COVID-19 cases in Scotland can be divided into four phases. To model the COVID-19 incidence, sixteen neighborhood factors are chosen as the predictors. Geographical random forest models are used to examine spatiotemporal variation in major determinants of COVID-19 incidence. The spatial analysis indicates that proportion of religious people is the most strongly associated with COVID-19 incidence in southern Scotland, whereas particulate matter is the most strongly associated with COVID-19 incidence in northern Scotland. Also, crowded households, prepandemic emergency admission rates, and health and social workers are the most strongly associated with COVID-19 incidence in eastern and central Scotland, respectively. A possible explanation is that the association between predictors and COVID-19 incidence might be influenced by local context (e.g., people’s lifestyles), which is spatially variant across Scotland. The temporal analysis indicates that dominant factors associated with COVID-19 incidence also vary across different phases, suggesting that pandemic-related policy should take spatiotemporal variations into account.
Rights
This content is not covered by the Open Government Licence. Please see source record or item for information on rights and permissions.
Cite as
Wang, R., Clemens, T., Douglas, M., Keller, M. & van der Horst, D. 2023, 'Spatiotemporal modelling of the association between neighborhood factors and COVID-19 incidence rates in Scotland', The Professional Geographer. https://doi.org/10.1080/00330124.2023.2194363
Downloadable citations
Download HTML citationHTML Download BIB citationBIB Download RIS citationRISIdentifiers
- Repository URI
- https://eprints.gla.ac.uk/287649/