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Evaluation of predictive capability of Bayesian spatio-temporal models for Covid-19 spread.

Andrew B Lawson
Published in: BMC medical research methodology (2023)
From a predictive point of view it is clear that spatio-temporal models applied to county level Covid-19 data within the US vary in how well they fit over time and also how well they predict future events. At different times, SIR case count models and also mortality models with cumulative counts perform better in terms of prediction. A fundamental result is that predictive capability of models varies over time and using the same model could lead to poor predictive performance. In addition it is clear that models addressing the spatial context for case counts (i.e. with lagged neighborhood terms) and cumulative case counts for mortality data are clearly better at modeling spatio-temporal data which is commonly available for the Covid-19 pandemic in different areas of the globe.
Keyphrases
  • coronavirus disease
  • sars cov
  • peripheral blood
  • big data
  • cardiovascular events
  • physical activity
  • type diabetes
  • risk factors
  • machine learning
  • cardiovascular disease
  • coronary artery disease
  • data analysis