Login / Signup

A downscaling approach to compare COVID-19 count data from databases aggregated at different spatial scales.

Andre PythonAndreas BenderMarta BlangiardoJanine B IllianYing LinBaoli LiuTim C D LucasSiwei TanYingying WenDavit SvanidzeJianwei Yin
Published in: Journal of the Royal Statistical Society. Series A, (Statistics in Society) (2021)
As the COVID-19 pandemic continues to threaten various regions around the world, obtaining accurate and reliable COVID-19 data is crucial for governments and local communities aiming at rigorously assessing the extent and magnitude of the virus spread and deploying efficient interventions. Using data reported between January and February 2020 in China, we compared counts of COVID-19 from near-real-time spatially disaggregated data (city level) with fine-spatial scale predictions from a Bayesian downscaling regression model applied to a reference province-level data set. The results highlight discrepancies in the counts of coronavirus-infected cases at the district level and identify districts that may require further investigation.
Keyphrases
  • sars cov
  • coronavirus disease
  • electronic health record
  • big data
  • south africa
  • peripheral blood
  • high resolution
  • machine learning
  • air pollution
  • deep learning