BMC Medical Informatics and Decision Making (Jan 2023)

Big data- and artificial intelligence-based hot-spot analysis of COVID-19: Gauteng, South Africa, as a case study

  • Benjamin Lieberman,
  • Jude Dzevela Kong,
  • Roy Gusinow,
  • Ali Asgary,
  • Nicola Luigi Bragazzi,
  • Joshua Choma,
  • Salah-Eddine Dahbi,
  • Kentaro Hayashi,
  • Deepak Kar,
  • Mary Kawonga,
  • Mduduzi Mbada,
  • Kgomotso Monnakgotla,
  • James Orbinski,
  • Xifeng Ruan,
  • Finn Stevenson,
  • Jianhong Wu,
  • Bruce Mellado

DOI
https://doi.org/10.1186/s12911-023-02098-3
Journal volume & issue
Vol. 23, no. 1
pp. 1 – 15

Abstract

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Abstract The coronavirus disease 2019 (COVID-19) has developed into a pandemic. Data-driven techniques can be used to inform and guide public health decision- and policy-makers. In generalizing the spread of a virus over a large area, such as a province, it must be assumed that the transmission occurs as a stochastic process. It is therefore very difficult for policy and decision makers to understand and visualize the location specific dynamics of the virus on a more granular level. A primary concern is exposing local virus hot-spots, in order to inform and implement non-pharmaceutical interventions. A hot-spot is defined as an area experiencing exponential growth relative to the generalised growth of the pandemic. This paper uses the first and second waves of the COVID-19 epidemic in Gauteng Province, South Africa, as a case study. The study aims provide a data-driven methodology and comprehensive case study to expose location specific virus dynamics within a given area. The methodology uses an unsupervised Gaussian Mixture model to cluster cases at a desired granularity. This is combined with an epidemiological analysis to quantify each cluster’s severity, progression and whether it can be defined as a hot-spot.

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