Journal of International Medical Research (Mar 2023)

Artificial intelligence in public health: the potential of epidemic early warning systems

  • Chandini Raina MacIntyre,
  • Xin Chen,
  • Mohana Kunasekaran,
  • Ashley Quigley,
  • Samsung Lim,
  • Haley Stone,
  • Hye-young Paik,
  • Lina Yao,
  • David Heslop,
  • Wenzhao Wei,
  • Ines Sarmiento,
  • Deepti Gurdasani

DOI
https://doi.org/10.1177/03000605231159335
Journal volume & issue
Vol. 51

Abstract

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The use of artificial intelligence (AI) to generate automated early warnings in epidemic surveillance by harnessing vast open-source data with minimal human intervention has the potential to be both revolutionary and highly sustainable. AI can overcome the challenges faced by weak health systems by detecting epidemic signals much earlier than traditional surveillance. AI-based digital surveillance is an adjunct to—not a replacement of—traditional surveillance and can trigger early investigation, diagnostics and responses at the regional level. This narrative review focuses on the role of AI in epidemic surveillance and summarises several current epidemic intelligence systems including ProMED-mail, HealthMap, Epidemic Intelligence from Open Sources, BlueDot, Metabiota, the Global Biosurveillance Portal, Epitweetr and EPIWATCH. Not all of these systems are AI-based, and some are only accessible to paid users. Most systems have large volumes of unfiltered data; only a few can sort and filter data to provide users with curated intelligence. However, uptake of these systems by public health authorities, who have been slower to embrace AI than their clinical counterparts, is low. The widespread adoption of digital open-source surveillance and AI technology is needed for the prevention of serious epidemics.