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Identifying Methods for Monitoring Foodborne Illness: Review of Existing Public Health Surveillance Techniques.

Rachel A OldroydMichelle A MorrisMark Birkin
Published in: JMIR public health and surveillance (2018)
By analyzing studies in digital epidemiology, computer science, and public health, this paper has identified and analyzed methods of disease monitoring that can be transferred to foodborne disease surveillance. These methods fall into 4 main categories: basic approach, classification and regression, clustering approaches, and lexicon-based approaches. Although studies using a basic approach to calculate disease incidence generally report good performance against baseline measures, they are sensitive to chatter generated by media reports. More computationally advanced approaches are required to filter spurious messages and protect predictive systems against false alarms. Research using consumer-generated data for monitoring influenza-like illness is expansive; however, research regarding the use of restaurant reviews and social media data in the context of food safety is limited. Considering the advantages reported in this review, methods using consumer-generated data for foodborne disease surveillance warrant further investment.
Keyphrases
  • public health
  • social media
  • health information
  • electronic health record
  • big data
  • risk factors
  • deep learning
  • systematic review
  • single cell
  • risk assessment
  • case control
  • meta analyses