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Insights From Flutracking: Thirteen Tips to Growing a Web-Based Participatory Surveillance System.

Craig B DaltonSandra J CarlsonMichelle ButlerDaniel CassanoStephen ClarkeJohn FejsaDavid N Durrheim
Published in: JMIR public health and surveillance (2017)
Flutracking is a weekly Web-based survey of influenza-like illness (ILI) in Australia that has grown from 400 participants in 2006 to over 26,000 participants every week in 2016. Flutracking monitors both the transmission and severity of ILI across Australia by documenting symptoms (cough, fever, and sore throat), time off work or normal duties, influenza vaccination status, laboratory testing for influenza, and health seeking behavior. Recruitment of Flutrackers commenced via health department and other organizational email systems, and then gradually incorporated social media promotion and invitations from existing Flutrackers to friends to enhance participation. Invitations from existing participants typically contribute to over 1000 new participants each year. The Flutracking survey link was emailed every Monday morning in winter and took less than 10 seconds to complete. To reduce the burden on respondents, we collected only a minimal amount of demographic and weekly data. Additionally, to optimize users' experiences, we maintained a strong focus on "obvious design" and repeated usability testing of naïve and current participants of the survey. In this paper, we share these and other insights on recruitment methods and user experience principles that have enabled Flutracking to become one of the largest online participatory surveillance systems in the world. There is still much that could be enhanced in Flutracking; however, we believe these principles could benefit others developing similar online surveillance systems.
Keyphrases
  • social media
  • health information
  • public health
  • mental health
  • healthcare
  • cross sectional
  • electronic health record
  • randomized controlled trial
  • clinical trial
  • physical activity
  • big data
  • risk factors
  • risk assessment