PLoS ONE (Jan 2013)

Influenza-like illness surveillance on Twitter through automated learning of naïve language.

  • Francesco Gesualdo,
  • Giovanni Stilo,
  • Eleonora Agricola,
  • Michaela V Gonfiantini,
  • Elisabetta Pandolfi,
  • Paola Velardi,
  • Alberto E Tozzi

DOI
https://doi.org/10.1371/journal.pone.0082489
Journal volume & issue
Vol. 8, no. 12
p. e82489

Abstract

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Twitter has the potential to be a timely and cost-effective source of data for syndromic surveillance. When speaking of an illness, Twitter users often report a combination of symptoms, rather than a suspected or final diagnosis, using naïve, everyday language. We developed a minimally trained algorithm that exploits the abundance of health-related web pages to identify all jargon expressions related to a specific technical term. We then translated an influenza case definition into a Boolean query, each symptom being described by a technical term and all related jargon expressions, as identified by the algorithm. Subsequently, we monitored all tweets that reported a combination of symptoms satisfying the case definition query. In order to geolocalize messages, we defined 3 localization strategies based on codes associated with each tweet. We found a high correlation coefficient between the trend of our influenza-positive tweets and ILI trends identified by US traditional surveillance systems.