Use of Large Language Models to Assess the Likelihood of Epidemics From the Content of Tweets: Infodemiology Study.
Michael S DeinerNatalie A DeinerVagelis HristidisStephen D McLeodThuy A DoanThomas M LietmanTravis C PorcoPublished in: Journal of medical Internet research (2024)
These findings suggest that GPT prompting can efficiently assess the content of social media posts and indicate possible disease outbreaks to a degree of accuracy comparable to that of humans. Furthermore, we found that automated content analysis of tweets is related to tweet volume for conjunctivitis-related posts in some locations and to the occurrence of actual epidemics. Future work may improve the sensitivity and specificity of these methods for disease outbreak detection.