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An Assessment of Mentions of Adverse Drug Events on Social Media With Natural Language Processing: Model Development and Analysis.

Deahan YuV G Vinod Vydiswaran
Published in: JMIR medical informatics (2022)
We observed a distinct improvement in the model when it used contextual information. However, our results reveal weak generalizability of the current systems to unseen data. Additional research is needed to fully utilize social media data and improve the robustness and reliability of natural language processing systems. The content analysis, on the other hand, showed that Twitter covered a sufficiently wide range of adverse drug events, as well as known adverse reactions, for the drugs mentioned in tweets. Our work demonstrates that social media can be a reliable data source for collecting adverse drug event mentions.
Keyphrases
  • social media
  • adverse drug
  • electronic health record
  • health information
  • emergency department
  • drug induced
  • big data
  • autism spectrum disorder
  • data analysis
  • gene expression