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Improving the accuracy of automated gout flare ascertainment using natural language processing of electronic health records and linked Medicare claims data.

Kazuki YoshidaTianrun CaiLily G BessetteErin KimSu Been LeeLuke E ZabotkaAlec SunJulianna M MastrorilliTheresa A OduolJun LiuDaniel H SolomonSeoyoung C KimRishi J DesaiKatherine P Liao
Published in: Pharmacoepidemiology and drug safety (2023)
Adding NLP concept variables to claims variables resulted in a small improvement in the identification of gout flares. Our data-driven claims-only model and our combined claims/NLP-concept model outperformed existing rule-based claims algorithms reliant on medication use, diagnosis, and procedure codes.
Keyphrases
  • health insurance
  • electronic health record
  • machine learning
  • affordable care act
  • deep learning
  • clinical decision support
  • minimally invasive
  • data analysis