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

Autor: Yoshida, Kazuki, Cai, Tianrun, Bessette, Lily G., Kim, Erin, Lee, Su Been, Zabotka, Luke E., Sun, Alec, Mastrorilli, Julianna M., Oduol, Theresa A., Liu, Jun, Solomon, Daniel H., Kim, Seoyoung C., Desai, Rishi J., Liao, Katherine P.
Zdroj: Pharmacoepidemiology & Drug Safety; Jan2024, Vol. 33 Issue 1, p1-9, 9p
Abstrakt: Background: We aimed to determine whether integrating concepts from the notes from the electronic health record (EHR) data using natural language processing (NLP) could improve the identification of gout flares. Methods: Using Medicare claims linked with EHR, we selected gout patients who initiated the urate‐lowering therapy (ULT). Patients' 12‐month baseline period and on‐treatment follow‐up were segmented into 1‐month units. We retrieved EHR notes for months with gout diagnosis codes and processed notes for NLP concepts. We selected a random sample of 500 patients and reviewed each of their notes for the presence of a physician‐documented gout flare. Months containing at least 1 note mentioning gout flares were considered months with events. We used 60% of patients to train predictive models with LASSO. We evaluated the models by the area under the curve (AUC) in the validation data and examined positive/negative predictive values (P/NPV). Results: We extracted and labeled 839 months of follow‐up (280 with gout flares). The claims‐only model selected 20 variables (AUC = 0.69). The NLP concept‐only model selected 15 (AUC = 0.69). The combined model selected 32 claims variables and 13 NLP concepts (AUC = 0.73). The claims‐only model had a PPV of 0.64 [0.50, 0.77] and an NPV of 0.71 [0.65, 0.76], whereas the combined model had a PPV of 0.76 [0.61, 0.88] and an NPV of 0.71 [0.65, 0.76]. Conclusion: 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. [ABSTRACT FROM AUTHOR]
Databáze: Complementary Index