A predictive model to identify Parkinson disease from administrative claims data

作者:Nielsen Susan Searles; Warden Mark N; Camacho Soto Alejandra; Willis Allison W; Wright Brenton A; Racette Brad A
来源:Neurology, 2017, 89(14): 1448-1456.
DOI:10.1212/WNL.0000000000004536

摘要

Objective: To use administrative medical claims data to identify patients with incident Parkinson disease (PD) prior to diagnosis. Methods: Using a population-based case-control study of incident PD in 2009 among Medicare beneficiaries aged 66-90 years (89,790 cases, 118,095 controls) and the elastic net algorithm, we developed a cross-validated model for predicting PD using only demographic data and 2004-2009 Medicare claims data. We then compared this model to more basic models containing only demographic data and diagnosis codes for constipation, taste/smell disturbance, and REM sleep behavior disorder, using each model's receiver operator characteristic area under the curve (AUC). Results: We observed all established associations between PD and age, sex, race/ethnicity, tobacco smoking, and the above medical conditions. A model with those predictors had an AUC of only 0.670 (95% confidence interval [CI] 0.668-0.673). In contrast, the AUC for a predictive model with 536 diagnosis and procedure codes was 0.857 (95% CI 0.855-0.859). At the optimal cut point, sensitivity was 73.5% and specificity was 83.2%. Conclusions: Using only demographic data and selected diagnosis and procedure codes readily available in administrative claims data, it is possible to identify individuals with a high probability of eventually being diagnosed with PD.

  • 出版日期2017-10-3