4.6 Article

Calibration drift in regression and machine learning models for acute kidney injury

期刊

出版社

OXFORD UNIV PRESS
DOI: 10.1093/jamia/ocx030

关键词

clinical prediction; machine learning; discrimination; calibration; acute kidney injury; clinical decision support

资金

  1. National Library of Medicine [5T15LM007450-15, 1R21LM011664-01]
  2. Veterans Health Administration [VA HSRD CDA-08-020, VA HSRD IIR 11-292, VA HSRD IIR 13-052, VA HSRD IIR 13-073]
  3. Edward Mallinckrodt Jr Foundation
  4. Vanderbilt Center for Kidney Disease

向作者/读者索取更多资源

Predictive analytics create opportunities to incorporate personalized risk estimates into clinical decision support. Models must be well calibrated to support decision-making, yet calibration deteriorates over time. This study explored the influence of modeling methods on performance drift and connected observed drift with data shifts in the patient population. Using 2003 admissions to Department of Veterans Affairs hospitals nationwide, we developed 7 parallel models for hospital-acquired acute kidney injury using common regression and machine learning methods, validating each over 9 subsequent years. Discrimination was maintained for all models. Calibration declined as all models increasingly overpredicted risk. However, the random forest and neural network models maintained calibration across ranges of probability, capturing more admissions than did the regression models. The magnitude of overprediction increased over time for the regression models while remaining stable and small for the machine learning models. Changes in the rate of acute kidney injury were strongly linked to increasing overprediction, while changes in predictor-outcome associations corresponded with diverging patterns of calibration drift across methods. Efficient and effective updating protocols will be essential for maintaining accuracy of, user confidence in, and safety of personalized risk predictions to support decision-making. Model updating protocols should be tailored to account for variations in calibration drift across methods and respond to periods of rapid performance drift rather than be limited to regularly scheduled annual or biannual intervals.

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