An Update to the Kaiser Permanente Inpatient Risk Adjustment Methodology Accurately Predicts In-Hospital Mortality: a Retrospective Cohort Study

J Gen Intern Med. 2023 Nov;38(15):3303-3312. doi: 10.1007/s11606-023-08245-w. Epub 2023 Jun 9.

Abstract

Background: Methods to accurately predict the risk of in-hospital mortality are important for applications including quality assessment of healthcare institutions and research.

Objective: To update and validate the Kaiser Permanente inpatient risk adjustment methodology (KP method) to predict in-hospital mortality, using open-source tools to measure comorbidity and diagnosis groups, and removing troponin which is difficult to standardize across modern clinical assays.

Design: Retrospective cohort study using electronic health record data from GEMINI. GEMINI is a research collaborative that collects administrative and clinical data from hospital information systems.

Participants: Adult general medicine inpatients at 28 hospitals in Ontario, Canada, between April 2010 and December 2022.

Main measures: The outcome was in-hospital mortality, modeled by diagnosis group using 56 logistic regressions. We compared models with and without troponin as an input to the laboratory-based acute physiology score. We fit and validated the updated method using internal-external cross-validation at 28 hospitals from April 2015 to December 2022.

Key results: In 938,103 hospitalizations with 7.2% in-hospital mortality, the updated KP method accurately predicted the risk of mortality. The c-statistic at the median hospital was 0.866 (see Fig. 3) (25th-75th 0.848-0.876, range 0.816-0.927) and calibration was strong for nearly all patients at all hospitals. The 95th percentile absolute difference between predicted and observed probabilities was 0.038 at the median hospital (25th-75th 0.024-0.057, range 0.006-0.118). Model performance was very similar with and without troponin in a subset of 7 hospitals, and performance was similar with and without troponin for patients hospitalized for heart failure and acute myocardial infarction.

Conclusions: An update to the KP method accurately predicted in-hospital mortality for general medicine inpatients in 28 hospitals in Ontario, Canada. This updated method can be implemented in a wider range of settings using common open-source tools.

Keywords: in-hospital mortality; inpatient care; risk adjustment; troponin; validation.

MeSH terms

  • Adult
  • Hospital Mortality
  • Humans
  • Inpatients*
  • Ontario / epidemiology
  • Retrospective Studies
  • Risk Adjustment* / methods
  • Troponin

Substances

  • Troponin