Development and Evaluation of an Automated Machine Learning Algorithm for In-Hospital Mortality Risk Adjustment Among Critical Care Patients.

Journal: Critical care medicine
Published Date:

Abstract

OBJECTIVES: Risk adjustment algorithms for ICU mortality are necessary for measuring and improving ICU performance. Existing risk adjustment algorithms are not widely adopted. Key barriers to adoption include licensing and implementation costs as well as labor costs associated with human-intensive data collection. Widespread adoption of electronic health records makes automated risk adjustment feasible. Using modern machine learning methods and open source tools, we developed and evaluated a retrospective risk adjustment algorithm for in-hospital mortality among ICU patients. The Risk of Inpatient Death score can be fully automated and is reliant upon data elements that are generated in the course of usual hospital processes.

Authors

  • Ryan J Delahanty
    Tenet Healthcare, Nashville, TN.
  • David Kaufman
    The Intensivist Group/Sound Physicians, Tacoma, WA.
  • Spencer S Jones
    Tenet Healthcare, Nashville, TN.