Predicting the Incidence of Pressure Ulcers in the Intensive Care Unit Using Machine Learning

  • Cramer E
  • Seneviratne M
  • Sharifi H
  • et al.
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Abstract

Background: Reducing hospital-acquired pressure ulcers (PUs) in intensive care units (ICUs) has emerged as an important quality metric for health systems internationally. Limited work has been done to characterize the profile of PUs in the ICU using observational data from the electronic health record (EHR). Consequently, there are limited EHR-based prognostic tools for determining a patient’s risk of PU development, with most institutions relying on nurse-calculated risk scores such as the Braden score to identify high-risk patients.Methods and Results: Using EHR data from 50,851 admissions in a tertiary ICU (MIMIC-III), we show that the prevalence of PUs at stage 2 or above is 7.8 percent. For the 1,690 admissions where a PU was recorded on day 2 or beyond, we evaluated the prognostic value of the Braden score measured within the first 24 hours. A high-risk Braden score (

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Cramer, E. M., Seneviratne, M. G., Sharifi, H., Ozturk, A., & Hernandez-Boussard, T. (2019). Predicting the Incidence of Pressure Ulcers in the Intensive Care Unit Using Machine Learning. EGEMs (Generating Evidence & Methods to Improve Patient Outcomes), 7(1), 49. https://doi.org/10.5334/egems.307

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