Back to Search Start Over

Deterioration Index in Critically Injured Patients: A Feasibility Analysis

Authors :
Rebecca Wu
Alison Smith
Tommy Brown
John P. Hunt
Patrick Greiffenstein
Sharven Taghavi
Danielle Tatum
Olan Jackson-Weaver
Juan Duchesne
Source :
Journal of Surgical Research. 281:45-51
Publication Year :
2023
Publisher :
Elsevier BV, 2023.

Abstract

Continuous prediction surveillance modeling is an emerging tool giving dynamic insight into conditions with potential mitigation of adverse events (AEs) and failure to rescue. The Epic electronic medical record contains a Deterioration Index (DI) algorithm that generates a prediction score every 15 min using objective data. Previous validation studies show rapid increases in DI score (≥14) predict a worse prognosis. The aim of this study was to demonstrate the utility of DI scores in the trauma intensive care unit (ICU) population.A prospective, single-center study of trauma ICU patients in a Level 1 trauma center was conducted during a 3-mo period. Charts were reviewed every 24 h for minimum and maximum DI score, largest score change (Δ), and AE. Patients were grouped as low risk (ΔDI14) or high risk (ΔDI ≥14).A total of 224 patients were evaluated. High-risk patients were more likely to experience AEs (69.0% versus 47.6%, P = 0.002). No patients with DI scores30 were readmitted to the ICU after being stepped down to the floor. Patients that were readmitted and subsequently died all had DI scores of ≥60 when first stepped down from the ICU.This study demonstrates DI scores predict decompensation risk in the surgical ICU population, which may otherwise go unnoticed in real time. This can identify patients at risk of AE when transferred to the floor. Using the DI model could alert providers to increase surveillance in high-risk patients to mitigate unplanned returns to the ICU and failure to rescue.

Details

ISSN :
00224804
Volume :
281
Database :
OpenAIRE
Journal :
Journal of Surgical Research
Accession number :
edsair.doi.dedup.....d0df65bb0ff7f763fa469774238bd453
Full Text :
https://doi.org/10.1016/j.jss.2022.08.019