Background Long boarding time in emergency department (ED) leads to increased morbidity and mortality. Prediction of admissions upon triage could improve ED care efficiency and decrease boarding time. Objective To develop a real-time automated model (MA) to predict admissions upon triage and compare this model with triage nurse prediction (TNP). Patients and methods A cross-sectional study was conducted in four EDs during 1 month. MA used only variables available upon triage and included in the national French Electronic Emergency Department Abstract. For each patient, the triage nurse assessed the hospitalization risk on a 10-point Likert scale. Performances of MA and TNP were compared using the area under the receiver operating characteristic curves, the accuracy, and the daily and hourly mean difference between predicted and observed number of admission. Results A total of 11 653 patients visited the EDs, and 19.5–24.7% were admitted according to the emergency. The area under the curves (AUCs) of TNP [0.815 (0.805–0.826)] and MA [0.815 (0.805–0.825)] were similar. Across EDs, the AUCs of TNP were significantly different (P0.2). Originally, using daily and hourly aggregated data, the percentage of errors concerning the number of predicted admission were 8.7 and 34.4%, respectively, for MA and 9.9 and 35.4%, respectively, for TNP. Conclusion A simple model using variables available in all EDs in France performed well to predict admission upon triage. However, when analyzed at an hourly level, it overestimated the number of inpatient beds needed by a third. More research is needed to define adequate use of these models. Correspondence to Guilhem Noel, MD, Observatoire Régional des Urgences PACA, Hyères, France, 145 chemin du Palyvestre, 83400 Hyères, France Tel: +33 049 196 8813; fax: +33 049 196 4676; e-mail: gnoel@orupaca.fr Received January 9, 2018 Accepted October 13, 2018 Copyright © 2019 Wolters Kluwer Health, Inc. All rights reserved.
from Emergency Medicine via xlomafota13 on Inoreader https://ift.tt/2Ejyo4v
Εγγραφή σε:
Σχόλια ανάρτησης (Atom)
Δημοφιλείς αναρτήσεις
-
Publication date: Available online 15 March 2018 Source: The Journal of Emergency Medicine Author(s): Eric J. Rebich, Stephanie S. Lee, J...
-
Background Hemostatic resuscitation principles have significantly changed adult trauma resuscitation over the past decade. Practice patterns...
-
Traumatic brain injury (TBI) is the leading cause of death among trauma patients. Patients under antithrombotic therapy (ATT) carry an incre...
-
Abstract Introduction The purpose of this study was to investigate the effects of alcohol intoxication in trauma patients in regard to its...
-
Objectives: To review women’s participation as faculty at five critical care conferences over 7 years. Design: Retrospective analysis of fiv...
-
Objectives: To develop an acute kidney injury risk prediction model using electronic health record data for longitudinal use in hospitalized...
-
Publication date: Available online 16 March 2018 Source: The Journal of Emergency Medicine Author(s): Austin T. Smith from Emergency...
-
We investigated the ability of bispectral index (BIS) monitoring to predict poor neurological outcome in out-of-hospital cardiac arrest (OHC...
-
Abstract The flow of information between different regions of the cortex is fundamental for brain function. Researchers use causality dete...
Δεν υπάρχουν σχόλια:
Δημοσίευση σχολίου