Literature DB >> 28188202

Progressive prediction of hospitalisation in the emergency department: uncovering hidden patterns to improve patient flow.

Yuval Barak-Corren1,2, Shlomo Hanan Israelit3,4, Ben Y Reis2,5.   

Abstract

INTRODUCTION: One of the factors contributing to ED crowding is the lengthy delay in transferring an admitted patient from the ED to an inpatient department (ie, boarding time). An earlier start of the admission process using an automatic hospitalisation prediction model could potentially shorten these delays and reduce crowding.
METHODS: Clinical, operational and demographic data were retrospectively collected on 80 880 visits to the ED of Rambam Health Care Campus in Haifa, Israel, from January 2011 to January 2012. Using these data, a logistic regression model was developed to predict patient disposition (hospitalisation vs discharge) at three progressive time points throughout the ED visit: within the first 10 min, within an hour and within 2 hours. The algorithm was trained on 50% of the data (n=40 440) and tested on the remaining 50%.
RESULTS: During the study time period, 58 197 visits ended in discharge and 22 683 in hospitalisation. Within 1 hour of presentation, our model was able to predict hospitalisation with a specificity of 90%, sensitivity of 94% and an AUCof 0.97. Early clinical decisions such as testing for calcium levels were found to be highly predictive of hospitalisations. In the Rambam ED, the use of such a prediction system would have the potential to save more than 250 patient hours per day.
CONCLUSIONS: Data collected by EDs in electronic medical records can be used within a progressive modelling framework to predict patient flow and improve clinical operations. This approach relies on commonly available data and can be applied across different healthcare settings. © Article author(s) (or their employer(s) unless otherwise stated in the text of the article) 2017. All rights reserved. No commercial use is permitted unless otherwise expressly granted.

Entities:  

Keywords:  communications; efficiency; emergency department management; hospitalisations; operational; research

Mesh:

Year:  2017        PMID: 28188202     DOI: 10.1136/emermed-2014-203819

Source DB:  PubMed          Journal:  Emerg Med J        ISSN: 1472-0205            Impact factor:   2.740


  12 in total

1.  A Gradient Boosting Machine Learning Model for Predicting Early Mortality in the Emergency Department Triage: Devising a Nine-Point Triage Score.

Authors:  Maximiliano Klug; Yiftach Barash; Sigalit Bechler; Yehezkel S Resheff; Talia Tron; Avi Ironi; Shelly Soffer; Eyal Zimlichman; Eyal Klang
Journal:  J Gen Intern Med       Date:  2019-11-01       Impact factor: 5.128

2.  Development of a low-dimensional model to predict admissions from triage at a pediatric emergency department.

Authors:  Fiona Leonard; John Gilligan; Michael J Barrett
Journal:  J Am Coll Emerg Physicians Open       Date:  2022-07-15

3.  Adding Continuous Vital Sign Information to Static Clinical Data Improves the Prediction of Length of Stay After Intubation: A Data-Driven Machine Learning Approach.

Authors:  David Castiñeira; Katherine R Schlosser; Alon Geva; Amir R Rahmani; Gaston Fiore; Brian K Walsh; Craig D Smallwood; John H Arnold; Mauricio Santillana
Journal:  Respir Care       Date:  2020-09       Impact factor: 2.258

4.  Prediction of patient disposition: comparison of computer and human approaches and a proposed synthesis.

Authors:  Yuval Barak-Corren; Isha Agarwal; Kenneth A Michelson; Todd W Lyons; Mark I Neuman; Susan C Lipsett; Amir A Kimia; Matthew A Eisenberg; Andrew J Capraro; Jason A Levy; Joel D Hudgins; Ben Y Reis; Andrew M Fine
Journal:  J Am Med Inform Assoc       Date:  2021-07-30       Impact factor: 4.497

5.  Revolution in Health Care: How Will Data Science Impact Doctor-Patient Relationships?

Authors:  Ivan Lerner; Raphaël Veil; Dinh-Phong Nguyen; Vinh Phuc Luu; Rodolphe Jantzen
Journal:  Front Public Health       Date:  2018-04-03

6.  Predicting hospital admission at emergency department triage using machine learning.

Authors:  Woo Suk Hong; Adrian Daniel Haimovich; R Andrew Taylor
Journal:  PLoS One       Date:  2018-07-20       Impact factor: 3.240

7.  Predicting adult neuroscience intensive care unit admission from emergency department triage using a retrospective, tabular-free text machine learning approach.

Authors:  Eyal Klang; Benjamin R Kummer; Neha S Dangayach; Amy Zhong; M Arash Kia; Prem Timsina; Ian Cossentino; Anthony B Costa; Matthew A Levin; Eric K Oermann
Journal:  Sci Rep       Date:  2021-01-14       Impact factor: 4.379

8.  Prediction of emergency department resource requirements during triage: An application of current natural language processing techniques.

Authors:  Nicholas W Sterling; Felix Brann; Rachel E Patzer; Mengyu Di; Megan Koebbe; Madalyn Burke; Justin D Schrager
Journal:  J Am Coll Emerg Physicians Open       Date:  2020-10-14

9.  Predicting Admissions From a Paediatric Emergency Department - Protocol for Developing and Validating a Low-Dimensional Machine Learning Prediction Model.

Authors:  Fiona Leonard; John Gilligan; Michael J Barrett
Journal:  Front Big Data       Date:  2021-04-16

10.  A NICE combination for predicting hospitalisation at the Emergency Department: a European multicentre observational study of febrile children.

Authors:  Dorine M Borensztajn; Nienke N Hagedoorn; Enitan D Carrol; Ulrich von Both; Juan Emmanuel Dewez; Marieke Emonts; Michiel van der Flier; Ronald de Groot; Jethro Herberg; Benno Kohlmaier; Emma Lim; Ian K Maconochie; Federico Martinon-Torres; Daan Nieboer; Ruud G Nijman; Rianne Oostenbrink; Marko Pokorn; Irene Rivero Calle; Franc Strle; Maria Tsolia; Clementien L Vermont; Shunmay Yeung; Dace Zavadska; Werner Zenz; Michael Levin; Henriette A Moll
Journal:  Lancet Reg Health Eur       Date:  2021-07-12
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