Skip to main content
Top
Published in: BMC Emergency Medicine 1/2019

Open Access 01-12-2019 | Research article

Real-time forecasting of emergency department arrivals using prehospital data

Authors: Andreas Asheim, Lars P. Bache-Wiig Bjørnsen, Lars E. Næss-Pleym, Oddvar Uleberg, Jostein Dale, Sara M. Nilsen

Published in: BMC Emergency Medicine | Issue 1/2019

Login to get access

Abstract

Background

Crowding in emergency departments (EDs) is a challenge globally. To counteract crowding in day-to-day operations, better tools to improve monitoring of the patient flow in the ED is needed. The objective of this study was the development of a continuously updated monitoring system to forecast emergency department (ED) arrivals on a short time-horizon incorporating data from prehospital services.

Methods

Time of notification and ED arrival was obtained for all 191,939 arrivals at the ED of a Norwegian university hospital from 2010 to 2018. An arrival notification was an automatically captured time stamp which indicated the first time the ED was notified of an arriving patient, typically by a call from an ambulance to the emergency service communication center. A Poisson time-series regression model for forecasting the number of arrivals on a 1-, 2- and 3-h horizon with continuous weekly and yearly cyclic effects was implemented. We incorporated time of arrival notification by modelling time to arrival as a time varying hazard function. We validated the model on the last full year of data.

Results

In our data, 20% of the arrivals had been notified more than 1 hour prior to arrival. By incorporating time of notification into the forecasting model, we saw a substantial improvement in forecasting accuracy, especially on a one-hour horizon. In terms of mean absolute prediction error, we observed around a six percentage-point decrease compared to a simplified prediction model. The increase in accuracy was particularly large for periods with large inflow.

Conclusions

The proposed model shows increased predictability in ED patient inflow when incorporating data on patient notifications. This approach to forecasting arrivals can be a valuable tool for logistic, decision making and ED resource management.
Appendix
Available only for authorised users
Literature
1.
go back to reference Hoot NR, Aronsky D. Systematic review of emergency department crowding: causes, effects, and solutions. Ann Emerg Med. 2008;52(2):126–136.e121.CrossRef Hoot NR, Aronsky D. Systematic review of emergency department crowding: causes, effects, and solutions. Ann Emerg Med. 2008;52(2):126–136.e121.CrossRef
2.
go back to reference Bernstein SL, Aronsky D, Duseja R, Epstein S, Handel D, Hwang U, McCarthy M, John McConnell K, Pines JM, Rathlev N, et al. The effect of emergency department crowding on clinically oriented outcomes. Acad Emerg Med. 2009;16(1):1–10.CrossRef Bernstein SL, Aronsky D, Duseja R, Epstein S, Handel D, Hwang U, McCarthy M, John McConnell K, Pines JM, Rathlev N, et al. The effect of emergency department crowding on clinically oriented outcomes. Acad Emerg Med. 2009;16(1):1–10.CrossRef
3.
go back to reference Eriksson CO, Stoner RC, Eden KB, Newgard CD, Guise J-M. The association between hospital capacity strain and inpatient outcomes in highly developed countries: a systematic review. J Gen Intern Med. 2017;32(6):686–96.CrossRef Eriksson CO, Stoner RC, Eden KB, Newgard CD, Guise J-M. The association between hospital capacity strain and inpatient outcomes in highly developed countries: a systematic review. J Gen Intern Med. 2017;32(6):686–96.CrossRef
4.
go back to reference McCarthy ML, Zeger SL, Ding R, Aronsky D, Hoot NR, Kelen GD. The challenge of predicting demand for emergency department services. Acad Emerg Med. 2008;15(4):337–46.CrossRef McCarthy ML, Zeger SL, Ding R, Aronsky D, Hoot NR, Kelen GD. The challenge of predicting demand for emergency department services. Acad Emerg Med. 2008;15(4):337–46.CrossRef
5.
go back to reference Morley C, Unwin M, Peterson GM, Stankovich J, Kinsman L. Emergency department crowding: a systematic review of causes, consequences and solutions. PLoS One. 2018;13(8):e0203316.CrossRef Morley C, Unwin M, Peterson GM, Stankovich J, Kinsman L. Emergency department crowding: a systematic review of causes, consequences and solutions. PLoS One. 2018;13(8):e0203316.CrossRef
6.
go back to reference Wargon M, Guidet B, Hoang TD, Hejblum G. A systematic review of models for forecasting the number of emergency department visits. Emerg Med J. 2009;26(6):395–9.CrossRef Wargon M, Guidet B, Hoang TD, Hejblum G. A systematic review of models for forecasting the number of emergency department visits. Emerg Med J. 2009;26(6):395–9.CrossRef
7.
go back to reference Boyle J, Jessup M, Crilly J, Green D, Lind J, Wallis M, Miller P, Fitzgerald G. Predicting emergency department admissions. Emerg Med J. 2012;29(5):358–65.CrossRef Boyle J, Jessup M, Crilly J, Green D, Lind J, Wallis M, Miller P, Fitzgerald G. Predicting emergency department admissions. Emerg Med J. 2012;29(5):358–65.CrossRef
8.
go back to reference Carvalho-Silva M, Monteiro MTT, Sá-Soares F, Dória-Nóbrega S. Assessment of forecasting models for patients arrival at emergency department. Oper Res Health Care. 2017;18:112–8.CrossRef Carvalho-Silva M, Monteiro MTT, Sá-Soares F, Dória-Nóbrega S. Assessment of forecasting models for patients arrival at emergency department. Oper Res Health Care. 2017;18:112–8.CrossRef
9.
go back to reference Bjørnsen LP, Uleberg O, Dale J. Patient visits to the emergency department at a Norwegian university hospital: variations in patient gender and age, timing of visits, and patient acuity. Emerg Med J. 2013;30(6):462–6.CrossRef Bjørnsen LP, Uleberg O, Dale J. Patient visits to the emergency department at a Norwegian university hospital: variations in patient gender and age, timing of visits, and patient acuity. Emerg Med J. 2013;30(6):462–6.CrossRef
10.
go back to reference Langlo NM, Orvik AB, Dale J, Uleberg O, Bjornsen LP. The acute sick and injured patients: an overview of the emergency department patient population at a Norwegian University hospital emergency department. Eur J Emerg Med. 2014;21(3):175–80.CrossRef Langlo NM, Orvik AB, Dale J, Uleberg O, Bjornsen LP. The acute sick and injured patients: an overview of the emergency department patient population at a Norwegian University hospital emergency department. Eur J Emerg Med. 2014;21(3):175–80.CrossRef
11.
go back to reference Lillebo B, Seim A, Vinjevoll O-P, Uleberg O. What is optimal timing for trauma team alerts? A retrospective observational study of alert timing effects on the initial management of trauma patients. J Multidiscip Healthc. 2012;5:207–13.CrossRef Lillebo B, Seim A, Vinjevoll O-P, Uleberg O. What is optimal timing for trauma team alerts? A retrospective observational study of alert timing effects on the initial management of trauma patients. J Multidiscip Healthc. 2012;5:207–13.CrossRef
12.
go back to reference Røislien J, Søvik S, Eken T. Seasonality in trauma admissions – are daylight and weather variables better predictors than general cyclic effects? PLoS One. 2018;13(2):e0192568.CrossRef Røislien J, Søvik S, Eken T. Seasonality in trauma admissions – are daylight and weather variables better predictors than general cyclic effects? PLoS One. 2018;13(2):e0192568.CrossRef
13.
go back to reference McCarthy DM, Scott GN, Courtney DM, Czerniak A, Aldeen AZ, Gravenor S, Dresden SM. What did you google? Describing online health information search patterns of ED patients and their relationship with final diagnoses. Western J Emerg Med. 2017;18(5):928–36.CrossRef McCarthy DM, Scott GN, Courtney DM, Czerniak A, Aldeen AZ, Gravenor S, Dresden SM. What did you google? Describing online health information search patterns of ED patients and their relationship with final diagnoses. Western J Emerg Med. 2017;18(5):928–36.CrossRef
14.
go back to reference Bergs J, Heerinckx P, Verelst S. Knowing what to expect, forecasting monthly emergency department visits: a time-series analysis. Int Emerg Nurs. 2014;22(2):112–5.CrossRef Bergs J, Heerinckx P, Verelst S. Knowing what to expect, forecasting monthly emergency department visits: a time-series analysis. Int Emerg Nurs. 2014;22(2):112–5.CrossRef
15.
go back to reference Jones SS, Thomas A, Evans RS, Welch SJ, Haug PJ, Snow GL. Forecasting daily patient volumes in the emergency department. Acad Emerg Med. 2008;15(2):159–70.CrossRef Jones SS, Thomas A, Evans RS, Welch SJ, Haug PJ, Snow GL. Forecasting daily patient volumes in the emergency department. Acad Emerg Med. 2008;15(2):159–70.CrossRef
16.
go back to reference Morris ZS, Boyle A, Beniuk K, Robinson S. Emergency department crowding: towards an agenda for evidence-based intervention. Emerg Med J. 2012;29(6):460–6.CrossRef Morris ZS, Boyle A, Beniuk K, Robinson S. Emergency department crowding: towards an agenda for evidence-based intervention. Emerg Med J. 2012;29(6):460–6.CrossRef
Metadata
Title
Real-time forecasting of emergency department arrivals using prehospital data
Authors
Andreas Asheim
Lars P. Bache-Wiig Bjørnsen
Lars E. Næss-Pleym
Oddvar Uleberg
Jostein Dale
Sara M. Nilsen
Publication date
01-12-2019
Publisher
BioMed Central
Published in
BMC Emergency Medicine / Issue 1/2019
Electronic ISSN: 1471-227X
DOI
https://doi.org/10.1186/s12873-019-0256-z

Other articles of this Issue 1/2019

BMC Emergency Medicine 1/2019 Go to the issue