Predicting patient arrivals to an accident and emergency department

Emerg Med J. 2009 Apr;26(4):241-4. doi: 10.1136/emj.2007.051656.

Abstract

Objectives: To characterise and forecast daily patient arrivals into an accident and emergency (A&E) department based on previous arrivals data.

Methods: Arrivals between 1 April 2002 and 31 March 2007 to a busy case study A&E department were allocated to one of two arrival streams (walk-in or ambulance) by mode of arrival and then aggregated by day. Using the first 4 years of patient arrival data as a "training" set, a structural time series (ST) model was fitted to characterise each arrival stream. These models were used to forecast walk-in and ambulance arrivals for 1-7 days ahead and then compared with the observed arrivals given by the remaining 1 year of "unseen" data.

Results: Walk-in arrivals exhibited a strong 7-day (weekly) seasonality, with ambulance arrivals showing a distinct but much weaker 7-day seasonality. The model forecasts for walk-in arrivals showed reasonable predictive power (r = 0.6205). However, the ambulance arrivals were harder to characterise (r = 0.2951).

Conclusions: The two separate arrival streams exhibit different statistical characteristics and so require separate time series models. It was only possible to accurately characterise and forecast walk-in arrivals; however, these model forecasts will still assist hospital managers at the case study hospital to best use the resources available and anticipate periods of high demand since walk-in arrivals account for the majority of arrivals into the A&E department.

MeSH terms

  • Ambulances / statistics & numerical data
  • Emergency Service, Hospital / organization & administration
  • Emergency Service, Hospital / statistics & numerical data*
  • Forecasting
  • Health Services Needs and Demand
  • Health Services Research / methods
  • Humans
  • London
  • Models, Organizational
  • Seasons
  • Urban Health Services / organization & administration
  • Urban Health Services / statistics & numerical data
  • Walking
  • Workload