Forecasting Daily Volume and Acuity of Patients in the Emergency Department

This study aimed at analyzing the performance of four forecasting models in predicting the demand for medical care in terms of daily visits in an emergency department (ED) that handles high complexity cases, testing the influence of climatic and calendrical factors on demand behavior. We tested different mathematical models to forecast ED daily visits at Hospital de Clínicas de Porto Alegre (HCPA), which is a tertiary care teaching hospital located in Southern Brazil. Model accuracy was evaluated using mean absolute percentage error (MAPE), considering forecasting horizons of 1, 7, 14, 21, and 30 days. The demand time series was stratified according to patient classification using the Manchester Triage System's (MTS) criteria. Models tested were the simple seasonal exponential smoothing (SS), seasonal multiplicative Holt-Winters (SMHW), seasonal autoregressive integrated moving average (SARIMA), and multivariate autoregressive integrated moving average (MSARIMA). Performance of models varied according to patient classification, such that SS was the best choice when all types of patients were jointly considered, and SARIMA was the most accurate for modeling demands of very urgent (VU) and urgent (U) patients. The MSARIMA models taking into account climatic factors did not improve the performance of the SARIMA models, independent of patient classification.

[1]  Farid Kadri,et al.  A simulation-based decision support system to prevent and predict strain situations in emergency department systems , 2014, Simul. Model. Pract. Theory.

[2]  S. McMillan,et al.  Predicting patient visits to an urgent care clinic using calendar variables. , 2001, Academic emergency medicine : official journal of the Society for Academic Emergency Medicine.

[3]  Shari J. Welch,et al.  Forecasting daily patient volumes in the emergency department. , 2008, Academic emergency medicine : official journal of the Society for Academic Emergency Medicine.

[4]  Robert Champion,et al.  Forecasting emergency department presentations. , 2007, Australian health review : a publication of the Australian Hospital Association.

[5]  R Wilf-Miron,et al.  The dynamics of patient visits to a public hospital ED: a statistical model. , 1997, The American journal of emergency medicine.

[6]  Rob J Hyndman,et al.  25 years of time series forecasting , 2006 .

[7]  S. Hajat,et al.  Forecasting daily emergency department visits using calendar variables and ambient temperature readings. , 2013, Academic emergency medicine : official journal of the Society for Academic Emergency Medicine.

[8]  Aaas News,et al.  Book Reviews , 1893, Buffalo Medical and Surgical Journal.

[9]  Gwilym M. Jenkins,et al.  Time series analysis, forecasting and control , 1972 .

[10]  Peter R. Winters,et al.  Forecasting Sales by Exponentially Weighted Moving Averages , 1960 .

[11]  Kevin Mackway-Jones,et al.  Emergency triage. , 2013, Emergency nurse : the journal of the RCN Accident and Emergency Nursing Association.

[12]  M. Wargon,et al.  From model to forecasting: a multicenter study in emergency departments. , 2010, Academic emergency medicine : official journal of the Society for Academic Emergency Medicine.

[13]  N. Rathlev,et al.  Time series analysis of variables associated with daily mean emergency department length of stay. , 2007, Annals of emergency medicine.

[14]  W. Marsden I and J , 2012 .

[15]  E. Seow,et al.  Forecasting daily attendances at an emergency department to aid resource planning , 2009, BMC emergency medicine.

[16]  Robert Fildes,et al.  Making Progress in Forecasting , 2006 .

[17]  M. Wallis,et al.  Predicting emergency department admissions , 2011, Emergency Medicine Journal.

[18]  Kristi L Koenig,et al.  Daily patient flow is not surge: "management is prediction". , 2006, Academic emergency medicine : official journal of the Society for Academic Emergency Medicine.

[19]  G. G. Stokes "J." , 1890, The New Yale Book of Quotations.

[20]  Jon Pearson,et al.  Forecasting Demand of Emergency Care , 2002, Health care management science.

[21]  Ursula H. Funke,et al.  Mathematical Models in Marketing: A Collection of Abstracts , 1976 .

[22]  Anne B. Koehler,et al.  Forecasting models and prediction intervals for the multiplicative Holt-Winters method , 2001 .

[23]  D Tandberg,et al.  Time series forecasts of emergency department patient volume, length of stay, and acuity. , 1994, Annals of emergency medicine.

[24]  Gad Abraham,et al.  Short-Term Forecasting of Emergency Inpatient Flow , 2009, IEEE Transactions on Information Technology in Biomedicine.

[25]  Peter J. Haug,et al.  A multivariate time series approach to modeling and forecasting demand in the emergency department , 2009, J. Biomed. Informatics.

[26]  D. Aronsky,et al.  Systematic review of emergency department crowding: causes, effects, and solutions. , 2008, Annals of emergency medicine.

[27]  Rae Woong Park,et al.  Prediction of Daily Patient Numbers for a Regional Emergency Medical Center using Time Series Analysis , 2010, Healthcare informatics research.

[28]  J. Hayes,et al.  Local Weather Effects on Emergency Department Visits: A Time Series and Regression Analysis , 2006, Pediatric emergency care.