Objective: To develop and validate models to predict emergency department (ED) presentations and hospital admissions for time and day of the year. Methods: Initial model development and validation was based on 5 years of historical data from two dissimilar hospitals, followed by subsequent validation on 27 hospitals representing 95% of the ED presentations across the state. Forecast accuracy was assessed using the mean average percentage error (MAPE) between forecasts and observed data. The study also determined a daily sample size threshold for forecasting subgroups within the data. Results: Presentations to the ED and subsequent admissions to hospital beds are not random and can be predicted. Forecast accuracy worsened as the forecast tim...
STUDY OBJECTIVE: We apply a previously described tool to forecast emergency department (ED) crowding...
STUDY OBJECTIVE: We apply a previously described tool to forecast emergency department (ED) crowding...
Objective: This research aimed to (i) assess the effects of time-varying predictors (day of the week...
Objective: To develop and validate models to predict emergency department (ED) presentations and hos...
Objective To develop and validate models to predict emergency department (ED) presentations and hosp...
The emergency department (ED) is a very important healthcare entrance point, known for its challengi...
Objectives: The authors investigated whether models using time series methods can generate accurate ...
Objectives: The authors investigated whether models using time series methods can generate accurate ...
The majority of acute hospital admissions arise from the Emergency Department (ED). With the current...
We describe data analysis undertaken as part of a patient admissions prediction project underway thr...
Background and objective: Emergency Department (ED) overcrowding is a chronic international issue th...
Background and objective: Emergency Department (ED) overcrowding is a chronic international issue th...
OBJECTIVE: To evaluate an automatic forecasting algorithm in order to predict the number of monthly ...
International audienceEmergency department (ED) has become the patient’s main point of entrance in m...
The COVID-19 pandemic has heightened the existing concern about the uncertainty surrounding patient ...
STUDY OBJECTIVE: We apply a previously described tool to forecast emergency department (ED) crowding...
STUDY OBJECTIVE: We apply a previously described tool to forecast emergency department (ED) crowding...
Objective: This research aimed to (i) assess the effects of time-varying predictors (day of the week...
Objective: To develop and validate models to predict emergency department (ED) presentations and hos...
Objective To develop and validate models to predict emergency department (ED) presentations and hosp...
The emergency department (ED) is a very important healthcare entrance point, known for its challengi...
Objectives: The authors investigated whether models using time series methods can generate accurate ...
Objectives: The authors investigated whether models using time series methods can generate accurate ...
The majority of acute hospital admissions arise from the Emergency Department (ED). With the current...
We describe data analysis undertaken as part of a patient admissions prediction project underway thr...
Background and objective: Emergency Department (ED) overcrowding is a chronic international issue th...
Background and objective: Emergency Department (ED) overcrowding is a chronic international issue th...
OBJECTIVE: To evaluate an automatic forecasting algorithm in order to predict the number of monthly ...
International audienceEmergency department (ED) has become the patient’s main point of entrance in m...
The COVID-19 pandemic has heightened the existing concern about the uncertainty surrounding patient ...
STUDY OBJECTIVE: We apply a previously described tool to forecast emergency department (ED) crowding...
STUDY OBJECTIVE: We apply a previously described tool to forecast emergency department (ED) crowding...
Objective: This research aimed to (i) assess the effects of time-varying predictors (day of the week...