Forecasting is an important aid in many areas of hospital management, including elective surgery scheduling, bed management, and staff resourcing. This paper describes our work in analyzing patient admission data and forecasting this data using regression techniques. Five years of Emergency Department admissions data were obtained from two hospitals with different demographic techniques. Forecasts made from regression models were compared with observed admission data over a 6-month horizon. The best method was linear regression using 11 dummy variables to model monthly variation (MAPE=1.79%). Similar performance was achieved with a 2-year average, supporting further investigation at finer time scales
OBJECTIVE: To evaluate an automatic forecasting algorithm in order to predict the number of monthly ...
The lmitations found in hospital management are directly related to the lack of information and to ...
In this work, we produce several prediction models for aspects of hospital emergency departments. Fi...
Forecasting is an important aid in many areas of hospital management, including elective surgery sch...
Abstract — Forecasting is an important aid in many areas of hospital management, including elective ...
We describe data analysis undertaken as part of a patient admissions prediction project underway thr...
Objective To develop and validate models to predict emergency department (ED) presentations and hosp...
In this thesis, Poisson regression is used to predict and analyze inpatient hospital admissions for ...
The Ottawa Hospital cancels hundreds of elective surgeries every year due to a lack of beds, and has...
Background/aims The stochastic arrival of patients at hospital emergency departments complicates th...
Objectives: The authors investigated whether models using time series methods can generate accurate ...
In section 2 the literature that has provided information for the development of the model has been ...
Emergency departments (EDs) face high numbers of patient arrivals in comparison to other departments...
The unpredictability of arrivals to the Emergency Department (ED) of a hospital is a great concern o...
This paper looks at the development of logistic regression models to predict readmissions for medica...
OBJECTIVE: To evaluate an automatic forecasting algorithm in order to predict the number of monthly ...
The lmitations found in hospital management are directly related to the lack of information and to ...
In this work, we produce several prediction models for aspects of hospital emergency departments. Fi...
Forecasting is an important aid in many areas of hospital management, including elective surgery sch...
Abstract — Forecasting is an important aid in many areas of hospital management, including elective ...
We describe data analysis undertaken as part of a patient admissions prediction project underway thr...
Objective To develop and validate models to predict emergency department (ED) presentations and hosp...
In this thesis, Poisson regression is used to predict and analyze inpatient hospital admissions for ...
The Ottawa Hospital cancels hundreds of elective surgeries every year due to a lack of beds, and has...
Background/aims The stochastic arrival of patients at hospital emergency departments complicates th...
Objectives: The authors investigated whether models using time series methods can generate accurate ...
In section 2 the literature that has provided information for the development of the model has been ...
Emergency departments (EDs) face high numbers of patient arrivals in comparison to other departments...
The unpredictability of arrivals to the Emergency Department (ED) of a hospital is a great concern o...
This paper looks at the development of logistic regression models to predict readmissions for medica...
OBJECTIVE: To evaluate an automatic forecasting algorithm in order to predict the number of monthly ...
The lmitations found in hospital management are directly related to the lack of information and to ...
In this work, we produce several prediction models for aspects of hospital emergency departments. Fi...