ObjectiveThis study aims to develop and compare different models to predict the Length of Stay (LoS) and the Prolonged Length of Stay (PLoS) of inpatients admitted through the emergency department (ED) in general patient settings. This aim is not only to promote any specific model but rather to suggest a decision-supporting tool (i.e., a prediction framework).MethodsWe analyzed a dataset of patients admitted through the ED to the “Sant”Orsola Malpighi University Hospital of Bologna, Italy, between January 1 and October 26, 2022. PLoS was defined as any hospitalization with LoS longer than 6 days. We deployed six classification algorithms for predicting PLoS: Random Forest (RF), Support Vector Machines (SVM), Gradient Boosting (GB), AdaBoost...
ObjectiveThe study aimed to use supervised machine learning models to predict the length and risk of...
ObjectiveThe study aimed to use supervised machine learning models to predict the length and risk of...
The primary aim of this thesis was to investigate the feasibility and robustness of predictive machi...
ObjectiveThis study aims to develop and compare different models to predict the Length of Stay (LoS)...
National audienceIncreasing healthcare costs motivate the search for ways to increase care efficienc...
The length of hospital stay and its implications have a significant economic and human impact. As a ...
This study aimed to construct machine learning (ML) models for predicting prolonged length of stay (...
The coronavirus disease (COVID-19) outbreak has become a global public health threat. The influx of ...
As the COVID-19 pandemic has afflicted the globe, health systems worldwide have also been significan...
Objective: Early identification of emergency department (ED) patients who need hospitalization is es...
ObjectiveAcute ischemic stroke (AIS) brings an increasingly heavier economic burden nowadays. Prolon...
Patient length of stay (LOS) in ICU and hospital’s general care unit is one of the important indicat...
The emergency departments (EDs) in most hospitals, especially in middle-and-low-income countries, ne...
Objective: Early identification of emergency department (ED) patients who need hospitalization is es...
Abstract Background Prediction of length of stay (LOS) at admission time can provide physicians and ...
ObjectiveThe study aimed to use supervised machine learning models to predict the length and risk of...
ObjectiveThe study aimed to use supervised machine learning models to predict the length and risk of...
The primary aim of this thesis was to investigate the feasibility and robustness of predictive machi...
ObjectiveThis study aims to develop and compare different models to predict the Length of Stay (LoS)...
National audienceIncreasing healthcare costs motivate the search for ways to increase care efficienc...
The length of hospital stay and its implications have a significant economic and human impact. As a ...
This study aimed to construct machine learning (ML) models for predicting prolonged length of stay (...
The coronavirus disease (COVID-19) outbreak has become a global public health threat. The influx of ...
As the COVID-19 pandemic has afflicted the globe, health systems worldwide have also been significan...
Objective: Early identification of emergency department (ED) patients who need hospitalization is es...
ObjectiveAcute ischemic stroke (AIS) brings an increasingly heavier economic burden nowadays. Prolon...
Patient length of stay (LOS) in ICU and hospital’s general care unit is one of the important indicat...
The emergency departments (EDs) in most hospitals, especially in middle-and-low-income countries, ne...
Objective: Early identification of emergency department (ED) patients who need hospitalization is es...
Abstract Background Prediction of length of stay (LOS) at admission time can provide physicians and ...
ObjectiveThe study aimed to use supervised machine learning models to predict the length and risk of...
ObjectiveThe study aimed to use supervised machine learning models to predict the length and risk of...
The primary aim of this thesis was to investigate the feasibility and robustness of predictive machi...