Abstract In this retrospective observational study, we aimed to develop a machine-learning model using data obtained at the prehospital stage to predict in-hospital cardiac arrest in the emergency department (ED) of patients transferred via emergency medical services. The dataset was constructed by attaching the prehospital information from the National Fire Agency and hospital factors to data from the National Emergency Department Information System. Machine-learning models were developed using patient variables, with and without hospital factors. We validated model performance and used the SHapley Additive exPlanation model interpretation. In-hospital cardiac arrest occurred in 5431 of the 1,350,693 patients (0.4%). The extreme gradient b...
Background: A prediction model that estimates survival and neurological outcome in out-of-hospital c...
International audienceBackground: Recently, many research groups have tried to develop emergency dep...
OBJECTIVE:To predict hospital admission at the time of ED triage using patient history in addition t...
Objective: Early identification of emergency department (ED) patients who need hospitalization is es...
Background The inconsistency in triage evaluation in emergency departments (EDs) and the limitations...
Background A feasible and accurate risk prediction systems for emergency department (ED) patients is...
This research lays down foundations for a stronger presence of machine learning in the emergency dep...
Abstract Predicting in-hospital cardiac arrest in patients admitted to an intensive care unit (ICU) ...
Introduction: A key aim of triage is to identify those with high risk of cardiac arrest, as they req...
Emergency department triage is the first point in time when a patient's acuity level is determined. ...
Introduction: Studies examining the factors linked to survival after out of hospital cardiac arrest ...
Background: Early recognition and prevention of in-hospital cardiac arrest (IHCA) have played an in...
Abstract The emergency department (ED) is a fast-paced environment responsible for large volumes of ...
BackgroundResuscitated cardiac arrest is associated with high mortality; however, the ability to est...
A major healthcare problem is the overcrowding of hospitals and emergency departments which leads to...
Background: A prediction model that estimates survival and neurological outcome in out-of-hospital c...
International audienceBackground: Recently, many research groups have tried to develop emergency dep...
OBJECTIVE:To predict hospital admission at the time of ED triage using patient history in addition t...
Objective: Early identification of emergency department (ED) patients who need hospitalization is es...
Background The inconsistency in triage evaluation in emergency departments (EDs) and the limitations...
Background A feasible and accurate risk prediction systems for emergency department (ED) patients is...
This research lays down foundations for a stronger presence of machine learning in the emergency dep...
Abstract Predicting in-hospital cardiac arrest in patients admitted to an intensive care unit (ICU) ...
Introduction: A key aim of triage is to identify those with high risk of cardiac arrest, as they req...
Emergency department triage is the first point in time when a patient's acuity level is determined. ...
Introduction: Studies examining the factors linked to survival after out of hospital cardiac arrest ...
Background: Early recognition and prevention of in-hospital cardiac arrest (IHCA) have played an in...
Abstract The emergency department (ED) is a fast-paced environment responsible for large volumes of ...
BackgroundResuscitated cardiac arrest is associated with high mortality; however, the ability to est...
A major healthcare problem is the overcrowding of hospitals and emergency departments which leads to...
Background: A prediction model that estimates survival and neurological outcome in out-of-hospital c...
International audienceBackground: Recently, many research groups have tried to develop emergency dep...
OBJECTIVE:To predict hospital admission at the time of ED triage using patient history in addition t...