Objective: Early identification of emergency department (ED) patients who need hospitalization is essential for quality of care and patient safety. We aimed to compare machine learning (ML) models predicting the hospitalization of ED patients and conventional regression techniques at three points in time after ED registration. Methods: We analyzed consecutive ED patients of three hospitals using the Netherlands Emergency Department Evaluation Database (NEED). We developed prediction models for hospitalization using an increasing number of data available at triage, similar to 30 min (including vital signs) and similar to 2 h (including laboratory tests) after ED registration, using ML (random forest, gradient boosted decision trees, deep neu...
Background Emergency admissions are a major source of healthcare spending. We aimed to derive, valid...
Introduction: Patients boarding in the Emergency Department can contribute to overcrowding, leading ...
Machine learning for hospital operations is under-studied. We present a prediction pipeline that use...
Objective: Early identification of emergency department (ED) patients who need hospitalization is es...
Objective: Early identification of emergency department (ED) patients who need hospitalization is es...
OBJECTIVE:To predict hospital admission at the time of ED triage using patient history in addition t...
International audienceBackground: Recently, many research groups have tried to develop emergency dep...
<div><p>Objective</p><p>To predict hospital admission at the time of ED triage using patient history...
International audienceBackground: Recently, many research groups have tried to develop emergency dep...
This research lays down foundations for a stronger presence of machine learning in the emergency dep...
Abstract Background Development of emergency department (ED) triage systems that accurately differen...
Background and aim: We analyzed an inclusive gradient boosting model to predict hospital admission f...
Background The inconsistency in triage evaluation in emergency departments (EDs) and the limitations...
BackgroundEmergency admissions are a major source of healthcare spending. We aimed to derive, valida...
Abstract The emergency department (ED) is a fast-paced environment responsible for large volumes of ...
Background Emergency admissions are a major source of healthcare spending. We aimed to derive, valid...
Introduction: Patients boarding in the Emergency Department can contribute to overcrowding, leading ...
Machine learning for hospital operations is under-studied. We present a prediction pipeline that use...
Objective: Early identification of emergency department (ED) patients who need hospitalization is es...
Objective: Early identification of emergency department (ED) patients who need hospitalization is es...
OBJECTIVE:To predict hospital admission at the time of ED triage using patient history in addition t...
International audienceBackground: Recently, many research groups have tried to develop emergency dep...
<div><p>Objective</p><p>To predict hospital admission at the time of ED triage using patient history...
International audienceBackground: Recently, many research groups have tried to develop emergency dep...
This research lays down foundations for a stronger presence of machine learning in the emergency dep...
Abstract Background Development of emergency department (ED) triage systems that accurately differen...
Background and aim: We analyzed an inclusive gradient boosting model to predict hospital admission f...
Background The inconsistency in triage evaluation in emergency departments (EDs) and the limitations...
BackgroundEmergency admissions are a major source of healthcare spending. We aimed to derive, valida...
Abstract The emergency department (ED) is a fast-paced environment responsible for large volumes of ...
Background Emergency admissions are a major source of healthcare spending. We aimed to derive, valid...
Introduction: Patients boarding in the Emergency Department can contribute to overcrowding, leading ...
Machine learning for hospital operations is under-studied. We present a prediction pipeline that use...