Sudden cardiac arrest can leave serious brain damage or lead to death, so it is very important to predict before a cardiac arrest occurs. However, early warning score systems including the National Early Warning Score, are associated with low sensitivity and false positives. We applied shallow and deep learning to predict cardiac arrest to overcome these limitations. We evaluated the performance of the Synthetic Minority Oversampling Technique Ratio. We evaluated the performance using a Decision Tree, a Random Forest, Logistic Regression, Long Short-Term Memory model, Gated Recurrent Unit model, and LSTM–GRU hybrid models. Our proposed Logistic Regression demonstrated a higher positive predictive value and sensitivity than traditional early...
Abstract In this retrospective observational study, we aimed to develop a machine-learning model usi...
Prediction of cardiac arrest in critically ill patients presenting to the emergency department using...
Objective: Optimizing timing of defibrillation by evaluating the likelihood of a successful outcome ...
The early warning system detects early and responds quickly to emergencies in high-risk patients, su...
Cardiac arrest is a common issue in Intensive Care Units (ICU) with low survival rate. Deep learning...
Assessment of physiological instability preceding adverse events on hospital wards has been previous...
BackgroundResuscitated cardiac arrest is associated with high mortality; however, the ability to est...
Abstract Background Retrospective studies have demonstrated that the deep learning-based cardiac arr...
BACKGROUND: Resuscitated cardiac arrest is associated with high mortality; however, the ability to e...
Cardiac arrest remains a critical concern in Intensive Care Units (ICUs), with alarmingly low surviv...
Background: Cardiac arrest is the most serious death-related event in intensive care units (ICUs), ...
Machine learning (ML) is a subfield of AI that uses statistical algorithms. Cardiac Arrest or heart ...
Abstract Although in-hospital cardiac arrest is uncommon, it has a high mortality rate. Risk identif...
Introduction: A key aim of triage is to identify those with high risk of cardiac arrest, as they req...
Assessment of physiological instability preceding adverse events on hospital wards has been previous...
Abstract In this retrospective observational study, we aimed to develop a machine-learning model usi...
Prediction of cardiac arrest in critically ill patients presenting to the emergency department using...
Objective: Optimizing timing of defibrillation by evaluating the likelihood of a successful outcome ...
The early warning system detects early and responds quickly to emergencies in high-risk patients, su...
Cardiac arrest is a common issue in Intensive Care Units (ICU) with low survival rate. Deep learning...
Assessment of physiological instability preceding adverse events on hospital wards has been previous...
BackgroundResuscitated cardiac arrest is associated with high mortality; however, the ability to est...
Abstract Background Retrospective studies have demonstrated that the deep learning-based cardiac arr...
BACKGROUND: Resuscitated cardiac arrest is associated with high mortality; however, the ability to e...
Cardiac arrest remains a critical concern in Intensive Care Units (ICUs), with alarmingly low surviv...
Background: Cardiac arrest is the most serious death-related event in intensive care units (ICUs), ...
Machine learning (ML) is a subfield of AI that uses statistical algorithms. Cardiac Arrest or heart ...
Abstract Although in-hospital cardiac arrest is uncommon, it has a high mortality rate. Risk identif...
Introduction: A key aim of triage is to identify those with high risk of cardiac arrest, as they req...
Assessment of physiological instability preceding adverse events on hospital wards has been previous...
Abstract In this retrospective observational study, we aimed to develop a machine-learning model usi...
Prediction of cardiac arrest in critically ill patients presenting to the emergency department using...
Objective: Optimizing timing of defibrillation by evaluating the likelihood of a successful outcome ...