Objective: Epileptic seizures are relatively common in critically-ill children admitted to the pediatric intensive care unit (PICU) and thus serve as an important target for identification and treatment. Most of these seizures have no discernible clinical manifestation but still have a significant impact on morbidity and mortality. Children that are deemed at risk for seizures within the PICU are monitored using continuous-electroencephalogram (cEEG). cEEG monitoring cost is considerable and as the number of available machines is always limited, clinicians need to resort to triaging patients according to perceived risk in order to allocate resources. This research aims to develop a computer aided tool to improve seizures risk assessment in ...
Objective: We describe the development and evaluation of a system that uses machine learning and nat...
Objective: cEEG is an emerging technology for which there are no clear guidelines for patient select...
More than 65 million people live with epilepsy. The unpredictable nature of epileptic seizures drast...
AbstractPurposeElectrographic seizures are common in encephalopathic critically ill children, but id...
Objective: To compare machine learning methods for predicting inpatient seizures risk and determine ...
Objective: Seizures are one of the most common emergencies in the neonatal intensive care unit (NICU...
OBJECTIVE: To compare machine learning methods for predicting inpatient seizures risk and determine ...
Introduction: Sleep deprivation is commonly encountered in critically ill children admitted to the p...
Continuous medical data monitoring is playing an increasingly important role in patient care, both i...
Background: Using machine learning to combine wrist accelerometer (ACM) and electrodermal activity (...
Epilepsy has been reported in 10-40% of children in the paediatric intensive care unit (PICU). Ampli...
Background: Using machine learning to combine wrist accelerometer (ACM) and electrodermal activity (...
Continuous medical data monitoring is playing an increasingly important role in patient care, both i...
AbstractBackgroundEarly warning scores (EWS) are designed to identify early clinical deterioration b...
Introduction: Critically ill children admitted to the Paediatric Intensive Care Unit (PICU) have a h...
Objective: We describe the development and evaluation of a system that uses machine learning and nat...
Objective: cEEG is an emerging technology for which there are no clear guidelines for patient select...
More than 65 million people live with epilepsy. The unpredictable nature of epileptic seizures drast...
AbstractPurposeElectrographic seizures are common in encephalopathic critically ill children, but id...
Objective: To compare machine learning methods for predicting inpatient seizures risk and determine ...
Objective: Seizures are one of the most common emergencies in the neonatal intensive care unit (NICU...
OBJECTIVE: To compare machine learning methods for predicting inpatient seizures risk and determine ...
Introduction: Sleep deprivation is commonly encountered in critically ill children admitted to the p...
Continuous medical data monitoring is playing an increasingly important role in patient care, both i...
Background: Using machine learning to combine wrist accelerometer (ACM) and electrodermal activity (...
Epilepsy has been reported in 10-40% of children in the paediatric intensive care unit (PICU). Ampli...
Background: Using machine learning to combine wrist accelerometer (ACM) and electrodermal activity (...
Continuous medical data monitoring is playing an increasingly important role in patient care, both i...
AbstractBackgroundEarly warning scores (EWS) are designed to identify early clinical deterioration b...
Introduction: Critically ill children admitted to the Paediatric Intensive Care Unit (PICU) have a h...
Objective: We describe the development and evaluation of a system that uses machine learning and nat...
Objective: cEEG is an emerging technology for which there are no clear guidelines for patient select...
More than 65 million people live with epilepsy. The unpredictable nature of epileptic seizures drast...