AbstractPurposeElectrographic seizures are common in encephalopathic critically ill children, but identification requires continuous EEG monitoring (CEEG). Development of a seizure prediction model would enable more efficient use of limited CEEG resources. We aimed to develop and validate a seizure prediction model for use among encephalopathic critically ill children.MethodWe developed a seizure prediction model using a retrospectively acquired multi-center database of children with acute encephalopathy without an epilepsy diagnosis, who underwent clinically indicated CEEG. We performed model validation using a separate prospectively acquired single center database. Predictor variables were chosen to be readily available to clinicians prio...
Epilepsy has been reported in 10-40% of children in the paediatric intensive care unit (PICU). Ampli...
Objective In patients with encephalitis, the development of acute symptomatic seizures is highly var...
OBJECTIVE: To compare machine learning methods for predicting inpatient seizures risk and determine ...
AbstractPurposeElectrographic seizures are common in encephalopathic critically ill children, but id...
Objective: Epileptic seizures are relatively common in critically-ill children admitted to the pedia...
OBJECTIVES: The clinical profile of children who had possible seizures is heterogeneous, and accurac...
OBJECTIVES: The clinical profile of children who had possible seizures is heterogeneous, and accurac...
Objective: cEEG is an emerging technology for which there are no clear guidelines for patient select...
AbstractPurposeElectrographic seizures (ES) and electrographic status epilepticus (ESE) are common i...
Continuous EEG (cEEG) monitoring is the gold standard for detecting electrographic seizures in criti...
Electroencephalography (EEG) is a neurologic monitoring modality that allows for the identification ...
Objective: To characterize the risk for seizures over time in relation to EEG findings in hospitaliz...
Objective: To compare machine learning methods for predicting inpatient seizures risk and determine ...
Epilepsy is the most common neurological disorder and an accurate forecast of seizures would help to...
AbstractIntroductionContinuous EEG (cEEG) is of great interest in view of the reported high prevalen...
Epilepsy has been reported in 10-40% of children in the paediatric intensive care unit (PICU). Ampli...
Objective In patients with encephalitis, the development of acute symptomatic seizures is highly var...
OBJECTIVE: To compare machine learning methods for predicting inpatient seizures risk and determine ...
AbstractPurposeElectrographic seizures are common in encephalopathic critically ill children, but id...
Objective: Epileptic seizures are relatively common in critically-ill children admitted to the pedia...
OBJECTIVES: The clinical profile of children who had possible seizures is heterogeneous, and accurac...
OBJECTIVES: The clinical profile of children who had possible seizures is heterogeneous, and accurac...
Objective: cEEG is an emerging technology for which there are no clear guidelines for patient select...
AbstractPurposeElectrographic seizures (ES) and electrographic status epilepticus (ESE) are common i...
Continuous EEG (cEEG) monitoring is the gold standard for detecting electrographic seizures in criti...
Electroencephalography (EEG) is a neurologic monitoring modality that allows for the identification ...
Objective: To characterize the risk for seizures over time in relation to EEG findings in hospitaliz...
Objective: To compare machine learning methods for predicting inpatient seizures risk and determine ...
Epilepsy is the most common neurological disorder and an accurate forecast of seizures would help to...
AbstractIntroductionContinuous EEG (cEEG) is of great interest in view of the reported high prevalen...
Epilepsy has been reported in 10-40% of children in the paediatric intensive care unit (PICU). Ampli...
Objective In patients with encephalitis, the development of acute symptomatic seizures is highly var...
OBJECTIVE: To compare machine learning methods for predicting inpatient seizures risk and determine ...