PurposeExisting automated seizure detection algorithms report sensitivities between 43% and 77% and specificities between 56% and 90%. The algorithms suffer from false alarms when applied to neonatal EEG because of the high degree of nurse handling and rhythmic patting used to soothe neonates. Computer vision technology that quantifies movement in real time could distinguish artifactual motion and improve automated neonatal seizure detection algorithms.MethodsThe authors used video EEG recordings from 43 neonates undergoing monitoring for seizures as part of the NEOLEV2 clinical trial. The Persyst neonatal automated seizure detection algorithm ran in real time during study EEG acquisitions. Computer vision algorithms were applied to extract...
Objective: The description and evaluation of the performance of a new real-time seizure detection al...
Seizure detection devices can improve epilepsy care, but wearables are not always tolerated. We prev...
Objective: To describe a novel neurophysiology based performance analysis of automated seizure detec...
Clinical operators in one of the most difficult health care fields, namely neonatal neurology, on a ...
Objective: The aim of this study is to apply a real-time algorithm for clonic neonatal seizures dete...
In this thesis we consider the use of well-known statistical methods to early diagnose, through wire...
In Neonatal Intensive Care Units (NICUs), the early detection of neonatal seizures is of utmost impo...
AbstractObjectiveThe objective of this study was to validate the performance of a seizure detection ...
Clinical operators in one of the most difficult health care fields, namely neonatal neurology, on a ...
This paper presents a novel approach to the extraction of video features for real-time detection of ...
Abstract Automated processing and analysis of video recordings of neonatal seizures can generate nov...
Visual recognition of neonatal seizures during continuous EEG monitoring in neonatal intensive care ...
Objective: The objective of this study was to validate the performance of a seizure detection algori...
Neonatal EEG seizure detection algorithms (NSDAs) have an upper bound of performance related to the ...
AbstractObjectiveTo describe a novel neurophysiology based performance analysis of automated seizure...
Objective: The description and evaluation of the performance of a new real-time seizure detection al...
Seizure detection devices can improve epilepsy care, but wearables are not always tolerated. We prev...
Objective: To describe a novel neurophysiology based performance analysis of automated seizure detec...
Clinical operators in one of the most difficult health care fields, namely neonatal neurology, on a ...
Objective: The aim of this study is to apply a real-time algorithm for clonic neonatal seizures dete...
In this thesis we consider the use of well-known statistical methods to early diagnose, through wire...
In Neonatal Intensive Care Units (NICUs), the early detection of neonatal seizures is of utmost impo...
AbstractObjectiveThe objective of this study was to validate the performance of a seizure detection ...
Clinical operators in one of the most difficult health care fields, namely neonatal neurology, on a ...
This paper presents a novel approach to the extraction of video features for real-time detection of ...
Abstract Automated processing and analysis of video recordings of neonatal seizures can generate nov...
Visual recognition of neonatal seizures during continuous EEG monitoring in neonatal intensive care ...
Objective: The objective of this study was to validate the performance of a seizure detection algori...
Neonatal EEG seizure detection algorithms (NSDAs) have an upper bound of performance related to the ...
AbstractObjectiveTo describe a novel neurophysiology based performance analysis of automated seizure...
Objective: The description and evaluation of the performance of a new real-time seizure detection al...
Seizure detection devices can improve epilepsy care, but wearables are not always tolerated. We prev...
Objective: To describe a novel neurophysiology based performance analysis of automated seizure detec...