In newborn EEG, the presence of burst suppression carries with it a high probability of poor neurodevelopmental outcome. This paper presents a novel method to detect neonatal bust suppression from multichannel EEG using a time-frequency (T-F) based approach. In this approach, features are extracted from T-F representations of EEG signals obtained using quadratic time-frequency distributions (QTFDs). Such features take into account the non-stationarity of EEG signals and are shown to be able to discriminate between burst and suppression patterns. The features are based on the energy concentration of the signals in the T-F domain, instantaneous frequency of the signals, and Renyi entropy and singular-value decomposition (SVD) of the TFDs of E...
This paper presents a new time-frequency based EEG seizure detection method. This method uses the di...
In recent years, much effort has been made toward developing computerized methods to detect seizures...
Time-frequency (TF) based machine learning methodologies can improve the design of classification sy...
This paper presents an improved time-frequency (TF) based technique for newborn EEG seizure detectio...
This paper proposes a new time-frequency (TF) based approach for detecting spikes in newborns' EEG s...
Several, recently proposed, newborn EEG seizure detection techniques use quadratic time-frequency di...
This paper considers the general problem of detecting change in non-stationary signals using feature...
The nonstationary and multicomponent nature of newborn EEG seizures tends to increase the complexity...
Contrarily to adults and older children, the clinical signs of seizure in newborns are either subtle...
Techniques previously designed for seizure detection in newborns using the electroencephalogram (EEG...
Previous techniques for seizure detection in newborn babies are inefficient. The main reason for the...
The NFM is a new method of signal representation that can be used to detecting pseudo-periodicity in...
Time-frequency based methods have been proved to be superior to other methods in analysing neonatal ...
Previous techniques for seizure detection in newborn are inefti-cient. The main reason for their rel...
The brain requires a continuous supply of oxygen and even a short period of reduced oxygen supply ri...
This paper presents a new time-frequency based EEG seizure detection method. This method uses the di...
In recent years, much effort has been made toward developing computerized methods to detect seizures...
Time-frequency (TF) based machine learning methodologies can improve the design of classification sy...
This paper presents an improved time-frequency (TF) based technique for newborn EEG seizure detectio...
This paper proposes a new time-frequency (TF) based approach for detecting spikes in newborns' EEG s...
Several, recently proposed, newborn EEG seizure detection techniques use quadratic time-frequency di...
This paper considers the general problem of detecting change in non-stationary signals using feature...
The nonstationary and multicomponent nature of newborn EEG seizures tends to increase the complexity...
Contrarily to adults and older children, the clinical signs of seizure in newborns are either subtle...
Techniques previously designed for seizure detection in newborns using the electroencephalogram (EEG...
Previous techniques for seizure detection in newborn babies are inefficient. The main reason for the...
The NFM is a new method of signal representation that can be used to detecting pseudo-periodicity in...
Time-frequency based methods have been proved to be superior to other methods in analysing neonatal ...
Previous techniques for seizure detection in newborn are inefti-cient. The main reason for their rel...
The brain requires a continuous supply of oxygen and even a short period of reduced oxygen supply ri...
This paper presents a new time-frequency based EEG seizure detection method. This method uses the di...
In recent years, much effort has been made toward developing computerized methods to detect seizures...
Time-frequency (TF) based machine learning methodologies can improve the design of classification sy...