A longstanding challenge in epilepsy research and practice is the need to classify synchronization patterns hidden in multivariate electroencephalography (EEG) data that is routinely superimposed with intensive noise. It is essential to select a suitable feature extraction method to achieve high recognition performance. A typical approach is to extract the mutual information (MI) between pairs of channels. This calculation, which considers the differences between the sequence pairs to build a reasonable partition, can improve the classification performance. On this basis, however, it is even more difficult to adaptively classify the synchronization patterns hidden in multivariate EEG data under circumstances of insufficient a priori knowled...
This study presents a new methodology for obtaining functional brain networks (FBNs) using multichan...
Monitoring the functional connectivity between brain networks is becoming increasingly important in ...
This work presents a novel modeling of neuronal activity of the brain by capturing the synchronizati...
A longstanding challenge in epilepsy research and practice is the need to classify synchronization p...
Background: Epilepsy is a brain disorder that is mainly diagnosed by neurologists based on electroen...
Epilepsy is a persistent and recurring neurological condition in a community of brain neurons that r...
Assessing complex brain activity as a function of the type of epilepsy and in the context of the 3D ...
Abstract - Psychogenic non-epileptic seizures (PNES) are attacks that resemble epilepsy but are not ...
The global framework of this paper is the synchronization analysis in EEG recordings. Two main objec...
Focal (or partial) epilepsies are characterized by recurrent seizures generated in an abnormal regio...
The global framework of this paper is the synchronization analysis in EEG recordings. Two main objec...
Synchronization is an important mechanism that helps in understanding information processing in a no...
Epilepsy is a dynamic disease in which self-organization and emergent structures occur dynamically a...
International audienceEpilepsy is a network disease. The epileptic network usually involves spatiall...
Abstract. We present in this study a novel approach to predicting EEG epileptic seizures: we accurat...
This study presents a new methodology for obtaining functional brain networks (FBNs) using multichan...
Monitoring the functional connectivity between brain networks is becoming increasingly important in ...
This work presents a novel modeling of neuronal activity of the brain by capturing the synchronizati...
A longstanding challenge in epilepsy research and practice is the need to classify synchronization p...
Background: Epilepsy is a brain disorder that is mainly diagnosed by neurologists based on electroen...
Epilepsy is a persistent and recurring neurological condition in a community of brain neurons that r...
Assessing complex brain activity as a function of the type of epilepsy and in the context of the 3D ...
Abstract - Psychogenic non-epileptic seizures (PNES) are attacks that resemble epilepsy but are not ...
The global framework of this paper is the synchronization analysis in EEG recordings. Two main objec...
Focal (or partial) epilepsies are characterized by recurrent seizures generated in an abnormal regio...
The global framework of this paper is the synchronization analysis in EEG recordings. Two main objec...
Synchronization is an important mechanism that helps in understanding information processing in a no...
Epilepsy is a dynamic disease in which self-organization and emergent structures occur dynamically a...
International audienceEpilepsy is a network disease. The epileptic network usually involves spatiall...
Abstract. We present in this study a novel approach to predicting EEG epileptic seizures: we accurat...
This study presents a new methodology for obtaining functional brain networks (FBNs) using multichan...
Monitoring the functional connectivity between brain networks is becoming increasingly important in ...
This work presents a novel modeling of neuronal activity of the brain by capturing the synchronizati...