The localization of epileptic zone in pharmacoresistant focal epileptic patients is a daunting task, typically performed by medical experts through visual inspection over highly sampled neural recordings. For a finer localization of the epileptogenic areas and a deeper understanding of the pathology both the identification of pathogenical biomarkers and the automatic characterization of epileptic signals are desirable. In this work we present a data integration learning method based on multi-level representation of stereo-electroencephalography recordings and multiple kernel learning. To the best of our knowledge, this is the first attempt to tackle both aspects simultaneously, as our approach is devised to classify critical vs. non-critica...
© 2020 Rui LiOver twenty million people in the world have drug refractory epilepsy. Their seizures c...
The success of an epilepsy treatment, such as resective surgery, relies heavily on the accurate iden...
We applied machine learning to diagnose epilepsy based on the fine-graded spectral analysis of seizu...
Treball de fi de grau en BiomèdicaTutor: Ralph G. AndrzejakEpilepsy is a neurological disorder that ...
The gold standard for localization of the epileptogenic zone (EZ) continues to be the visual inspect...
The standard treatments for epilepsy are drug therapy and surgical resection. However, around 1/3 of...
The rise of machine learning methodologies in recent years has seen great success in a variety of ap...
Drug-resistant focal epilepsy is the failure of antiepileptic drugs scheduled to obtain epileptic fr...
Introduction: Precise localization of the epileptogenic zone is very essential for the success of ep...
Epilepsy is a neurological disorder with varied expression. Patients with focal onset seizures that...
BackgroundInterictal epileptiform discharges are an important biomarker for localization of focal ep...
The successful delineation of the epileptogenic zone in epilepsy monitoring is crucial for achieving...
Quality of life for the more than 15 million people with drug-resistant epilepsy is tied to how prec...
Certain differences between brain networks of healthy and epilectic subjects have been reported even...
BACKGROUND: Machine learning models have been successfully applied to neuroimaging data to make pred...
© 2020 Rui LiOver twenty million people in the world have drug refractory epilepsy. Their seizures c...
The success of an epilepsy treatment, such as resective surgery, relies heavily on the accurate iden...
We applied machine learning to diagnose epilepsy based on the fine-graded spectral analysis of seizu...
Treball de fi de grau en BiomèdicaTutor: Ralph G. AndrzejakEpilepsy is a neurological disorder that ...
The gold standard for localization of the epileptogenic zone (EZ) continues to be the visual inspect...
The standard treatments for epilepsy are drug therapy and surgical resection. However, around 1/3 of...
The rise of machine learning methodologies in recent years has seen great success in a variety of ap...
Drug-resistant focal epilepsy is the failure of antiepileptic drugs scheduled to obtain epileptic fr...
Introduction: Precise localization of the epileptogenic zone is very essential for the success of ep...
Epilepsy is a neurological disorder with varied expression. Patients with focal onset seizures that...
BackgroundInterictal epileptiform discharges are an important biomarker for localization of focal ep...
The successful delineation of the epileptogenic zone in epilepsy monitoring is crucial for achieving...
Quality of life for the more than 15 million people with drug-resistant epilepsy is tied to how prec...
Certain differences between brain networks of healthy and epilectic subjects have been reported even...
BACKGROUND: Machine learning models have been successfully applied to neuroimaging data to make pred...
© 2020 Rui LiOver twenty million people in the world have drug refractory epilepsy. Their seizures c...
The success of an epilepsy treatment, such as resective surgery, relies heavily on the accurate iden...
We applied machine learning to diagnose epilepsy based on the fine-graded spectral analysis of seizu...