2023
DOI: 10.36227/techrxiv.17087147
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A channel-wise attention-based representation learning method for epileptic seizure detection and type classification

Abstract: <div>Epilepsy affect almost 1% of the worldwide population. An early diagnosis of seizure types is a patient-dependent process which is crucial for the treatment selection process. The selection of the proper treatment relies on the correct identification of seizures type. As such, identifying the seizure type has the biggest immediate influence on therapy than the seizure detection, reducing the neurologist’s efforts when reading and detecting seizures in EEG recordings. Most of the existing seizure det… Show more

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