Supervised and Unsupervised Deep Learning Approaches for EEG Seizure
Prediction
- URL: http://arxiv.org/abs/2304.14922v3
- Date: Sat, 3 Feb 2024 22:20:19 GMT
- Title: Supervised and Unsupervised Deep Learning Approaches for EEG Seizure
Prediction
- Authors: Zakary Georgis-Yap, Milos R. Popovic, Shehroz S. Khan
- Abstract summary: Epilepsy affects more than 50 million people worldwide, making it one of the world's most prevalent neurological diseases.
The ability to predict the occurrence of an epileptic seizure could alleviate many risks and stresses people with epilepsy face.
We formulate the problem of detecting preictal (or pre-seizure) with reference to normal EEG as a precursor to incoming seizure.
- Score: 2.3096751699592137
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Epilepsy affects more than 50 million people worldwide, making it one of the
world's most prevalent neurological diseases. The main symptom of epilepsy is
seizures, which occur abruptly and can cause serious injury or death. The
ability to predict the occurrence of an epileptic seizure could alleviate many
risks and stresses people with epilepsy face. We formulate the problem of
detecting preictal (or pre-seizure) with reference to normal EEG as a precursor
to incoming seizure. To this end, we developed several supervised deep learning
approaches to identify preictal EEG from normal EEG. We further develop novel
unsupervised deep learning approaches to train the models on only normal EEG,
and detecting pre-seizure EEG as an anomalous event. These deep learning models
were trained and evaluated on two large EEG seizure datasets in a
person-specific manner. We found that both supervised and unsupervised
approaches are feasible; however, their performance varies depending on the
patient, approach and architecture. This new line of research has the potential
to develop therapeutic interventions and save human lives.
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