Difference between revisions of "Exploring Algorithms for Early Seizure Detection"
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Revision as of 15:39, 29 October 2019
Description
Epilepsy is a severe and prevalent chronic neurological disorder affecting 1–2% of the world’s population. One third of epilepsy patients continue to suffer from seizures despite best possible pharmacological treatment. For these patients with so-called drug-resistant epilepsy, various algorithms based on intracranial electroencephalography (iEEG) recording are proposed to detect the onset of seizures. Among them are algorithms based on brain-inspired hyperdimensional (HD) computing available at http://ieeg-swez.ethz.ch/. The main goal of this project is to enhance current HD algorithms, or propose new ones, to especially reduce the delay of seizure onset detection on long-term iEEG dataset, ultimately pushing towards early seizure detection.
Status: In progress
Anna Summerauer
- Supervision: Michael Hersche, Abbas Rahimi
Prerequisites
- Machine Learning
- Python Programming
- Cuda Programming
Character
- 40% Theory
- 60% Programming