Preictal onset detection through unsupervised clustering for epileptic seizure prediction

Image credit: Alessio Quercia

Abstract

Epilepsy is a common neurological disorder characterized by recurrent epileptic seizures. These seizures have different intensities and might lead to accidents or, in the worst case, to sudden death. Therefore, being able to predict epileptic seizures would allow patients to be prepared, reducing the risk of injury. This paper focuses on epileptic seizure prediction using EEG (Electroencephalogram) signals. In contrast to the standard approach where the preictal state is assumed to have a constant duration in all the seizures of a patient, we propose a new method that labels each seizure individually exploiting clustering. Our labeling approach, which was applicable for 38% of the selected seizures, results in substantial improvements compared to the standard one. In fact, it reduces noise in the labels and improves the performance of the binary classifier used to distinguish the interictal and preictal states. Hence, our results suggest that the preictal duration is seizure-specific, not only patient-specific. Finally, we show that our method is able to predict 17 out of 18 (94%) seizures between 15 and 85 minutes, before seizure onset.

Publication
In IEEE International Conference on Digital Health 2021
Alessio Quercia
Alessio Quercia
CS PhD Candidate @ RWTH Aachen University & FZJ | ex IBM Research Zurich, WSense

Alessio is a PhD Student in Computer Science at RWTH Aachen and at the Machine Learning and Data Analytics Institute in Forschungszentrum Jülich. He is currently focusing on Data Efficient Learning, Multi-Task Learning, Transfer Learning and Parameter-Efficient Fine-Tuning.

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