SlimSeiz: Efficient Channel-Adaptive Seizure Prediction Using a Mamba-Enhanced Network
Epileptic seizures cause abnormal brain activity, and their unpredictability can lead to accidents, underscoring the need for long-term seizure prediction. Although seizures can be predicted by analyzing electroencephalogram (EEG) signals, existing methods often require too many electrode channels o...
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Zusammenfassung: | Epileptic seizures cause abnormal brain activity, and their unpredictability
can lead to accidents, underscoring the need for long-term seizure prediction.
Although seizures can be predicted by analyzing electroencephalogram (EEG)
signals, existing methods often require too many electrode channels or larger
models, limiting mobile usability. This paper introduces a SlimSeiz framework
that utilizes adaptive channel selection with a lightweight neural network
model. SlimSeiz operates in two states: the first stage selects the optimal
channel set for seizure prediction using machine learning algorithms, and the
second stage employs a lightweight neural network based on convolution and
Mamba for prediction. On the Children's Hospital Boston-MIT (CHB-MIT) EEG
dataset, SlimSeiz can reduce channels from 22 to 8 while achieving a
satisfactory result of 94.8% accuracy, 95.5% sensitivity, and 94.0% specificity
with only 21.2K model parameters, matching or outperforming larger models'
performance. We also validate SlimSeiz on a new EEG dataset, SRH-LEI, collected
from Shanghai Renji Hospital, demonstrating its effectiveness across different
patients. The code and SRH-LEI dataset are available at
https://github.com/guoruilu/SlimSeiz. |
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DOI: | 10.48550/arxiv.2410.09998 |