The use of Multi-domain Electroencephalogram Representations in the building of Models based on Convolutional and Recurrent Neural Networks for Epilepsy Detection
- URL: http://arxiv.org/abs/2504.17908v1
- Date: Thu, 24 Apr 2025 19:50:48 GMT
- Title: The use of Multi-domain Electroencephalogram Representations in the building of Models based on Convolutional and Recurrent Neural Networks for Epilepsy Detection
- Authors: Luiz Antonio Nicolau Anghinoni, Gustavo Weber Denardin, Jadson Castro Gertrudes, Dalcimar Casanova, Jefferson Tales Oliva,
- Abstract summary: Epilepsy affects approximately 50 million people globally and remains challenging to treat.<n>EEG data is prone to variability between experts, emphasizing the need for automated solutions.<n>This work systematically compares deep neural networks trained on EEG data in time, frequency, and time-frequency domains.<n>Results demonstrate that frequency-domain data achieves detection metrics exceeding 97%, providing a robust foundation for more accurate and reliable seizure detection systems.
- Score: 1.4785447770765987
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Epilepsy, affecting approximately 50 million people globally, is characterized by abnormal brain activity and remains challenging to treat. The diagnosis of epilepsy relies heavily on electroencephalogram (EEG) data, where specialists manually analyze epileptiform patterns across pre-ictal, ictal, post-ictal, and interictal periods. However, the manual analysis of EEG signals is prone to variability between experts, emphasizing the need for automated solutions. Although previous studies have explored preprocessing techniques and machine learning approaches for seizure detection, there is a gap in understanding how the representation of EEG data (time, frequency, or time-frequency domains) impacts the predictive performance of deep learning models. This work addresses this gap by systematically comparing deep neural networks trained on EEG data in these three domains. Through the use of statistical tests, we identify the optimal data representation and model architecture for epileptic seizure detection. The results demonstrate that frequency-domain data achieves detection metrics exceeding 97\%, providing a robust foundation for more accurate and reliable seizure detection systems.
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