Identification of Epileptic Spasms (ESES) Phases Using EEG Signals: A Vision Transformer Approach
Journal:
arXiv
Published Date:
Dec 17, 2024
Abstract
This work introduces a new approach to the Epileptic Spasms (ESES) detection
based on the EEG signals using Vision Transformers (ViT). Classic ESES
detection approaches have usually been performed with manual processing or
conventional algorithms, suffering from poor sample sizes, single-channel-based
analyses, and low generalization abilities. In contrast, the proposed ViT model
overcomes these limitations by using the attention mechanism to focus on the
important features in multi-channel EEG data, which is contributing to both
better accuracy and efficiency. The model processes frequency-domain
representations of EEG signals, such as spectrograms, as image data to capture
long-range dependencies and complex patterns in the signal. The model
demonstrates high performance with an accuracy of 97% without requiring
intensive data preprocessing, thus rendering it suitable for real-time clinical
applications on a large scale. The method represents a significant development
in the advancement of neurological disorders such as ESES in detection and
analysis.