CwE-T achieved 85.0% case-level accuracy and 76.2% sensitivity with 91.2% specificity in detecting EEG abnormalities.
Does the CwE-T framework improve the accuracy and computational efficiency of EEG abnormality detection compared to baseline deep learning models?
Two public EEG datasets: TUH Abnormal EEG Corpus (2,993 EEG files with normal/abnormal labels) and CHB-MIT dataset (24 cases from 23 pediatric patients with drug-resistant epilepsy).
CwE-T framework (channel-wise convolutional neural network (CNN)-based encoder combined with a single-head transformer classifier)
Baseline deep learning models (EEGNet, EEG-ARNN, Deep4Conv, and FusionCNN)
Accuracy, sensitivity, and specificity for EEG abnormality detection at per-case and per-signal levels
The CwE-T framework provides a highly efficient and potentially interpretable method for EEG abnormality detection, achieving competitive accuracy with significantly lower computational costs than standard transformer models.
Electroencephalogram (EEG) signals are critical for detecting abnormal brain activity, but their high dimensionality and complexity pose significant challenges for effective analysis. In this paper, we propose CwE-T, a novel framework that combines a channel-wise convolutional neural network (CNN)-based encoder with a single-head transformer classifier for efficient EEG abnormality detection. The channel-wise encoder compresses raw EEG signals while preserving channel independence, reducing computational costs and retaining biologically meaningful features. CwE-T was evaluated using two public datasets. For the TUH Abnormal EEG Corpus, the proposed model achieved 85.0% accuracy, 76.2% sensitivity, and 91.2% specificity at per-case level, outperforming baseline models such as EEGNet, Deep4Conv, and FusionCNN. For the CHB-MIT dataset, the proposed model achieved 85.4% sensitivity and 90.0% specificity for per-signal evaluation. Furthermore, CwE-T requires only 202M FLOPs and 2.9M parameters, making it significantly more efficient than transformer-based alternatives. The framework incorporates a channelwise design that provides potential for interpretability, offering promising directions for future research in neuroscience and clinical applications. The source code is available at https://github.com/YossiZhao/CwE-T.
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Youshen Zhao
Keiji IRAMINA
Advanced Biomedical Engineering
Kyushu University
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Zhao et al. (Thu,) conducted a other in EEG abnormalities (n=2,993). CwE-T (Channel-wise Encoder with Transformer) vs. baseline models (EEGNet, Deep4Conv, FusionCNN, EEG-ARNN) was evaluated on Accuracy, sensitivity, specificity for EEG abnormality detection (null, 95% CI null, p=<0.01). CwE-T achieved 85.0% case-level accuracy and 76.2% sensitivity with 91.2% specificity in detecting EEG abnormalities.
www.synapsesocial.com/papers/69b79dce8166e15b153aaf80 — DOI: https://doi.org/10.14326/abe.15.174
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