Akbari, Hesam and Bagherzadeh, Sara and Sedehi, Javid Farhadi and Nawaz, Rab and Rostami, Reza and Kazemi, Reza and Muhammad, Sadiq and Chen, Haihua and Mete, Mutlu (2026) Towards the Development of a Deep Learning Framework Using Adaptive and Non-Adaptive Time-Frequency Features for EEG-Based Depression Therapy Prediction. Brain Sciences, 16 (3). p. 301. DOI https://doi.org/10.3390/brainsci16030301
Akbari, Hesam and Bagherzadeh, Sara and Sedehi, Javid Farhadi and Nawaz, Rab and Rostami, Reza and Kazemi, Reza and Muhammad, Sadiq and Chen, Haihua and Mete, Mutlu (2026) Towards the Development of a Deep Learning Framework Using Adaptive and Non-Adaptive Time-Frequency Features for EEG-Based Depression Therapy Prediction. Brain Sciences, 16 (3). p. 301. DOI https://doi.org/10.3390/brainsci16030301
Akbari, Hesam and Bagherzadeh, Sara and Sedehi, Javid Farhadi and Nawaz, Rab and Rostami, Reza and Kazemi, Reza and Muhammad, Sadiq and Chen, Haihua and Mete, Mutlu (2026) Towards the Development of a Deep Learning Framework Using Adaptive and Non-Adaptive Time-Frequency Features for EEG-Based Depression Therapy Prediction. Brain Sciences, 16 (3). p. 301. DOI https://doi.org/10.3390/brainsci16030301
Abstract
Background/Objectives: Predicting individual response to depression therapy prior to treatment initiation remains a critical clinical challenge, as the response rate to both selective serotonin reuptake inhibitors (SSRIs) and repetitive transcranial magnetic stimulation (rTMS) is approximately 50%, leaving treatment selection largely trial-based. This study presents a computer-aided decision (CAD) framework that predicts depression therapy outcomes from pre-treatment electroencephalogram (EEG) signals using advanced time-frequency representations and pretrained convolutional neural networks (CNNs). Methods: EEG signals from 30 SSRI patients and 46 rTMS patients are transformed into time-frequency images using Continuous Wavelet Transform (CWT), Variational Mode Decomposition (VMD), and their pixel-level fusion. Four pretrained CNN architectures, including ResNet-18, MobileNet-V3, EfficientNet-B0, and TinyViT-Hybrid, are fine-tuned and evaluated under both image-independent and subject-independent 6-fold cross-validation (CV). Results: Results reveal a clear therapy-specific pattern: CWT-based representations yield superior discrimination for SSRI outcome prediction, with ResNet-18 achieving 99.43% image-level accuracy, while VMD-based representations are statistically superior for rTMS outcome prediction, with ResNet-18 reaching 98.77%. Pixel-level fusion of CWT and VMD does not consistently improve performance over the best individual representation in either therapy context. Pairwise Wilcoxon signed-rank tests confirm a two-tier architectural hierarchy in which ResNet-18 and TinyViT-Hybrid significantly outperform MobileNet-V3 and EfficientNet-B0 across all conditions, while remaining statistically indistinguishable from each other. At the subject level, the framework achieves 82.50% and 83.53% accuracy for SSRI and rTMS, respectively, under strict subject-independent evaluation. Per-channel analysis reveals occipital dominance for SSRI under CWT and frontotemporal dominance for rTMS under VMD, consistent with known neurophysiological mechanisms. Conclusions: These findings demonstrate that the choice of time-frequency representation is therapy-specific and at least as important as architectural complexity, and that competitive performance can be achieved without recurrent or attention layers by combining well-designed spectral images with a simple pretrained residual network.
| Item Type: | Article |
|---|---|
| Uncontrolled Keywords: | EEG; biomedical signal processing; time-frequency analysis; deep learning; computer-aided decision |
| Subjects: | Z Bibliography. Library Science. Information Resources > ZZ OA Fund (articles) |
| Divisions: | Faculty of Science and Health Faculty of Science and Health > Computer Science and Electronic Engineering, School of |
| SWORD Depositor: | Unnamed user with email elements@essex.ac.uk |
| Depositing User: | Unnamed user with email elements@essex.ac.uk |
| Date Deposited: | 05 Jun 2026 12:43 |
| Last Modified: | 05 Jun 2026 12:44 |
| URI: | http://repository.essex.ac.uk/id/eprint/43356 |
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Filename: brainsci-16-00301-v2.pdf
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