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15th International Conference on Computer and Knowledge Engineering
Prediction of rTMS Treatment Response in Depression Using a Frequency-Based EEG Biomarker
Authors :
Ali Asadi Zeidabadi
1
Saeid Rashidi
2
1- Department of Biomedical Engineering, SR.C., Islamic Azad University, Tehran, Iran
2- Department of Biomedical Engineering, SR.C., Islamic Azad University, Tehran, Iran
Keywords :
MDD،Spectral biomarker،rTMS،EEG،Frequency analysis،Predictive modeling
Abstract :
Major depressive disorder (MDD) is a leading cause of disability worldwide, and a significant proportion of patients do not respond to standard pharmacological and psychotherapeutic treatments. Repetitive transcranial magnetic stimulation (rTMS) provides a non-invasive neuromodulatory therapy for treatment-resistant depression (TRD); however, the absence of reliable biomarkers limits its precision. In this study, resting state EEG was recorded prior to treatment from 80 MDD patients undergoing a 20-session rTMS protocol. Spectral features across canonical frequency bands were extracted from 19 scalp electrodes, and a regularized feature selection technique identified a single high frequency component at electrode F4 as the primary discriminator between responders (R) and non-responders (NR). This feature was normalized relative to an empirically derived reference cohort of optimal R to create a differential index. Combined with Support Vector Machine (SVM) and k Nearest Neighbor (k-NN) classifiers under leave-one-out cross validation, this index separated R from NR with 100% accuracy. These findings indicate that a succinct, interpretable spectral marker can predict individual rTMS outcomes and may inform personalized neuromodulation strategies in future studies.
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