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Fronto-parietal and fronto-temporal EEG coherence as predictive neuromarkers of transcutaneous auricular vagus nerve stimulation response in treatment-resistant schizophrenia: A machine learning study

arXiv cs.LG / 3/17/2026

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Key Points

  • The study develops an EEG-based machine learning model to predict individual taVNS response in treatment-resistant schizophrenia using pre-treatment EEG features such as power, coherence, and dynamic functional connectivity.
  • The optimal model achieved a strong correlation (r = 0.87, p < .001) between predicted and observed changes in PANSS-FSNS for the active taVNS group, indicating robust predictive performance.
  • Predictive features were predominantly fronto-parietal and fronto-temporal coherence measures, with negligible predictive power in the sham group, highlighting specificity to taVNS effects.
  • The results suggest EEG oscillatory neuromarkers could enable mechanism-informed precision neuromodulation and help identify potential therapeutic targets for negative symptoms in TRS.

Abstract

Response variability limits the clinical utility of transcutaneous auricular vagus nerve stimulation (taVNS) for negative symptoms in treatment-resistant schizophrenia (TRS). This study aimed to develop an electroencephalography (EEG)-based machine learning (ML) model to predict individual response and explore associated neurophysiological mechanisms. We used ML to develop and validate predictive models based on pre-treatment EEG data features (power, coherence, and dynamic functional connectivity) from 50 TRS patients enrolled in the taVNS trial, within a nested cross-validation framework. Participants received 20 sessions of active or sham taVNS (n = 25 each) over two weeks, followed by a two-week follow-up. The prediction target was the percentage change in the positive and negative syndrome scale-factor score for negative symptoms (PANSS-FSNS) from baseline to post-treatment, with further evaluation of model specificity and neurophysiological relevance.The optimal model accurately predicted taVNS response in the active group, with predicted PANSS-FSNS changes strongly correlated with observed changes (r = 0.87, p < .001); permutation testing confirmed performance above chance (p < .001). Nine consistently retained features were identified, predominantly fronto-parietal and fronto-temporal coherence features. Negligible predictive performance in the sham group and failure to predict positive symptom change support the predictive specificity of this oscillatory signature for taVNS-related negative symptom improvement. Two coherence features within fronto-parietal-temporal networks showed post-taVNS changes significantly associated with symptom improvement, suggesting dual roles as predictors and potential therapeutic targets. EEG oscillatory neuromarkers enable accurate prediction of individual taVNS response in TRS, supporting mechanism-informed precision neuromodulation strategies.