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
📰 NewsSignals & Early TrendsModels & Research
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.
Related Articles

The programming passion is melting
Dev.to
Co-Activation Pattern Detection for Prompt Injection: A Mechanistic Interpretability Approach Using Sparse Autoencoders
Reddit r/LocalLLaMA

Nvidia GTC 2026: Jensen Huang Bets $1 Trillion on the Age of the AI Factory
Dev.to

How to Train Custom Language Models: Fine-Tuning vs Training From Scratch (2026)
Dev.to

KoboldCpp 1.110 - 3 YR Anniversary Edition, native music gen, qwen3tts voice cloning and more
Reddit r/LocalLLaMA