# A novel deep learning model for objective quantification of generalized anxiety disorder severity using EEG functional connectivity

**Authors:** Xiaodong Luo, Yuhuan Cui, Zihao Yan, Wei Liu, Bin Zhou, Gang Li, Shouqing Liu

PMC · DOI: 10.3389/fpsyt.2026.1764932 · Frontiers in Psychiatry · 2026-02-18

## TL;DR

This study introduces a deep learning model that uses EEG data to objectively measure the severity of generalized anxiety disorder.

## Contribution

A novel Conv_gMLP deep learning model is proposed for predicting GAD severity using EEG functional connectivity.

## Key findings

- The Conv_gMLP model achieved a mean absolute error of 0.32 in predicting HAM-A scores, outperforming other models.
- Frontal-temporal beta band connectivity was most important for predicting GAD severity.
- EEG functional connectivity provides objective neurobiological markers for GAD severity.

## Abstract

Generalized anxiety disorder (GAD) is a prevalent and disabling psychiatric condition, yet its severity is still assessed mainly through clinical interviews and self-report scales, which lack objective neurobiological markers. This study aimed to develop an electroencephalography (EEG)-based deep learning (DL) model for objective quantification of GAD severity based on functional connectivity (FC) features. Resting-state EEG was recorded for 10 min from 80 patients with GAD and 39 healthy controls (HC). EEG segments with window lengths between 2 and 10 s were used to compute band-limited FC features, which were then used as input to a convolutional gated multilayer perceptron (Conv_gMLP) network for continuous prediction of the Hamilton Anxiety Rating Scale (HAM-A) total scores. The Conv_gMLP model achieved a mean absolute error (MAE) of 0.32 ± 0.07 in predicting the HAM-A total score (range: 0–56), outperforming conventional machine learning (ML) models and other DL architectures. Feature attribution analyses indicated that connectivity between frontal and temporal regions, particularly in the beta frequency range, contributed most strongly to the prediction of GAD severity. These findings suggest that EEG FC and beta rhythms encode clinically meaningful information about GAD severity, and that Conv_gMLP-based models may provide a promising tool for objective, time-efficient assessment to support individualized treatment planning.

## Linked entities

- **Diseases:** Generalized anxiety disorder (MONDO:0001942), GAD (MONDO:0001942)

## Full-text entities

- **Diseases:** autoimmune diseases (MESH:D001327), TPE (MESH:D020914), stroke (MESH:D020521), DL (MESH:D007859), difficulty concentrating (MESH:C567712), PLI (MESH:D000210), Anxiety disorders (MESH:D001008), muscle tension (MESH:D018781), neurodegenerative diseases (MESH:D019636), inflammatory (MESH:D007249), headaches (MESH:D006261), hepatic or renal impairment (MESH:D008107), sleep disturbances (MESH:D012893), malignant tumors (MESH:D009369), substance or alcohol abuse (MESH:D019966), Mental Disorders (MESH:D001523), Alzheimer's disease (MESH:D000544), Anxiety (MESH:D001007), schizophrenia (MESH:D012559), cardiopulmonary dysfunction (MESH:D006323), social anxiety disorder (MESH:D000072861), epilepsy (MESH:D004827), brain injury (MESH:D001930), GAD (MESH:C000726808), CAM (MESH:D008311), restlessness (MESH:D011595), HAM (MESH:D015493)
- **Chemicals:** psychoactive medications (-), benzodiazepines (MESH:D001569)
- **Species:** Homo sapiens (human, species) [taxon 9606]

## Full text

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## Figures

5 figures with captions in the complete paper: https://tomesphere.com/paper/PMC12957247/full.md

## References

58 references — full list in the complete paper: https://tomesphere.com/paper/PMC12957247/full.md

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Source: https://tomesphere.com/paper/PMC12957247