# Simulated virtual reality experiences for predicting early treatment response in panic disorder

**Authors:** Byung-Hoon Kim, Jae-Jin Kim, Junhyung Kim, Jiook Cha, Sang-Won Jeon, Kang-Seob Oh, Dong-Won Shin, Sung Joon Cho

PMC · DOI: 10.3389/fdgth.2025.1684001 · 2025-11-06

## TL;DR

A virtual reality tool helps predict early treatment response in panic disorder patients more accurately than traditional methods.

## Contribution

A new virtual reality assessment tool combined with machine learning improves prediction of early treatment response in panic disorder.

## Key findings

- A machine-learning model using virtual reality and clinical data predicted treatment response with 85% accuracy.
- Anxiety levels during virtual scenarios and heart rate variability were key predictors of treatment outcomes.
- Virtual reality-based assessments outperformed traditional clinical methods in predicting early responders.

## Abstract

Panic disorder (PD) is a disabling anxiety condition in which early improvement during treatment can predict better long-term outcomes.

This study investigated whether a newly developed virtual reality-based assessment tool, the Virtual Reality Assessment of Panic Disorder (VRA-PD), can help predict early treatment response in individuals with PD.

In total, 52 participants, including 25 patients diagnosed with PD and 27 healthy individuals, were evaluated every 2 months over a 6-month period. Assessments included self-reported anxiety levels and heart rate variability measured during virtual reality scenarios, as well as standard clinical questionnaires. Patients with PD were further categorized based on their treatment progress into early responders (n = 7) and delayed responders (n = 18). A machine-learning model (CatBoost) was used to classify participants into early responder, delayed responder, and healthy control groups.

The model that combined virtual reality-based and conventional clinical data achieved higher accuracy (85%) and F1-score (0.71) than models using only clinical (accuracy: 77%, F1-score: 0.56) or only virtual reality data (accuracy: 75%, F1-score: 0.64). The most important predictors included anxiety levels during virtual scenarios, heart rate variability metrics, and scores from clinical scales such as the Panic Disorder Severity Scale and Anxiety Sensitivity Index.

This study highlights the value of virtual reality-based assessments for predicting early treatment outcomes in PD. By providing ecologically valid and individualized measures, virtual reality may enhance clinical decision-making and support personalized mental healthcare.

## Linked entities

- **Diseases:** panic disorder (MONDO:0005383)

## Full-text entities

- **Diseases:** PD (MESH:D016584), Anxiety (MESH:D001007)
- **Species:** Homo sapiens (human, species) [taxon 9606]

## Figures

3 figures with captions in the complete paper: https://tomesphere.com/paper/PMC12631630/full.md

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Source: https://tomesphere.com/paper/PMC12631630