TRUST: An LLM-Based Dialogue System for Trauma Understanding and Structured Assessments
Journal:
arXiv
Published Date:
Apr 30, 2025
Abstract
Objectives: While Large Language Models (LLMs) have been widely used to
assist clinicians and support patients, no existing work has explored dialogue
systems for standard diagnostic interviews and assessments. This study aims to
bridge the gap in mental healthcare accessibility by developing an LLM-powered
dialogue system that replicates clinician behavior. Materials and Methods: We
introduce TRUST, a framework of cooperative LLM modules capable of conducting
formal diagnostic interviews and assessments for Post-Traumatic Stress Disorder
(PTSD). To guide the generation of appropriate clinical responses, we propose a
Dialogue Acts schema specifically designed for clinical interviews.
Additionally, we develop a patient simulation approach based on real-life
interview transcripts to replace time-consuming and costly manual testing by
clinicians. Results: A comprehensive set of evaluation metrics is designed to
assess the dialogue system from both the agent and patient simulation
perspectives. Expert evaluations by conversation and clinical specialists show
that TRUST performs comparably to real-life clinical interviews. Discussion:
Our system performs at the level of average clinicians, with room for future
enhancements in communication styles and response appropriateness. Conclusions:
Our TRUST framework shows its potential to facilitate mental healthcare
availability.