Aligning Large Language Models for Enhancing Psychiatric Interviews Through Symptom Delineation and Summarization: Pilot Study
Jae-hee So, Joonhwan Chang, Eunji Kim, Junho Na, JiYeon Choi, Jy-yong, Sohn, Byung-Hoon Kim, Sang Hui Chu

TL;DR
This pilot study demonstrates that large language models can effectively identify psychiatric symptoms and generate coherent summaries from interview transcripts, aiding mental health assessments.
Contribution
The study introduces methods for LLMs to delineate symptoms and summarize psychiatric interviews, showing promising accuracy and coherence in a clinical context.
Findings
LLMs achieved over 80% accuracy in symptom recognition.
High coherence and relevance scores in summarization tasks.
Fine-tuning improved symptom detection performance.
Abstract
Background: Advancements in large language models (LLMs) have opened new possibilities in psychiatric interviews, an underexplored area where LLMs could be valuable. This study focuses on enhancing psychiatric interviews by analyzing counseling data from North Korean defectors who have experienced trauma and mental health issues. Objective: The study investigates whether LLMs can (1) identify parts of conversations that suggest psychiatric symptoms and recognize those symptoms, and (2) summarize stressors and symptoms based on interview transcripts. Methods: LLMs are tasked with (1) extracting stressors from transcripts, (2) identifying symptoms and their corresponding sections, and (3) generating interview summaries using the extracted data. The transcripts were labeled by mental health experts for training and evaluation. Results: In the zero-shot inference setting using GPT-4…
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Taxonomy
TopicsMachine Learning in Healthcare · Mental Health via Writing · Topic Modeling
