Using Large Language Models to Create Personalized Networks From Therapy Sessions
Clarissa W. Ong, Hiba Arnaout, Kate Sheehan, Estella Fox, Eugen Owtscharow, Iryna Gurevych

TL;DR
This paper presents an innovative pipeline using large language models to automatically generate personalized psychological networks from therapy transcripts, aiding treatment planning and case conceptualization with high clinical utility.
Contribution
It introduces a novel multi-step method leveraging LLMs for creating clinically meaningful psychological networks from therapy data, enhancing scalability and interpretability.
Findings
High performance in identifying psychological processes with few examples
Networks outperformed direct prompting in clinical utility and interpretability
Experts rated the networks highly for relevance, novelty, and usefulness
Abstract
Recent advances in psychotherapy have focused on treatment personalization, such as by selecting treatment modules based on personalized networks. However, estimating personalized networks typically requires intensive longitudinal data, which is not always feasible. A solution to facilitate scalability of network-driven treatment personalization is leveraging LLMs. In this study, we present an end-to-end pipeline for automatically generating client networks from 77 therapy transcripts to support case conceptualization and treatment planning. We annotated 3364 psychological processes and their corresponding dimensions in therapy transcripts. Using these data, we applied in-context learning to jointly identify psychological processes and their dimensions. The method achieved high performance even with a few training examples. To organize the processes into networks, we introduced a…
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Taxonomy
TopicsMental Health Research Topics · Mental Health via Writing · Digital Mental Health Interventions
