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Main Authors: Kuhlmeier, Florian Onur, Hanschmann, Leon, Rabe, Melina, Luettke, Stefan, Brakemeier, Eva-Lotta, Maedche, Alexander
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2503.21540
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author Kuhlmeier, Florian Onur
Hanschmann, Leon
Rabe, Melina
Luettke, Stefan
Brakemeier, Eva-Lotta
Maedche, Alexander
author_facet Kuhlmeier, Florian Onur
Hanschmann, Leon
Rabe, Melina
Luettke, Stefan
Brakemeier, Eva-Lotta
Maedche, Alexander
contents LLMs promise to overcome limitations of rule-based mental health chatbots through improved natural language capabilities, yet their ability to deliver evidence-based psychological interventions remains largely unverified because evaluations rarely apply the validated fidelity measures used to assess psychotherapists. We developed an LLM-based chatbot that delivers behavioral activation for depression and generated 48 complete chat sessions with diverse artificial users. Ten psychotherapists assessed these sessions using the Quality of Behavioral Activation Scale (Q-BAS), a validated fidelity instrument. Results show that the chatbot reliably executed the intervention across all phases and maintained safety protocols, but it struggled with clinical judgment, particularly when verifying the feasibility of proposed activities. Overall, our findings suggest that LLM-based chatbots can execute therapeutic protocols with high fidelity, while robust clinical reasoning remains an open challenge. We outline design implications to address this gap and provide the chatbot and artificial user prompts.
format Preprint
id arxiv_https___arxiv_org_abs_2503_21540
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Designing an LLM-Based Behavioral Activation Chatbot for Young People with Depression: Insights from an Evaluation with Artificial Users and Clinical Experts
Kuhlmeier, Florian Onur
Hanschmann, Leon
Rabe, Melina
Luettke, Stefan
Brakemeier, Eva-Lotta
Maedche, Alexander
Human-Computer Interaction
LLMs promise to overcome limitations of rule-based mental health chatbots through improved natural language capabilities, yet their ability to deliver evidence-based psychological interventions remains largely unverified because evaluations rarely apply the validated fidelity measures used to assess psychotherapists. We developed an LLM-based chatbot that delivers behavioral activation for depression and generated 48 complete chat sessions with diverse artificial users. Ten psychotherapists assessed these sessions using the Quality of Behavioral Activation Scale (Q-BAS), a validated fidelity instrument. Results show that the chatbot reliably executed the intervention across all phases and maintained safety protocols, but it struggled with clinical judgment, particularly when verifying the feasibility of proposed activities. Overall, our findings suggest that LLM-based chatbots can execute therapeutic protocols with high fidelity, while robust clinical reasoning remains an open challenge. We outline design implications to address this gap and provide the chatbot and artificial user prompts.
title Designing an LLM-Based Behavioral Activation Chatbot for Young People with Depression: Insights from an Evaluation with Artificial Users and Clinical Experts
topic Human-Computer Interaction
url https://arxiv.org/abs/2503.21540