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This study aims to assess the feasibility and acceptability of a voice-based chatbot, powered by GPT-4o and Retrieval-Augmented Generation (RAG), for conducting depression screening using the Patient Health Questionnaire-9 (PHQ-9). The PHQ-9 is a validated self-report instrument widely used to screen, diagnose, and monitor the severity of depression. It consists of nine questions that correspond to the Diagnostic and Statistical Manual of Mental Disorders (DSM-5) criteria for major depressive disorder. Respondents rate the frequency of symptoms experienced over the past two weeks on a scale from 0 ("not at all") to 3 ("nearly every day"). The total score (ranging from 0 to 27) indicates the severity of depressive symptoms, categorized into minimal, mild, moderate, moderately severe, or severe depression. The PHQ-9 is also used to assess functional impairment and guide treatment decisions in clinical and research settings.
The voice-based chatbot integrates GPT-4o, with RAG to enhance its ability to provide informed and contextualized responses during interactions. GPT-4o serves as the conversational engine, capable of generating human-like, empathetic, and contextually appropriate dialogue. RAG, on the other hand, enables the chatbot to retrieve and incorporate external, up-to-date knowledge from a curated database or knowledge repository, ensuring the accuracy and reliability of its responses.
Full description
Depression is a prevalent mental health challenge with significant personal, social, and economic costs. Traditional mental health resources face barriers such as stigma, limited availability, and long wait times. Technology, particularly AI-powered tools, provides an opportunity to bridge these gaps. This study utilizes GPT-4o and RAG to create a voice-interactive chatbot capable of conversational engagement, administering the PHQ-9 questionnaire, and delivering personalized feedback.
Participants will fill in the PHQ-9 for self-testing before interacting with the chatbot (the results will not be disclosed to the public and will only be used for accuracy comparisons), and the results of their self-tests will be compared with the results given by the chatbot in terms of accuracy.
The chatbot interaction comprises three phases:
Warm-up conversations for rapport-building and general support.
Administration of the PHQ-9 questionnaire for depression screening.
Analysis of results and delivery of tailored recommendations.
Participants will interact with the chatbot and then participate in a 1-hour semi-structured interview to provide feedback on their experience. The study focuses on evaluating the acceptability and feasibility of using such LLM-based chatbots in mental health screening and identifying potential improvements and risks.
Study Objectives Primary Objectives
To evaluate the acceptability, feasibility, and accuracy of a GPT-4o and RAG-based voice chatbot (HopeBot) for depression screening using PHQ-9.
Hypothesis: Participants showed high acceptance of HopeBot (higher than 65%) and high willingness to use such LLM-based chatbot for mental health screening in the future (higher than 65%), indicating recognition of the credibility of LLM as a supportive tool in mental health screening (higher than 65%). Participants use of the HopeBot for depression screening matched their self-test PHQ-9 results by 100%
To analyze the chatbot's effectiveness in identifying depressive symptoms and delivering actionable recommendations.
Hypothesis: HopeBot can help users take the PHQ-9 test in a friendly way, help users categorize the answers accurately, and give accurate test results, the advice they provide is based on the official PHQ-9 guidelines, and more than 70% of the users say that their responses are very effective and helpful.
Secondary Objectives
To assess the feasibility and performance of integrating RAG with LLM in creating a voice-interactive chatbot for mental health.
Hypothesis: Over 65% of participants recognized that responses using RAG were more helpful and effective.
To explore the strengths, limitations, and risks of deploying LLMs in the mental health domain.
Hypothesis: More than 65% of users say that HopeBot is very convenient, more accessible, and cost-free to provide non-judgmental advice. However, 50% still expressed concerns about its privacy and data security.
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Data sourced from clinicaltrials.gov
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