A review of the explainability and safety of conversational agents for mental health to identify avenues for improvement
Article Status
Published
Authors/contributors
- Sarkar, Surjodeep (Author)
- Gaur, Manas (Author)
- Chen, Lujie Karen (Author)
- Garg, Muskan (Author)
- Srivastava, Biplav (Author)
Title
A review of the explainability and safety of conversational agents for mental health to identify avenues for improvement
Abstract
Virtual Mental Health Assistants (VMHAs) continuously evolve to support the overloaded global healthcare system, which receives approximately 60 million primary care visits and 6 million emergency room visits annually. These systems, developed by clinical psychologists, psychiatrists, and AI researchers, are designed to aid in Cognitive Behavioral Therapy (CBT). The main focus of VMHAs is to provide relevant information to mental health professionals (MHPs) and engage in meaningful conversations to support individuals with mental health conditions. However, certain gaps prevent VMHAs from fully delivering on their promise during active communications. One of the gaps is their inability to explain their decisions to patients and MHPs, making conversations less trustworthy. Additionally, VMHAs can be vulnerable in providing unsafe responses to patient queries, further undermining their reliability. In this review, we assess the current state of VMHAs on the grounds of user-level explainability and safety, a set of desired properties for the broader adoption of VMHAs. This includes the examination of ChatGPT, a conversation agent developed on AI-driven models: GPT3.5 and GPT-4, that has been proposed for use in providing mental health services. By harnessing the collaborative and impactful contributions of AI, natural language processing, and the mental health professionals (MHPs) community, the review identifies opportunities for technological progress in VMHAs to ensure their capabilities include explainable and safe behaviors. It also emphasizes the importance of measures to guarantee that these advancements align with the promise of fostering trustworthy conversations.
Publication
Frontiers in Artificial Intelligence
Volume
6
Pages
1229805
Date
2023-10-12
Journal Abbr
Front. Artif. Intell.
ISSN
2624-8212
Accessed
21/05/2024, 20:05
Library Catalogue
DOI.org (Crossref)
Extra
<AI Smry>: The review identifies opportunities for technological progress in VMHAs to ensure their capabilities include explainable and safe behaviors and emphasizes the importance of measures to guarantee that these advancements align with the promise of fostering trustworthy conversations.
PMID: 37899961
Citation
Sarkar, S., Gaur, M., Chen, L. K., Garg, M., & Srivastava, B. (2023). A review of the explainability and safety of conversational agents for mental health to identify avenues for improvement. Frontiers in Artificial Intelligence, 6, 1229805. https://doi.org/10.3389/frai.2023.1229805
Technical methods
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