An Integrative Survey on Mental Health Conversational Agents to Bridge Computer Science and Medical Perspectives.

Young-Min Cho, Sunny Rai, Lyle Ungar, João Sedoc, Sharath Chandra Guntuku
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Abstract

Mental health conversational agents (a.k.a. chatbots) are widely studied for their potential to offer accessible support to those experiencing mental health challenges. Previous surveys on the topic primarily consider papers published in either computer science or medicine, leading to a divide in understanding and hindering the sharing of beneficial knowledge between both domains. To bridge this gap, we conduct a comprehensive literature review using the PRISMA framework, reviewing 534 papers published in both computer science and medicine. Our systematic review reveals 136 key papers on building mental health-related conversational agents with diverse characteristics of modeling and experimental design techniques. We find that computer science papers focus on LLM techniques and evaluating response quality using automated metrics with little attention to the application while medical papers use rule-based conversational agents and outcome metrics to measure the health outcomes of participants. Based on our findings on transparency, ethics, and cultural heterogeneity in this review, we provide a few recommendations to help bridge the disciplinary divide and enable the cross-disciplinary development of mental health conversational agents.

心理健康对话代理综合调查,架起计算机科学与医学视角的桥梁。
心理健康对话式代理(又称聊天机器人)因其可为面临心理健康挑战的人提供无障碍支持而被广泛研究。以往关于该主题的调查主要考虑计算机科学或医学领域发表的论文,这导致了理解上的鸿沟,阻碍了两个领域之间有益知识的共享。为了弥补这一差距,我们采用 PRISMA 框架进行了一次全面的文献综述,综述了计算机科学和医学领域发表的 534 篇论文。我们的系统性综述揭示了 136 篇关于构建心理健康相关会话代理的主要论文,这些论文在建模和实验设计技术方面具有不同的特点。我们发现,计算机科学论文侧重于 LLM 技术和使用自动指标评估响应质量,很少关注应用,而医学论文则使用基于规则的会话代理和结果指标来衡量参与者的健康结果。基于本综述在透明度、伦理和文化异质性方面的发现,我们提出了一些建议,以帮助弥合学科鸿沟,实现心理健康对话代理的跨学科发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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