利用基于人工智能的大语言对话模型(LLMs)支持心理健康服务需求

Tin Lai, Yukun Shi, Zicong Du, Jiajie Wu, Ken Fu, Yichao Dou, Ziqi Wang
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摘要

近年来,对心理咨询的需求大幅增长,尤其是 COVID-19 在全球爆发后,人们对及时、专业的心理健康支持的需求更加强烈。在线心理咨询成为应对这一需求的主要服务模式。在本研究中,我们提出了 Psy-LLM 框架,这是一种基于人工智能的辅助工具,利用大型语言模型(LLM)在心理咨询环境中进行问题解答,以缓解对心理健康专业人员的需求。我们的框架将预先训练好的 LLM 与来自心理学家的真实世界专业问答(Q&A)和广泛抓取的心理学文章相结合。Psy-LLM 框架可作为医疗保健专业人员的前端工具,使他们能够提供即时响应和正念活动,以减轻患者的压力。此外,它还可作为筛选工具,识别需要进一步帮助的紧急病例。我们使用内在指标(如困惑度)和外在评价指标(包括人类参与者对响应的有用性、流畅性、相关性和逻辑性的评估)对该框架进行了评估。结果表明,Psy-LLM 框架在为心理问题生成连贯、相关的答案方面非常有效。本文讨论了使用大型语言模型通过人工智能技术加强心理健康支持的潜力和局限性。
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Supporting the Demand on Mental Health Services with AI-Based Conversational Large Language Models (LLMs)
The demand for psychological counselling has grown significantly in recent years, particularly with the global outbreak of COVID-19, which heightened the need for timely and professional mental health support. Online psychological counselling emerged as the predominant mode of providing services in response to this demand. In this study, we propose the Psy-LLM framework, an AI-based assistive tool leveraging large language models (LLMs) for question answering in psychological consultation settings to ease the demand on mental health professions. Our framework combines pre-trained LLMs with real-world professional questions-and-answers (Q&A) from psychologists and extensively crawled psychological articles. The Psy-LLM framework serves as a front-end tool for healthcare professionals, allowing them to provide immediate responses and mindfulness activities to alleviate patient stress. Additionally, it functions as a screening tool to identify urgent cases requiring further assistance. We evaluated the framework using intrinsic metrics, such as perplexity, and extrinsic evaluation metrics, including human participant assessments of response helpfulness, fluency, relevance, and logic. The results demonstrate the effectiveness of the Psy-LLM framework in generating coherent and relevant answers to psychological questions. This article discusses the potential and limitations of using large language models to enhance mental health support through AI technologies.
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