MindGuard:通过 Edge LLM 实现无障碍、无情景的心理健康急救

Sijie Ji, Xinzhe Zheng, Jiawei Sun, Renqi Chen, Wei Gao, Mani Srivastava
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引用次数: 0

摘要

精神疾病是全球最普遍的疾病之一,几乎每四个人中就有一人受到影响。尽管其影响广泛,但干预率仍低于 25%,这主要是由于诊断和干预都需要患者的大力配合。造成这种低治疗率的核心问题是耻辱感,它阻碍了一半以上的患者寻求帮助。本文介绍了 "心灵卫士"(MindGuard)--一个方便、无污名、专业的移动心理保健系统,旨在提供心理健康急救。MindGuard 的核心是一个创新的边缘LLM,它配备了专业的心理健康知识,能将客观的移动传感器数据与主观的生态瞬间评估记录无缝整合,提供个性化的筛查和干预对话。我们利用开放数据集对 MindGuard 进行了广泛的评估,评估时间跨度长达四年,并在各种移动设备上进行了实际部署,涉及 20 名受试者,为期两周。值得注意的是,MindGuard 取得了与 GPT-4 不相上下的结果,并且在模型规模超过 GPT-4 10 倍的情况下,MindGuard 的表现也优于 GPT-4。我们相信,MindGuard 为移动 LLM 应用铺平了道路,通过在日常生活中以被动的综合监测取代自我报告和干预对话,从而确保提供无障碍、无污名化的心理健康支持,MindGuard 有可能彻底改变心理保健实践。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MindGuard: Towards Accessible and Sitgma-free Mental Health First Aid via Edge LLM
Mental health disorders are among the most prevalent diseases worldwide, affecting nearly one in four people. Despite their widespread impact, the intervention rate remains below 25%, largely due to the significant cooperation required from patients for both diagnosis and intervention. The core issue behind this low treatment rate is stigma, which discourages over half of those affected from seeking help. This paper presents MindGuard, an accessible, stigma-free, and professional mobile mental healthcare system designed to provide mental health first aid. The heart of MindGuard is an innovative edge LLM, equipped with professional mental health knowledge, that seamlessly integrates objective mobile sensor data with subjective Ecological Momentary Assessment records to deliver personalized screening and intervention conversations. We conduct a broad evaluation of MindGuard using open datasets spanning four years and real-world deployment across various mobile devices involving 20 subjects for two weeks. Remarkably, MindGuard achieves results comparable to GPT-4 and outperforms its counterpart with more than 10 times the model size. We believe that MindGuard paves the way for mobile LLM applications, potentially revolutionizing mental healthcare practices by substituting self-reporting and intervention conversations with passive, integrated monitoring within daily life, thus ensuring accessible and stigma-free mental health support.
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