探索心理健康会话AI Clare®中的用户特征、动机、期望和治疗联盟:一项基线研究。

IF 3.2 Q1 HEALTH CARE SCIENCES & SERVICES
Frontiers in digital health Pub Date : 2025-06-13 eCollection Date: 2025-01-01 DOI:10.3389/fdgth.2025.1576135
Lea Maria Schäfer, Tabea Krause, Stephan Köhler
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引用次数: 0

摘要

本研究考察了对人工智能(AI)自助服务感兴趣的用户的特征、动机、期望和态度,该服务由机器人Clare®提供,这是一种用于心理健康支持的对话式人工智能,并探讨了工作联盟的发展。一项针对527名说英语的用户的横断面调查显示,他们高度焦虑(69%)、抑郁(59%)、严重压力(32%)和孤独(86%)。参与者对数字心理健康解决方案持积极态度,主要动机包括避免尴尬(36%)和担心面对面咨询时的外表(35%)。期望集中在情感支持(35%)和表达情感(32%)上。3-5天内建立了强大的工作联盟(working alliance Inventory-Short Report, M = 3.76, SD = 0.72)。这些发现突出了对话式人工智能在提供可获得和无耻辱感支持方面的潜力,为精神卫生领域以人为中心的人工智能的设计提供了信息。未来的研究应探索长期的用户结果和临床大语言模型与传统心理健康服务的整合。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploring user characteristics, motives, and expectations and the therapeutic alliance in the mental health conversational AI Clare®: a baseline study.

This study examined the characteristics, motives, expectations, and attitudes of users interested in artificial intelligence (AI) self-help provided by the bot Clare®, a conversational AI for mental health support, and explored the development of a working alliance. A cross-sectional survey of 527 English-speaking self-referred users revealed high levels of anxiety (69%), depression (59%), severe stress (32%), and loneliness (86%). The participants expressed positive attitudes toward digital mental health solutions, with key motives including avoiding embarrassment (36%) and concerns about appearance in face-to-face consultations (35%). Expectations focused on emotional support (35%) and expressing feelings (32%). A strong working alliance was established within 3-5 days (Working Alliance Inventory-Short Report, M = 3.76, SD = .72). These findings highlight the potential of conversational AI in providing accessible and stigma-free support, informing the design of human-centric AI in mental health. Future research should explore long-term user outcomes and clinical large language model integration with traditional mental health services.

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来源期刊
CiteScore
4.20
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