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引用次数: 0
摘要
人工智能(AI)在全球范围内越来越多地用于提供精神卫生保健。在这种背景下,精神卫生护士的传统角色已经被临床实践中出现的人工智能驱动的尖端技术所改变和挑战。本综合综述的目的是识别和综合基于人工智能的应用与心理健康护理实践的相关性和潜力的证据。系统检索了5个电子数据库(CINAHL、PubMed、PsycINFO、Web of Science和Scopus)。78项研究被确定,严格评价和综合后,全面的综合方法。我们发现,在心理健康护理中具有潜在用途的人工智能应用范围很广,从机器学习算法到自然语言处理、数字表型、计算机视觉和用于评估、诊断和治疗心理健康挑战的对话代理。确定了五个总体主题:评估、识别、预测、优化和感知,反映了在精神卫生护理实践中嵌入人工智能驱动技术的多个层面,以及患者和工作人员如何看待在临床环境中使用人工智能。我们的结论是,人工智能驱动的技术在加强心理健康护理实践方面具有巨大的潜力。然而,以人为本的精神卫生保健方法可能会对将人工智能有效地纳入精神卫生护理提出一些挑战。精神卫生护士、服务用户和人工智能开发人员之间应该进行有意义的对话,以塑造人工智能技术的共同创造,以促进以人为本、增强权能和积极参与的方式加强护理。
The Future of Artificial Intelligence in Mental Health Nursing Practice: An Integrative Review
Artificial intelligence (AI) has been increasingly used in delivering mental healthcare worldwide. Within this context, the traditional role of mental health nurses has been changed and challenged by AI-powered cutting-edge technologies emerging in clinical practice. The aim of this integrative review is to identify and synthesise the evidence of AI-based applications with relevance for, and potential to enhance, mental health nursing practice. Five electronic databases (CINAHL, PubMed, PsycINFO, Web of Science and Scopus) were systematically searched. Seventy-eight studies were identified, critically appraised and synthesised following a comprehensive integrative approach. We found that AI applications with potential use in mental health nursing vary widely from machine learning algorithms to natural language processing, digital phenotyping, computer vision and conversational agents for assessing, diagnosing and treating mental health challenges. Five overarching themes were identified: assessment, identification, prediction, optimisation and perception reflecting the multiple levels of embedding AI-driven technologies in mental health nursing practice, and how patients and staff perceive the use of AI in clinical settings. We concluded that AI-driven technologies hold great potential for enhancing mental health nursing practice. However, humanistic approaches to mental healthcare may pose some challenges to effectively incorporating AI into mental health nursing. Meaningful conversations between mental health nurses, service users and AI developers should take place to shaping the co-creation of AI technologies to enhance care in a way that promotes person-centredness, empowerment and active participation.
期刊介绍:
The International Journal of Mental Health Nursing is the official journal of the Australian College of Mental Health Nurses Inc. It is a fully refereed journal that examines current trends and developments in mental health practice and research.
The International Journal of Mental Health Nursing provides a forum for the exchange of ideas on all issues of relevance to mental health nursing. The Journal informs you of developments in mental health nursing practice and research, directions in education and training, professional issues, management approaches, policy development, ethical questions, theoretical inquiry, and clinical issues.
The Journal publishes feature articles, review articles, clinical notes, research notes and book reviews. Contributions on any aspect of mental health nursing are welcomed.
Statements and opinions expressed in the journal reflect the views of the authors and are not necessarily endorsed by the Australian College of Mental Health Nurses Inc.