Sophie So Wan Yip, Sheng Ning, Niki Yan Ki Wong, Jeffrey Chan, Kei Shing Ng, Bernadette Oi Ting Kwok, Robert L Anders, Simon Ching Lam
{"title":"在护理中利用机器学习:创新、挑战和伦理见解。","authors":"Sophie So Wan Yip, Sheng Ning, Niki Yan Ki Wong, Jeffrey Chan, Kei Shing Ng, Bernadette Oi Ting Kwok, Robert L Anders, Simon Ching Lam","doi":"10.3389/fdgth.2025.1514133","DOIUrl":null,"url":null,"abstract":"<p><strong>Aim/objective: </strong>This review aims to provide a comprehensive analysis of the integration of machine learning (ML) (1) in nursing by exploring its implications on patient care, nursing practices, and healthcare delivery. It highlights current applications, challenges, ethical considerations, and the potential future developments of ML in nursing.</p><p><strong>Background: </strong>With the advent of ML in healthcare, the nursing profession stands on the cusp of a transformative era. Despite the technological advancements, discussions on the utilization of ML in nursing, which are crucial for advancing the profession, are lacking. This review seeks to fill this gap by examining the balance between technological innovation and the human-centric nature of nursing.</p><p><strong>Design: </strong>This narrative review employs a detailed search strategy across several databases, including PubMed, Embase, MEDLINE, Scopus, and Web of Science. It focuses on articles that were published from January 2019 to December 2023. Moreover, this review aims to illustrate the current use, challenges, and future potential of ML applications in nursing.</p><p><strong>Methods: </strong>Inclusion criteria targeted articles that focus on ML application in nursing, challenges, ethical considerations, and future directions. Exclusion criteria omitted opinion pieces and nonrelevant studies. Articles were categorized into themes, such as patient care, nursing education, operational efficiency, ethical considerations, and future potential, thus facilitating a structured analysis.</p><p><strong>Results: </strong>Findings demonstrate that ML has significantly enhanced patient monitoring, predictive analytics, and preventive care. For example, the COMPOSER deep learning model for early sepsis prediction was associated with a 1.9% absolute reduction (17% relative decrease) in in-hospital sepsis mortality and a 5.0% absolute increase (10% relative increase) in sepsis bundle compliance. In nursing education, ML has improved simulation-based training by facilitating adaptive learning experiences that support continual skill development. Furthermore, ML contributes to operational efficiency through automated staffing optimization and administrative task automation, thus reducing nurse workload and enhancing patient care outcomes. However, key challenges include ethical considerations, such as data privacy, algorithmic bias, and patient autonomy, which necessitate ongoing research and regulatory oversight.</p><p><strong>Conclusions: </strong>ML in nursing offers transformative potential across patient care, education, and operational efficiency, which is balanced by significant challenges and ethical considerations. Future directions include expanding clinical and community applications, integrating emerging technologies, and enhancing nursing education. Continuous research, ethical oversight, and interdisciplinary collaboration are essential for harnessing ML's full potential in nursing to ensure that its advancements improve patient outcomes and support nursing professionals without compromising core nursing values.</p>","PeriodicalId":73078,"journal":{"name":"Frontiers in digital health","volume":"7 ","pages":"1514133"},"PeriodicalIF":3.2000,"publicationDate":"2025-05-23","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.ncbi.nlm.nih.gov/pmc/articles/PMC12141303/pdf/","citationCount":"0","resultStr":"{\"title\":\"Leveraging machine learning in nursing: innovations, challenges, and ethical insights.\",\"authors\":\"Sophie So Wan Yip, Sheng Ning, Niki Yan Ki Wong, Jeffrey Chan, Kei Shing Ng, Bernadette Oi Ting Kwok, Robert L Anders, Simon Ching Lam\",\"doi\":\"10.3389/fdgth.2025.1514133\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p><strong>Aim/objective: </strong>This review aims to provide a comprehensive analysis of the integration of machine learning (ML) (1) in nursing by exploring its implications on patient care, nursing practices, and healthcare delivery. It highlights current applications, challenges, ethical considerations, and the potential future developments of ML in nursing.</p><p><strong>Background: </strong>With the advent of ML in healthcare, the nursing profession stands on the cusp of a transformative era. Despite the technological advancements, discussions on the utilization of ML in nursing, which are crucial for advancing the profession, are lacking. This review seeks to fill this gap by examining the balance between technological innovation and the human-centric nature of nursing.</p><p><strong>Design: </strong>This narrative review employs a detailed search strategy across several databases, including PubMed, Embase, MEDLINE, Scopus, and Web of Science. It focuses on articles that were published from January 2019 to December 2023. 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引用次数: 0
摘要
目的/目的:本综述旨在通过探索机器学习(ML)在患者护理、护理实践和医疗保健服务方面的影响,对机器学习(ML)(1)在护理中的整合进行全面分析。它强调了ML在护理中的当前应用、挑战、伦理考虑和潜在的未来发展。背景:随着ML在医疗保健领域的出现,护理行业正处于变革时代的风口浪尖。尽管技术进步,关于ML在护理中的应用的讨论,这对推进专业至关重要,缺乏。这篇综述试图通过检查技术创新和以人为中心的护理性质之间的平衡来填补这一空白。设计:这篇叙述性综述采用了跨多个数据库的详细搜索策略,包括PubMed、Embase、MEDLINE、Scopus和Web of Science。它关注的是2019年1月至2023年12月期间发表的文章。此外,本文旨在阐述机器学习在护理中的应用现状、挑战和未来潜力。方法:针对ML在护理中的应用、挑战、伦理考虑和未来方向的文章纳入标准。排除标准省略了评论文章和不相关的研究。文章按主题分类,如病人护理、护理教育、操作效率、伦理考虑和未来潜力,从而促进结构化分析。结果:研究结果表明,机器学习显著增强了患者监测、预测分析和预防护理。例如,用于早期脓毒症预测的COMPOSER深度学习模型与院内脓毒症死亡率绝对降低1.9%(相对降低17%)和脓毒症捆绑治疗依从性绝对增加5.0%(相对增加10%)相关。在护理教育中,ML通过促进支持持续技能发展的适应性学习经验,改进了基于模拟的培训。此外,机器学习通过自动化人员配置优化和管理任务自动化来提高操作效率,从而减少护士工作量并提高患者护理效果。然而,关键的挑战包括伦理方面的考虑,如数据隐私、算法偏见和患者自主权,这些都需要持续的研究和监管监督。结论:护理中的ML在患者护理、教育和操作效率方面具有变革潜力,这是由重大挑战和伦理考虑平衡的。未来的发展方向包括扩大临床和社区应用,整合新兴技术,加强护理教育。持续的研究、道德监督和跨学科合作对于充分利用机器学习在护理中的潜力至关重要,以确保其进步改善患者的治疗效果,并在不损害核心护理价值的情况下支持护理专业人员。
Leveraging machine learning in nursing: innovations, challenges, and ethical insights.
Aim/objective: This review aims to provide a comprehensive analysis of the integration of machine learning (ML) (1) in nursing by exploring its implications on patient care, nursing practices, and healthcare delivery. It highlights current applications, challenges, ethical considerations, and the potential future developments of ML in nursing.
Background: With the advent of ML in healthcare, the nursing profession stands on the cusp of a transformative era. Despite the technological advancements, discussions on the utilization of ML in nursing, which are crucial for advancing the profession, are lacking. This review seeks to fill this gap by examining the balance between technological innovation and the human-centric nature of nursing.
Design: This narrative review employs a detailed search strategy across several databases, including PubMed, Embase, MEDLINE, Scopus, and Web of Science. It focuses on articles that were published from January 2019 to December 2023. Moreover, this review aims to illustrate the current use, challenges, and future potential of ML applications in nursing.
Methods: Inclusion criteria targeted articles that focus on ML application in nursing, challenges, ethical considerations, and future directions. Exclusion criteria omitted opinion pieces and nonrelevant studies. Articles were categorized into themes, such as patient care, nursing education, operational efficiency, ethical considerations, and future potential, thus facilitating a structured analysis.
Results: Findings demonstrate that ML has significantly enhanced patient monitoring, predictive analytics, and preventive care. For example, the COMPOSER deep learning model for early sepsis prediction was associated with a 1.9% absolute reduction (17% relative decrease) in in-hospital sepsis mortality and a 5.0% absolute increase (10% relative increase) in sepsis bundle compliance. In nursing education, ML has improved simulation-based training by facilitating adaptive learning experiences that support continual skill development. Furthermore, ML contributes to operational efficiency through automated staffing optimization and administrative task automation, thus reducing nurse workload and enhancing patient care outcomes. However, key challenges include ethical considerations, such as data privacy, algorithmic bias, and patient autonomy, which necessitate ongoing research and regulatory oversight.
Conclusions: ML in nursing offers transformative potential across patient care, education, and operational efficiency, which is balanced by significant challenges and ethical considerations. Future directions include expanding clinical and community applications, integrating emerging technologies, and enhancing nursing education. Continuous research, ethical oversight, and interdisciplinary collaboration are essential for harnessing ML's full potential in nursing to ensure that its advancements improve patient outcomes and support nursing professionals without compromising core nursing values.