Artificial intelligence in nursing: an integrative review of clinical and operational impacts.

IF 3.2 Q1 HEALTH CARE SCIENCES & SERVICES Frontiers in digital health Pub Date : 2025-03-07 eCollection Date: 2025-01-01 DOI:10.3389/fdgth.2025.1552372
Salwa Hassanein, Rabie Adel El Arab, Amany Abdrbo, Mohammad S Abu-Mahfouz, Mastoura Khames Farag Gaballah, Mohamed Mahmoud Seweid, Mohammed Almari, Husam Alzghoul
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Abstract

Background: Advances in digital technologies and artificial intelligence (AI) are reshaping healthcare delivery, with AI increasingly integrated into nursing practice. These innovations promise enhanced diagnostic precision, improved operational workflows, and more personalized patient care. However, the direct impact of AI on clinical outcomes, workflow efficiency, and nursing staff well-being requires further elucidation.

Methods: This integrative review synthesized findings from 18 studies published through November 2024 across diverse healthcare settings. Using the PRISMA 2020 and SPIDER frameworks alongside rigorous quality appraisal tools (MMAT and ROBINS-I), the review examined the multifaceted effects of AI integration in nursing. Our analysis focused on three principal domains: clinical advancements and patient monitoring, operational efficiency and workload management, and ethical implications.

Results: The review demonstrates that AI integration in nursing has yielded substantial clinical and operational benefits. AI-powered monitoring systems, including wearable sensors and real-time alert platforms, have enabled nurses to detect subtle physiological changes-such as early fever onset or pain indicators-well before traditional methods, resulting in timely interventions that reduce complications, shorten hospital stays, and lower readmission rates. For example, several studies reported that early-warning algorithms facilitated faster clinical responses, thereby improving patient safety and outcomes. Operationally, AI-based automation of routine tasks (e.g., scheduling, administrative documentation, and predictive workload classification) has streamlined resource allocation. These efficiencies have led to a measurable reduction in nurse burnout and improved job satisfaction, as nurses can devote more time to direct patient care. However, despite these benefits, ethical challenges remain prominent. Key concerns include data privacy risks, algorithmic bias, and the potential erosion of clinical judgment due to overreliance on technology. These issues underscore the need for robust ethical frameworks and targeted AI literacy training within nursing curricula.

Conclusion: This review demonstrates that AI integration holds transformative potential for nursing practice by enhancing both clinical outcomes and operational efficiency. However, to realize these benefits fully, it is imperative to develop robust ethical frameworks, incorporate comprehensive AI literacy training into nursing education, and foster interdisciplinary collaboration. Future longitudinal studies across varied clinical contexts are essential to validate these findings and support the sustainable, equitable implementation of AI technologies in nursing. Policymakers and healthcare leaders must prioritize investments in AI solutions that complement the expertise of nursing professionals while addressing ethical risks.

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护理中的人工智能:临床和操作影响的综合回顾。
背景:数字技术和人工智能(AI)的进步正在重塑医疗保健服务,人工智能越来越多地融入护理实践。这些创新有望提高诊断精度、改进操作工作流程和更加个性化的患者护理。然而,人工智能对临床结果、工作流程效率和护理人员福祉的直接影响需要进一步阐明。方法:本综合综述综合了截至2024年11月在不同医疗机构发表的18项研究的结果。该综述使用PRISMA 2020和SPIDER框架以及严格的质量评估工具(MMAT和ROBINS-I),研究了人工智能在护理中的整合的多方面影响。我们的分析集中在三个主要领域:临床进步和患者监测,操作效率和工作量管理,以及伦理影响。结果:回顾表明人工智能在护理中的整合已经产生了实质性的临床和操作效益。人工智能监测系统,包括可穿戴传感器和实时警报平台,使护士能够在传统方法之前检测到细微的生理变化,如早期发烧或疼痛指标,从而及时干预,减少并发症,缩短住院时间,降低再入院率。例如,一些研究报告预警算法促进了更快的临床反应,从而提高了患者的安全性和结果。在操作上,基于人工智能的日常任务自动化(例如,调度、管理文档和预测工作负载分类)简化了资源分配。这些效率显著降低了护士的职业倦怠,提高了工作满意度,因为护士可以投入更多的时间来直接照顾病人。然而,尽管有这些好处,伦理挑战仍然突出。主要的担忧包括数据隐私风险、算法偏见以及由于过度依赖技术而对临床判断的潜在侵蚀。这些问题强调需要在护理课程中建立健全的道德框架和有针对性的人工智能素养培训。结论:本综述表明,人工智能集成通过提高临床结果和操作效率,对护理实践具有变革性潜力。然而,为了充分实现这些好处,必须建立健全的伦理框架,将全面的人工智能素养培训纳入护理教育,并促进跨学科合作。未来在不同临床背景下的纵向研究对于验证这些发现和支持人工智能技术在护理中的可持续、公平实施至关重要。政策制定者和医疗保健领导者必须优先投资人工智能解决方案,以补充护理专业人员的专业知识,同时解决道德风险。
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