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护士对人工智能驱动的监测系统在沙特阿拉伯艾哈萨提高感染预防与控制措施依从性方面的认知

Nurses' Perception of Artificial Intelligence-Driven Monitoring Systems for Enhancing Compliance With Infection Prevention and Control Measures in Al-Ahsa, Saudi Arabia.

作者信息

Jalal Sahbanathul Missiriya, Jalal Suhail Hassan, Alasmakh Kamilah Essa, Alnasser Zahraa Hussain, Alhamdan Wadiah Yousef, Alabdullatif Abeer Abbas

机构信息

Nursing Department, College of Applied Medical Sciences, King Faisal University, Hofuf, SAU.

Pharmacy Department, Jaya College of Pharmacy, The Tamil Nadu Dr. M.G.R. Medical University, Chennai, IND.

出版信息

Cureus. 2025 Apr 24;17(4):e82943. doi: 10.7759/cureus.82943. eCollection 2025 Apr.

Abstract

Background Healthcare-associated infections (HCAIs) represent a major risk to patient safety, increasing morbidity, mortality, and costs. Effective infection prevention and control (IPC) compliance is crucial, but nurse adherence remains inconsistent, necessitating innovative solutions such as artificial intelligence (AI)-driven monitoring. However, the success of such technologies heavily relies on the perceptions and acceptance of frontline healthcare workers, particularly nurses. This study aimed to determine the nurses' perception of AI-driven monitoring in improving IPC compliance in selected hospitals. Methodology A cross-sectional study was conducted among nurses working at a public hospital in Al-Ahsa, Saudi Arabia. Computer-generated numbers randomly selected 246 nurses. A structured, self-administered questionnaire was used to gather data on demographics, knowledge, perceptions, and perceived barriers to AI-driven monitoring in IPC practices. Descriptive statistics were utilized for continuous variables, while inferential statistics, such as chi-square, were used for categorical variables to analyse the results. Results  Out of 246 nurses, 183 (74.4%) had average knowledge about AI applications in IPC practices. The overall mean knowledge score regarding AI-based IPC measures was 17.00 ± 3.97 out of 20, which showed that most nurses had moderate knowledge, but some domains scored well. Regarding perception about AI-driven monitoring IPC practices, many nurses had a positive attitude. However, insufficient training, financial limitations, and limited organizational support are perceived as the most critical barriers. There was a significant association found between the level of knowledge and age, highest educational qualification, job role, and AI technology-based IPC training (p < 0.05). Nurses expressed willingness to adopt AI systems if adequate training and support were ensured. Conclusion AI-driven monitoring may enhance IPC compliance among nurses if barriers are addressed, helping to reduce HCAIs and improve patient safety. Its success depends on addressing key barriers such as training, infrastructure, and stakeholder support. These findings can guide policymakers and healthcare leaders in effectively adopting AI-based IPC solutions.

摘要

背景 医疗保健相关感染(HCAIs)对患者安全构成重大风险,会增加发病率、死亡率和成本。有效的感染预防与控制(IPC)合规至关重要,但护士的依从性仍不一致,因此需要人工智能(AI)驱动监测等创新解决方案。然而,此类技术的成功很大程度上依赖于一线医护人员,尤其是护士的认知和接受程度。本研究旨在确定护士对AI驱动监测在提高选定医院IPC合规性方面的看法。

方法 在沙特阿拉伯艾哈萨的一家公立医院工作的护士中进行了一项横断面研究。通过计算机生成的数字随机抽取了246名护士。使用一份结构化的自填式问卷收集有关人口统计学、知识、看法以及在IPC实践中对AI驱动监测的认知障碍的数据。连续变量采用描述性统计,分类变量采用卡方检验等推断性统计来分析结果。

结果 在246名护士中,183名(74.4%)对AI在IPC实践中的应用有一般了解。关于基于AI的IPC措施的总体平均知识得分在20分中为17.00±3.97,这表明大多数护士有中等知识水平,但某些领域得分较高。关于对AI驱动监测IPC实践的看法,许多护士持积极态度。然而,培训不足、资金限制和组织支持有限被视为最关键的障碍。知识水平与年龄、最高学历、工作角色以及基于AI技术的IPC培训之间存在显著关联(p<0.05)。如果能确保提供充分的培训和支持,护士表示愿意采用AI系统。

结论 如果能消除障碍,AI驱动监测可能会提高护士的IPC合规性,有助于减少HCAIs并提高患者安全。其成功取决于解决培训、基础设施和利益相关者支持等关键障碍。这些发现可为政策制定者和医疗保健领导者有效采用基于AI的IPC解决方案提供指导。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b41d/12103304/6000a3c20cce/cureus-0017-00000082943-i01.jpg

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