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新生儿护士在临床决策中使用生成式人工智能的体验:对高危新生儿重症监护病房的定性探索

Neonatal nurses' experiences with generative AI in clinical decision-making: a qualitative exploration in high-risk nicus.

作者信息

Alruwaili Abeer Nuwayfi, Alshammari Afrah Madyan, Alhaiti Ali, Elsharkawy Nadia Bassuoni, Ali Sayed Ibrahim, Elsayed Ramadan Osama Mohamed

机构信息

College of Nursing, Nursing Administration and Education Department, Jouf University, Sakaka, 72388, Saudi Arabia.

College of Nursing, Department of Maternity and Pediatric Health Nursing, Jouf University, Sakaka, 72388, Saudi Arabia.

出版信息

BMC Nurs. 2025 Apr 7;24(1):386. doi: 10.1186/s12912-025-03044-6.

Abstract

BACKGROUND

Neonatal nurses in high-risk Neonatal Intensive Care Units (NICUs) navigate complex, time-sensitive clinical decisions where accuracy and judgment are critical. Generative artificial intelligence (AI) has emerged as a supportive tool, yet its integration raises concerns about its impact on nurses' decision-making, professional autonomy, and organizational workflows.

AIM

This study explored how neonatal nurses experience and integrate generative AI in clinical decision-making, examining its influence on nursing practice, organizational dynamics, and cultural adaptation in Saudi Arabian NICUs.

METHODS

An interpretive phenomenological approach, guided by Complexity Science, Normalization Process Theory, and Tanner's Clinical Judgment Model, was employed. A purposive sample of 33 neonatal nurses participated in semi-structured interviews and focus groups. Thematic analysis was used to code and interpret data, supported by an inter-rater reliability of 0.88. Simple frequency counts were included to illustrate the prevalence of themes but were not used as quantitative measures. Trustworthiness was ensured through reflexive journaling, peer debriefing, and member checking.

RESULTS

Five themes emerged: (1) Clinical Decision-Making, where 93.9% of nurses reported that AI-enhanced judgment but required human validation; (2) Professional Practice Transformation, with 84.8% noting evolving role boundaries and workflow changes; (3) Organizational Factors, as 97.0% emphasized the necessity of infrastructure, training, and policy integration; (4) Cultural Influences, with 87.9% highlighting AI's alignment with family-centered care; and (5) Implementation Challenges, where 90.9% identified technical barriers and adaptation strategies.

CONCLUSIONS

Generative AI can support neonatal nurses in clinical decision-making, but its effectiveness depends on structured training, reliable infrastructure, and culturally sensitive implementation. These findings provide evidence-based insights for policymakers and healthcare leaders to ensure AI integration enhances nursing expertise while maintaining safe, patient-centered care.

摘要

背景

高危新生儿重症监护病房(NICU)的新生儿护士要应对复杂且时间紧迫的临床决策,在此过程中,准确性和判断力至关重要。生成式人工智能(AI)已成为一种辅助工具,但其整合引发了人们对其对护士决策、职业自主性和组织工作流程影响的担忧。

目的

本研究探讨了新生儿护士在临床决策中如何体验和整合生成式AI,考察其对沙特阿拉伯新生儿重症监护病房护理实践、组织动态和文化适应的影响。

方法

采用一种以复杂性科学、规范化过程理论和坦纳临床判断模型为指导的解释性现象学方法。33名新生儿护士的目的样本参与了半结构化访谈和焦点小组。采用主题分析法对数据进行编码和解释,评分者间信度为0.88。纳入简单频数计数以说明主题的普遍性,但未用作定量指标。通过反思性日志、同行汇报和成员核对确保可信度。

结果

出现了五个主题:(1)临床决策,93.9%的护士报告称AI增强了判断力,但需要人工验证;(2)专业实践转变,84.8%的护士指出角色界限不断演变和工作流程发生变化;(3)组织因素,97.0%的护士强调基础设施、培训和政策整合的必要性;(4)文化影响,87.9%的护士强调AI与以家庭为中心的护理相契合;(5)实施挑战,90.9%的护士识别出技术障碍和适应策略。

结论

生成式AI可在临床决策中支持新生儿护士,但其有效性取决于结构化培训、可靠的基础设施以及具有文化敏感性的实施。这些发现为政策制定者和医疗保健领导者提供了基于证据的见解,以确保AI整合在提高护理专业水平的同时,维持安全、以患者为中心的护理。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/dcef/11977934/4a8859411148/12912_2025_3044_Fig1_HTML.jpg

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