Emotional analysis of operating room nurses in acute care hospitals in Japan: insights using ChatGPT.

IF 3.1 2区 医学 Q1 NURSING BMC Nursing Pub Date : 2025-01-09 DOI:10.1186/s12912-024-02655-9
Kentaro Hara, Reika Tachibana, Ryosuke Kumashiro, Kodai Ichihara, Takahiro Uemura, Hiroshi Maeda, Michiko Yamaguchi, Takahiro Inoue
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Abstract

Aim: This study aimed to explore the emotions of operating room nurses in Japan towards perioperative nursing using generative AI and human analysis, and to identify factors contributing to burnout and turnover.

Methods: A single-center cross-sectional study was conducted from February 2023 to February 2024, involving semi-structured interviews with 10 operating room nurses from a national hospital in Japan. Interview transcripts were analyzed using generative AI (ChatGPT-4o) and human researchers for thematic, emotional, and subjectivity analysis. A comparison between AI and human analysis was performed, and data visualization techniques, including keyword co-occurrence networks and cluster analysis, were employed to identify patterns and relationships.

Results: Key themes such as patient care, surgical safety, and nursing skills were identified through thematic analysis. Emotional analysis revealed a range of tones, with AI providing an efficient overview and human researchers capturing nuanced emotional insights. High subjectivity scores indicated deeply personal reflections. Keyword co-occurrence networks and cluster analysis highlighted connections between themes and distinct emotional experiences.

Conclusions: Combining generative AI with human expertise offered nuanced insights into the emotions of operating room nurses. The findings emphasize the importance of emotional support, effective communication, and safety protocols in improving nurse well-being and job satisfaction. This hybrid approach can help address emotional challenges, reduce burnout, and enhance retention rates. Future research with larger and more diverse samples is needed to validate these findings and explore the broader applications of AI in healthcare.

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日本急症护理医院手术室护士情绪分析:使用ChatGPT的洞察。
目的:本研究旨在利用生成式人工智能和人工分析技术,探讨日本手术室护士对围手术期护理的情绪,并找出导致护士倦怠和离职的因素。方法:采用单中心横断面研究,于2023年2月至2024年2月对日本某国立医院10名手术室护士进行半结构化访谈。访谈记录使用生成式人工智能(chatgpt - 40)和人类研究人员进行主题、情感和主观性分析。将人工智能分析与人类分析进行比较,并使用数据可视化技术,包括关键词共现网络和聚类分析来识别模式和关系。结果:通过主题分析,确定了患者护理、手术安全和护理技能等关键主题。情绪分析揭示了一系列的音调,人工智能提供了一个有效的概述,人类研究人员捕捉到细微的情绪洞察力。主观性得分高表明了深刻的个人反思。关键词共现网络和聚类分析强调了主题和不同情感体验之间的联系。结论:将生成式人工智能与人类专业知识相结合,可以细致入微地了解手术室护士的情绪。研究结果强调了情感支持、有效沟通和安全协议在提高护士幸福感和工作满意度方面的重要性。这种混合方法可以帮助解决情绪挑战,减少倦怠,提高保留率。未来的研究需要更大、更多样化的样本来验证这些发现,并探索人工智能在医疗保健领域的更广泛应用。
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来源期刊
BMC Nursing
BMC Nursing Nursing-General Nursing
CiteScore
3.90
自引率
6.20%
发文量
317
审稿时长
30 weeks
期刊介绍: BMC Nursing is an open access, peer-reviewed journal that considers articles on all aspects of nursing research, training, education and practice.
期刊最新文献
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