Nurses' Insights on the Braden Scale and Their Vision for Artificial Intelligence Innovations: A Mixed Methods Study.

IF 3.5 3区 医学 Q1 NURSING
Tuba Sengul, Holly Kirkland-Kyhn, Dilek Yilmaz Akyaz, Tugba Cevizci
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引用次数: 0

Abstract

Aims: This study aimed to explore nurses' experiences with the Braden Scale, assess their readiness for artificial intelligence (AI) technologies, and understand the innovations they envision for clinical practice.

Design: Explanatory sequential mixed design.

Methods: The study included 118 nurses in the quantitative data and 42 in focus groups. Quantitative data were collected using the MAIRS-MS. Qualitative data were analysed using phenomenological approaches and MAXQDA.

Results: The average age was 33.38 ± 7.42 years and 88.1% were women. The average length of professional experience is 11.66 ± 8.22 years. The average time to administer the Braden Scale was 5.02 ± 4.36 min. While 55.1% of the participants found the Braden Scale inadequate, 55.9% stated that a more comprehensive risk assessment scale was needed and the MAIRS-MS score was 78.48 ± 16.66. The sub-themes were identified: Simple and quick applicability, early risk identification, validity and reliability issues, neglecting other risk factors, making it more comprehensive and specific, developing of a new risk assessment scale, technological improvements, patient data treasure chest, creating avatars and converting speech-to-text.

Conclusions: This study highlights critical gaps in the Braden Scale's effectiveness. Nurses identified significant shortcomings, including non-specificity and the neglect of key risk factors, which undermine its utility in clinical settings. They emphasised that stronger risk predictions and personalised care plans can be achieved by AI technology.

Implications for professional care: This study emphasises the need to revise the Braden Scale or develop a new one due to its limitations in risk assessment, providing crucial information to improve patient care and offering new perspectives on AI integration in PI risk assessment for nursing practice.

Impact: This study highlights nurses' experiences and suggestions for improving the Braden Scale in clinical practice, emphasising their expectations for AI technology and its potential to revolutionise patient care.

Reporting method: The study report was prepared following the Good Reporting of A Mixed Methods Study (GRAMMS) checklist.

Patient or public contribution: No patient or public contribution.

护士对布雷登量表的见解及其对人工智能创新的看法:一项混合方法研究。
目的:本研究旨在探讨护士使用布雷登量表的经验,评估他们对人工智能(AI)技术的准备情况,并了解他们对临床实践的创新设想。设计:解释性顺序混合设计。方法:以118名护士为定量资料,以42名护士为焦点小组。采用MAIRS-MS采集定量数据。定性数据采用现象学方法和MAXQDA进行分析。结果:平均年龄33.38±7.42岁,女性占88.1%。平均从业年限为11.66±8.22年。布拉登量表的平均使用时间为5.02±4.36 min。55.1%的参与者认为Braden量表存在不足,55.9%的参与者认为需要更全面的风险评估量表,mars - ms评分为78.48±16.66。确定了分主题:简单快速适用性,早期风险识别,有效性和可靠性问题,忽略其他风险因素,使其更加全面和具体,制定新的风险评估量表,技术改进,患者数据宝库,创建化身和语音转换为文本。结论:本研究突出了布雷登量表有效性的关键差距。护士们发现了显著的缺陷,包括非特异性和忽视关键的风险因素,这破坏了它在临床环境中的效用。他们强调,人工智能技术可以实现更强的风险预测和个性化护理计划。对专业护理的启示:由于布雷登量表在风险评估方面的局限性,本研究强调有必要修订或开发新的布雷登量表,为改善患者护理提供重要信息,并为护理实践中人工智能与PI风险评估的整合提供新的视角。影响:本研究强调了护士在临床实践中改进布雷登量表的经验和建议,强调了他们对人工智能技术及其革命性患者护理潜力的期望。报告方法:研究报告是按照混合方法研究的良好报告(GRAMMS)清单编写的。患者或公众捐款:没有患者或公众捐款。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
6.40
自引率
2.40%
发文量
0
审稿时长
2 months
期刊介绍: The Journal of Clinical Nursing (JCN) is an international, peer reviewed, scientific journal that seeks to promote the development and exchange of knowledge that is directly relevant to all spheres of nursing practice. The primary aim is to promote a high standard of clinically related scholarship which advances and supports the practice and discipline of nursing. The Journal also aims to promote the international exchange of ideas and experience that draws from the different cultures in which practice takes place. Further, JCN seeks to enrich insight into clinical need and the implications for nursing intervention and models of service delivery. Emphasis is placed on promoting critical debate on the art and science of nursing practice. JCN is essential reading for anyone involved in nursing practice, whether clinicians, researchers, educators, managers, policy makers, or students. The development of clinical practice and the changing patterns of inter-professional working are also central to JCN''s scope of interest. Contributions are welcomed from other health professionals on issues that have a direct impact on nursing practice. We publish high quality papers from across the methodological spectrum that make an important and novel contribution to the field of clinical nursing (regardless of where care is provided), and which demonstrate clinical application and international relevance.
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