使用人工智能预测重症监护病房的压力损伤:范围综述。

IF 2.4 Q1 NURSING
José Alves, Rita Azevedo, Ana Marques, Rúben Encarnação, Paulo Alves
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引用次数: 0

摘要

背景/目的:压力性损伤是医疗保健中的一个重大挑战,对个人的生活质量和医疗保健系统产生不利影响,特别是在重症监护病房。有效识别有风险的个体是至关重要的,但传统的量表有局限性,这促使了新工具的发展。人工智能为在重症监护环境中识别和预防压力性损伤提供了一种很有前途的方法。本综述旨在评估有关使用人工智能技术预测重症监护病房重症患者压力损伤的文献的程度,以确定当前知识的差距并指导未来的研究。方法:该综述遵循Joanna Briggs研究所的范围审查方法,研究方案在开放科学框架平台上前瞻性注册。结果:本综述包括14项研究,主要强调使用电子健康记录数据训练的机器学习模型来预测压力伤害。我们使用了6到86个变量来训练这些模型。只有两项研究报告了这些模型的临床应用,报告了诸如减少护理工作量、降低医院获得性压力伤害发生率和减少重症监护病房住院时间等结果。结论:人工智能技术是一种动态的、创新的方法,具有识别风险因素和有效、及时预测压力损伤的能力。本综述综合了有关这些技术使用的信息,并指导了未来的方向和动机。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Pressure Injury Prediction in Intensive Care Units Using Artificial Intelligence: A Scoping Review.

Background/Objetives: Pressure injuries pose a significant challenge in healthcare, adversely impacting individuals' quality of life and healthcare systems, particularly in intensive care units. The effective identification of at-risk individuals is crucial, but traditional scales have limitations, prompting the development of new tools. Artificial intelligence offers a promising approach to identifying and preventing pressure injuries in critical care settings. This review aimed to assess the extent of the literature regarding the use of artificial intelligence technologies in the prediction of pressure injuries in critically ill patients in intensive care units to identify gaps in current knowledge and direct future research. Methods: The review followed the Joanna Briggs Institute's methodology for scoping reviews, and the study protocol was prospectively registered on the Open Science Framework platform. Results: This review included 14 studies, primarily highlighting the use of machine learning models trained on electronic health records data for predicting pressure injuries. Between 6 and 86 variables were used to train these models. Only two studies reported the clinical deployment of these models, reporting results such as reduced nursing workload, decreased prevalence of hospital-acquired pressure injuries, and decreased intensive care unit length of stay. Conclusions: Artificial intelligence technologies present themselves as a dynamic and innovative approach, with the ability to identify risk factors and predict pressure injuries effectively and promptly. This review synthesizes information about the use of these technologies and guides future directions and motivations.

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来源期刊
Nursing Reports
Nursing Reports NURSING-
CiteScore
2.50
自引率
4.20%
发文量
78
期刊介绍: Nursing Reports is an open access, peer-reviewed, online-only journal that aims to influence the art and science of nursing by making rigorously conducted research accessible and understood to the full spectrum of practicing nurses, academics, educators and interested members of the public. The journal represents an exhilarating opportunity to make a unique and significant contribution to nursing and the wider community by addressing topics, theories and issues that concern the whole field of Nursing Science, including research, practice, policy and education. The primary intent of the journal is to present scientifically sound and influential empirical and theoretical studies, critical reviews and open debates to the global community of nurses. Short reports, opinions and insight into the plight of nurses the world-over will provide a voice for those of all cultures, governments and perspectives. The emphasis of Nursing Reports will be on ensuring that the highest quality of evidence and contribution is made available to the greatest number of nurses. Nursing Reports aims to make original, evidence-based, peer-reviewed research available to the global community of nurses and to interested members of the public. In addition, reviews of the literature, open debates on professional issues and short reports from around the world are invited to contribute to our vibrant and dynamic journal. All published work will adhere to the most stringent ethical standards and journalistic principles of fairness, worth and credibility. Our journal publishes Editorials, Original Articles, Review articles, Critical Debates, Short Reports from Around the Globe and Letters to the Editor.
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