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医疗保健专业人员使用人工智能的体验:系统评价与叙事综合。

Health Care Professionals' Experience of Using AI: Systematic Review With Narrative Synthesis.

机构信息

Division of Health Sciences, Warwick Medical School, University of Warwick, Coventry, United Kingdom.

AI Digital Health Research and Policy Group, University Hospitals Birmingham NHS Foundation Trust, Birmingham, United Kingdom.

出版信息

J Med Internet Res. 2024 Oct 30;26:e55766. doi: 10.2196/55766.

Abstract

BACKGROUND

There has been a substantial increase in the development of artificial intelligence (AI) tools for clinical decision support. Historically, these were mostly knowledge-based systems, but recent advances include non-knowledge-based systems using some form of machine learning. The ability of health care professionals to trust technology and understand how it benefits patients or improves care delivery is known to be important for their adoption of that technology. For non-knowledge-based AI tools for clinical decision support, these issues are poorly understood.

OBJECTIVE

The aim of this study is to qualitatively synthesize evidence on the experiences of health care professionals in routinely using non-knowledge-based AI tools to support their clinical decision-making.

METHODS

In June 2023, we searched 4 electronic databases, MEDLINE, Embase, CINAHL, and Web of Science, with no language or date limit. We also contacted relevant experts and searched reference lists of the included studies. We included studies of any design that reported the experiences of health care professionals using non-knowledge-based systems for clinical decision support in their work settings. We completed double independent quality assessment for all included studies using the Mixed Methods Appraisal Tool. We used a theoretically informed thematic approach to synthesize the findings.

RESULTS

After screening 7552 titles and 182 full-text articles, we included 25 studies conducted in 9 different countries. Most of the included studies were qualitative (n=13), and the remaining were quantitative (n=9) and mixed methods (n=3). Overall, we identified 7 themes: health care professionals' understanding of AI applications, level of trust and confidence in AI tools, judging the value added by AI, data availability and limitations of AI, time and competing priorities, concern about governance, and collaboration to facilitate the implementation and use of AI. The most frequently occurring are the first 3 themes. For example, many studies reported that health care professionals were concerned about not understanding the AI outputs or the rationale behind them. There were issues with confidence in the accuracy of the AI applications and their recommendations. Some health care professionals believed that AI provided added value and improved decision-making, and some reported that it only served as a confirmation of their clinical judgment, while others did not find it useful at all.

CONCLUSIONS

Our review identified several important issues documented in various studies on health care professionals' use of AI tools in real-world health care settings. Opinions of health care professionals regarding the added value of AI tools for supporting clinical decision-making varied widely, and many professionals had concerns about their understanding of and trust in this technology. The findings of this review emphasize the need for concerted efforts to optimize the integration of AI tools in real-world health care settings.

TRIAL REGISTRATION

PROSPERO CRD42022336359; https://tinyurl.com/2yunvkmb.

摘要

背景

人工智能(AI)工具在临床决策支持方面的发展有了实质性的增长。历史上,这些工具大多是基于知识的系统,但最近的进展包括使用某种形式的机器学习的非基于知识的系统。医疗保健专业人员能够信任技术并了解其如何使患者受益或改善护理提供,这对于他们采用该技术至关重要。对于用于临床决策支持的非基于知识的 AI 工具,这些问题还没有得到很好的理解。

目的

本研究旨在定性综合关于医疗保健专业人员在常规使用非基于知识的 AI 工具支持其临床决策方面的经验的证据。

方法

在 2023 年 6 月,我们检索了 4 个电子数据库,即 MEDLINE、Embase、CINAHL 和 Web of Science,没有语言或日期限制。我们还联系了相关专家,并检索了纳入研究的参考文献列表。我们纳入了在其工作环境中报告医疗保健专业人员使用非基于知识系统进行临床决策支持经验的任何设计的研究。我们使用混合方法评估工具(Mixed Methods Appraisal Tool)对所有纳入的研究进行了双重独立的质量评估。我们使用理论上有依据的主题方法来综合研究结果。

结果

在筛选了 7552 篇标题和 182 篇全文文章后,我们纳入了 9 个不同国家进行的 25 项研究。纳入的研究大多为定性研究(n=13),其余为定量研究(n=9)和混合方法研究(n=3)。总体而言,我们确定了 7 个主题:医疗保健专业人员对 AI 应用的理解、对 AI 工具的信任和信心水平、判断 AI 增加的价值、数据可用性和 AI 的局限性、时间和竞争优先级、对治理的关注以及促进 AI 的实施和使用的协作。最常出现的是前 3 个主题。例如,许多研究报告称,医疗保健专业人员担心不理解 AI 输出或其背后的原理。对 AI 应用的准确性及其建议的信心存在问题。一些医疗保健专业人员认为 AI 提供了附加值并改善了决策制定,而一些人则报告说它只是对他们临床判断的确认,而另一些人则认为它根本没有用。

结论

我们的综述确定了在现实医疗保健环境中医疗保健专业人员使用 AI 工具的各种研究中记录的一些重要问题。医疗保健专业人员对 AI 工具支持临床决策的附加值的看法差异很大,许多专业人员对他们对这项技术的理解和信任存在担忧。本综述的结果强调需要共同努力,优化 AI 工具在现实医疗保健环境中的整合。

试验注册

PROSPERO CRD42022336359;https://tinyurl.com/2yunvkmb。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ace7/11561443/ef166149a7c4/jmir_v26i1e55766_fig1.jpg

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