医疗保健领域采用人工智能的障碍和促进因素:范围审查。

IF 2.6 Q2 HEALTH CARE SCIENCES & SERVICES JMIR Human Factors Pub Date : 2024-08-29 DOI:10.2196/48633
Masooma Hassan, Andre Kushniruk, Elizabeth Borycki
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引用次数: 0

摘要

背景:人工智能(AI)在医疗保健领域的应用案例不断增加,有望提高运营效率和护理效果。然而,人工智能在日常实际应用中的转化却很有限,因为其有效性有赖于临床医生、患者和其他医疗保健利益相关者的成功实施和采用:由于采用是创新成功推广的关键因素,本范围综述旨在概述医疗保健领域采用人工智能的障碍和促进因素:采用乔安娜-布里格斯研究所(Joanna Briggs Institute)提供的指南以及 Arksey 和 O'Malley 提出的框架进行了范围界定综述。我们检索了 MEDLINE、IEEE Xplore 和 ScienceDirect 数据库,以确定报道医疗保健领域采用人工智能的障碍或促进因素的英文出版物。本综述侧重于 2011 年 1 月至 2023 年 12 月间发表的文章。综述在医疗环境(医院或社区)或人群(患者、临床医生、医生或医疗管理人员)方面没有任何限制。我们对所选文章进行了主题分析,以找出医疗保健领域采用人工智能的障碍和促进因素:初步搜索共发现 2514 篇文章。在对文章标题和摘要进行审查后,50 篇文章(1.99%)被纳入最终分析。我们对这些文章进行了审查,以了解医疗保健领域采用人工智能的障碍和促进因素。大多数文章都是实证研究、文献综述、报告和思想文章。确定了大约 18 类障碍和促进因素。这些类别按顺序排列,为人工智能的开发、实施以及促进采用所需的整体结构提供了考虑因素:文献综述显示,信任是采用人工智能的一个重要催化剂,而且它还受到本综述中发现的若干障碍的影响。除其他因素外,治理结构也是一个关键的促进因素,可确保所有被确定为障碍的因素都得到妥善解决。研究结果表明,在医疗保健领域实施人工智能在很多方面仍取决于监管和法律框架的建立。需要进一步研究管理与实施框架、模型或理论的结合,以增强信任,从而特别促进采用,为将人工智能研究转化为实践的人员提供必要的指导。随着越来越多的算法在实际临床环境中实施,未来的研究还可以扩展到尝试了解患者对复杂、高风险人工智能用例的看法,以及人工智能应用的使用如何影响临床实践和患者护理,包括社会技术方面的考虑。
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Barriers to and Facilitators of Artificial Intelligence Adoption in Health Care: Scoping Review.

Background: Artificial intelligence (AI) use cases in health care are on the rise, with the potential to improve operational efficiency and care outcomes. However, the translation of AI into practical, everyday use has been limited, as its effectiveness relies on successful implementation and adoption by clinicians, patients, and other health care stakeholders.

Objective: As adoption is a key factor in the successful proliferation of an innovation, this scoping review aimed at presenting an overview of the barriers to and facilitators of AI adoption in health care.

Methods: A scoping review was conducted using the guidance provided by the Joanna Briggs Institute and the framework proposed by Arksey and O'Malley. MEDLINE, IEEE Xplore, and ScienceDirect databases were searched to identify publications in English that reported on the barriers to or facilitators of AI adoption in health care. This review focused on articles published between January 2011 and December 2023. The review did not have any limitations regarding the health care setting (hospital or community) or the population (patients, clinicians, physicians, or health care administrators). A thematic analysis was conducted on the selected articles to map factors associated with the barriers to and facilitators of AI adoption in health care.

Results: A total of 2514 articles were identified in the initial search. After title and abstract reviews, 50 (1.99%) articles were included in the final analysis. These articles were reviewed for the barriers to and facilitators of AI adoption in health care. Most articles were empirical studies, literature reviews, reports, and thought articles. Approximately 18 categories of barriers and facilitators were identified. These were organized sequentially to provide considerations for AI development, implementation, and the overall structure needed to facilitate adoption.

Conclusions: The literature review revealed that trust is a significant catalyst of adoption, and it was found to be impacted by several barriers identified in this review. A governance structure can be a key facilitator, among others, in ensuring all the elements identified as barriers are addressed appropriately. The findings demonstrate that the implementation of AI in health care is still, in many ways, dependent on the establishment of regulatory and legal frameworks. Further research into a combination of governance and implementation frameworks, models, or theories to enhance trust that would specifically enable adoption is needed to provide the necessary guidance to those translating AI research into practice. Future research could also be expanded to include attempts at understanding patients' perspectives on complex, high-risk AI use cases and how the use of AI applications affects clinical practice and patient care, including sociotechnical considerations, as more algorithms are implemented in actual clinical environments.

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来源期刊
JMIR Human Factors
JMIR Human Factors Medicine-Health Informatics
CiteScore
3.40
自引率
3.70%
发文量
123
审稿时长
12 weeks
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