Hashim Kareemi, Krishan Yadav, Courtney Price, Niklas Bobrovitz, Andrew Meehan, Henry Li, Gautam Goel, Sameer Masood, Lars Grant, Maxim Ben-Yakov, Wojtek Michalowski, Christian Vaillancourt
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引用次数: 0
Abstract
Objective: Artificial intelligence (AI)-based clinical decision support (CDS) has the potential to augment high-stakes clinical decisions in the emergency department (ED). However, its current usage and translation to implementation remains poorly understood. We asked: (1) What is the current landscape of AI-CDS for individual patient care in the ED? and (2) What phases of development have AI-CDS tools achieved?
Methods: We performed a scoping review of AI for prognostic, diagnostic, and treatment decisions regarding individual ED patient care. We searched five databases (MEDLINE, EMBASE, Cochrane Central, Scopus, Web of Science) and gray literature sources from January 1, 2010, to December 11, 2023. We adhered to guidelines from the Joanna Briggs Institute and PRISMA Extension for Scoping Reviews. We published our protocol on Open Science Framework (DOI 10.17605/OSF.IO/FDZ3Y).
Results: Of 5168 unique records identified, we selected 605 studies for inclusion. The majority (369, 61%) were published in 2021-2023. The studies ranged over a variety of clinical applications, patient populations, and AI model types. Prognostic outcomes were most commonly assessed (270, 44.6%), followed by diagnostic (193, 31.9%) and disposition (115, 19%). Most studies remained in the earliest phase of preclinical development (572, 94.5%) with few advancing to later phases (33, 5.5%).
Conclusions: By thoroughly mapping the landscape of AI-CDS in the ED, we demonstrate a rapidly increasing volume of studies covering a breadth of clinical applications, yet few have achieved advanced phases of testing or implementation. A more granular understanding of the barriers and facilitators to implementing AI-CDS in the ED is needed.
目的:基于人工智能(AI)的临床决策支持(CDS)有可能增加急诊科(ED)的高风险临床决策。然而,它目前的用法和转化为实现仍然知之甚少。我们的问题是:(1)目前在急诊科进行个体病人护理的AI-CDS的情况如何?(2) AI-CDS工具达到了哪些发展阶段?方法:我们对人工智能在个体ED患者护理方面的预后、诊断和治疗决策进行了范围审查。我们检索了5个数据库(MEDLINE, EMBASE, Cochrane Central, Scopus, Web of Science)和灰色文献来源,检索时间为2010年1月1日至2023年12月11日。我们遵循乔安娜布里格斯研究所和PRISMA扩展范围审查的指导方针。我们在开放科学框架(DOI 10.17605/OSF.IO/FDZ3Y)上发布了我们的协议。结果:在确定的5168条独特记录中,我们选择了605项研究纳入。大多数(369,61%)发表于2021-2023年。这些研究涵盖了各种临床应用、患者群体和人工智能模型类型。最常评估的是预后(270例,44.6%),其次是诊断(193例,31.9%)和处置(115例,19%)。大多数研究仍处于临床前开发的早期阶段(572,94.5%),很少有研究进入后期(33,5.5%)。结论:通过全面绘制ED中AI-CDS的景观,我们证明了覆盖广泛临床应用的研究数量迅速增加,但很少有研究达到了测试或实施的高级阶段。需要更详细地了解在教育部门实施AI-CDS的障碍和促进因素。
期刊介绍:
Academic Emergency Medicine (AEM) is the official monthly publication of the Society for Academic Emergency Medicine (SAEM) and publishes information relevant to the practice, educational advancements, and investigation of emergency medicine. It is the second-largest peer-reviewed scientific journal in the specialty of emergency medicine.
The goal of AEM is to advance the science, education, and clinical practice of emergency medicine, to serve as a voice for the academic emergency medicine community, and to promote SAEM''s goals and objectives. Members and non-members worldwide depend on this journal for translational medicine relevant to emergency medicine, as well as for clinical news, case studies and more.
Each issue contains information relevant to the research, educational advancements, and practice in emergency medicine. Subject matter is diverse, including preclinical studies, clinical topics, health policy, and educational methods. The research of SAEM members contributes significantly to the scientific content and development of the journal.