Clinician Perspectives on Decision Support and AI-based Decision Support in a Pediatric ED.

Q1 Nursing
Sriram Ramgopal, Michelle L Macy, Ashley Hayes, Todd A Florin, Michael S Carroll, Anisha Kshetrapal
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引用次数: 0

Abstract

Background: Clinical decision support (CDS) systems offer the potential to improve pediatric care through enhanced test ordering, prescribing, and standardization of care. Its augmentation with artificial intelligence (AI-CDS) may help address current limitations with CDS implementation regarding alarm fatigue and accuracy of recommendations. We sought to evaluate strengths and perceptions of CDS, with a focus on AI-CDS, through semistructured interviews of clinician partners.

Methods: We conducted a qualitative study using semistructured interviews of physicians, nurse practitioners, and nurses at a single quaternary-care pediatric emergency department to evaluate clinician perceptions of CDS and AI-CDS. We used reflexive thematic analysis to identify themes and purposive sampling to complete recruitment with the goal of reaching theoretical sufficiency.

Results: We interviewed 20 clinicians. Participants demonstrated a variable understanding of CDS and AI, with some lacking a clear definition. Most recognized the potential benefits of AI-CDS in clinical contexts, such as data summarization and interpretation. Identified themes included the potential of AI-CDS to improve diagnostic accuracy, standardize care, and improve efficiency, while also providing educational benefits to clinicians. Participants raised concerns about the ability of AI-based tools to appreciate nuanced pediatric care, accurately interpret data, and about tensions between AI recommendations and clinician autonomy.

Conclusions: AI-CDS tools have a promising role in pediatric emergency medicine but require careful integration to address clinicians' concerns about autonomy, nuance recognition, and interpretability. A collaborative approach to development and implementation, informed by clinicians' insights and perspectives, will be pivotal for their successful adoption and efficacy in improving patient care.

儿科急诊室临床医生对决策支持和基于人工智能的决策支持的看法。
背景:临床决策支持(CDS)系统可通过加强检验订单、处方和护理标准化来改善儿科护理。通过人工智能(AI-CDS)对其进行增强,可能有助于解决目前在实施 CDS 系统过程中存在的警报疲劳和建议准确性方面的局限性。我们试图通过对临床医生合作伙伴进行半结构式访谈,评估 CDS 的优势和看法,重点是 AI-CDS:我们对一家四级护理儿科急诊科的医生、执业护士和护士进行了半结构式访谈,以评估临床医生对 CDS 和 AI-CDS 的看法。我们采用反思性主题分析来确定主题,并采用目的性抽样来完成招募,目的是达到理论上的充分性:我们采访了 20 名临床医生。结果:我们对 20 名临床医生进行了访谈。参与者对 CDS 和人工智能的理解不尽相同,有些人缺乏明确的定义。大多数人认识到了人工智能-CDS 在临床环境中的潜在优势,如数据总结和解释。已确定的主题包括:AI-CDS 有可能提高诊断准确性、规范护理和提高效率,同时还能为临床医生提供教育益处。与会者对基于人工智能的工具能否理解儿科护理的细微差别、准确解释数据以及人工智能建议与临床医生自主权之间的紧张关系表示担忧:结论:人工智能-CDS 工具在儿科急诊医学中大有可为,但需要仔细整合,以解决临床医生对自主性、细微差别识别和可解释性的担忧。以临床医生的洞察力和视角为基础的合作开发和实施方法将是其成功应用和有效改善患者护理的关键。
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
Hospital pediatrics
Hospital pediatrics Nursing-Pediatrics
CiteScore
3.70
自引率
0.00%
发文量
204
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