人工智能黄斑服务实施的干预设计:一项初级定性研究。

Henry David Jeffry Hogg, Katie Brittain, James Talks, Pearse Andrew Keane, Gregory Maniatopoulos
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引用次数: 0

摘要

背景:新生血管性老年黄斑变性(nAMD)是医院门诊量最大的单一疾病之一。在寻找临床能力以满足这一需求方面所面临的挑战可能会导致提供治疗的黄斑服务出现延误,从而危及视力。临床人工智能(AI)技术为重新平衡黄斑服务的需求和能力提供了一个机会。然而,目前还缺乏证据来指导那些寻求使用人工智能来解决需求与能力失衡问题的早期应用者。本研究旨在通过探讨影响人工智能实施结果的因素和原因,为这些早期采用者提供指导,帮助他们更好地实施人工智能黄斑服务:对参与者进行了 36 次半结构式访谈。采用 "不采用、放弃、推广、普及和可持续性"(NASSS)框架对数据进行分析,以确定可能影响实施结果的因素。然后利用个人、技术和任务之间的契合度(FITT)框架对这些因素和主要数据进行二次分析,以提出可操作的干预措施。结果:nAMD 治疗应在与临床医生面对面预约时启动,临床医生建议在一年的时间内安排人工智能辅助治疗。这样做的目的是保持或提高与患者沟通的质量,同时减少就诊频率。经过适当培训的摄影师应承担额外的职责,将视网膜成像输入人工智能设备,并监督其与临床同事的沟通,而眼科医生则承担临床监督和会诊职责。能够将图像安全发送到云端供人工智能工具分析的成像设备最有利于实现互操作性,以促进这种干预。图片存档和通信软件(PACS)应能够直接输出到临床和行政人员熟悉的电子病历(EMR)中:结论:实施人工智能技术有许多有利因素,剩下的障碍很少与人工智能技术本身直接相关。建议的干预措施需要因地制宜,并进行前瞻性评估,但可以帮助早期采用者从实施人工智能黄斑服务的初期努力中获得最大的成功机会:Hogg HDJ、Brittain K、Teare D、Talks J、Balaskas K、Keane P、Maniatopoulos G.《用于新生血管性老年黄斑变性治疗决策的人工智能决策工具的安全性和有效性以及临床路径整合和实施探索:多方法验证研究协议》。BMJ Open.2023 Feb 1;13(2):e069443. https://doi.org/10.1136/bmjopen-2022-069443 .PMID: 36725098; PMCID: PMC9896175.
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Intervention design for artificial intelligence-enabled macular service implementation: a primary qualitative study.

Background: Neovascular age-related macular degeneration (nAMD) is one of the largest single-disease contributors to hospital outpatient appointments. Challenges in finding the clinical capacity to meet this demand can lead to sight-threatening delays in the macular services that provide treatment. Clinical artificial intelligence (AI) technologies pose one opportunity to rebalance demand and capacity in macular services. However, there is a lack of evidence to guide early-adopters seeking to use AI as a solution to demand-capacity imbalance. This study aims to provide guidance for these early adopters on how AI-enabled macular services may best be implemented by exploring what will influence the outcome of AI implementation and why.

Methods: Thirty-six semi-structured interviews were conducted with participants. Data were analysed with the Nonadoption, Abandonment, Scale-up, Spread and Sustainability (NASSS) framework to identify factors likely to influence implementation outcomes. These factors and the primary data then underwent a secondary analysis using the Fit between Individuals, Technology and Task (FITT) framework to propose an actionable intervention.

Results: nAMD treatment should be initiated at face-to-face appointments with clinicians who recommend year-long periods of AI-enabled scheduling of treatments. This aims to maintain or enhance the quality of patient communication, whilst reducing consultation frequency. Appropriately trained photographers should take on the additional roles of inputting retinal imaging into the AI device and overseeing its communication to clinical colleagues, while ophthalmologists assume clinical oversight and consultation roles. Interoperability to facilitate this intervention would best be served by imaging equipment that can send images to the cloud securely for analysis by AI tools. Picture Archiving and Communication Software (PACS) should have the capability to output directly into electronic medical records (EMR) familiar to clinical and administrative staff.

Conclusion: There are many enablers to implementation and few of the remaining barriers relate directly to the AI technology itself. The proposed intervention requires local tailoring and prospective evaluation but can support early adopters in optimising the chances of success from initial efforts to implement AI-enabled macular services.

Protocol registration: Hogg HDJ, Brittain K, Teare D, Talks J, Balaskas K, Keane P, Maniatopoulos G. Safety and efficacy of an artificial intelligence-enabled decision tool for treatment decisions in neovascular age-related macular degeneration and an exploration of clinical pathway integration and implementation: protocol for a multi-methods validation study. BMJ Open. 2023 Feb 1;13(2):e069443. https://doi.org/10.1136/bmjopen-2022-069443 . PMID: 36725098; PMCID: PMC9896175.

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