实施基于机器学习的外周动脉疾病筛查工具的医师和患者引发的障碍和促进因素:定性研究(预印)

Q2 Medicine JMIR Cardio Pub Date : 2023-11-06 DOI:10.2196/44732
Vy Ho, Cati Brown Johnson, Ilies Ghanzouri, Saeed Amal, Steven Asch, Elsie Ross
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引用次数: 0

摘要

背景:外周动脉疾病(PAD)未被充分诊断,部分原因是非典型症状的高发以及医生和患者缺乏认识。实施由机器学习算法驱动的临床决策支持工具可以帮助医生识别高风险患者进行诊断检查。目的:本研究旨在利用实施研究统一框架(CFIR)评估在医生和患者利益相关者中实施一种新的基于机器学习的PAD筛查工具的障碍和促进因素。方法:我们对来自斯坦福大学初级保健和人口健康系、心脏病科和血管医学系的医生和患者进行了半结构化访谈。参与者回答了有关他们对机器学习和PAD检测临床决策支持的看法的问题。使用包含来自CFIR结构的代码的模板进行快速主题分析。结果:共采访了12名医师(6名初级保健医师和6名心血管专科医师)和14名患者。实施的障碍来自6个cir结构:复杂性、证据强度和质量、相对优先级、外部政策和激励、关于干预的知识和信念,以及个人对组织的认同。促进因素来自干预来源、相对优势、学习氛围、患者需求和资源、干预知识和信念5个CFIR构念。医生认为,机器学习驱动的PAD诊断工具将改善患者护理,但要求患者接受额外筛查程序的时间和权限有限。患者对他们的医生使用这种工具很感兴趣,但也提出了对这种技术取代人类决策的担忧。结论:患者和医生报告的实施机器学习驱动的PAD诊断工具的障碍包括四个相互依存的主题:(1)对PAD检测的熟悉度或紧迫性较低;(2)对机器学习可靠性的担忧;(3)基层医师与专科医师对PAD护理责任认知的差异;(4)患者倾向于医生作为医疗保健数据的主要解释者。主持人遵循两个相互依存的主题:(1)对临床使用预测模型的热情;(2)将机器学习纳入临床护理的意愿。机器学习驱动的PAD诊断工具的实施应该利用提供者的支持,同时教育利益相关者早期PAD诊断的重要性。高预测效度是机器学习模型的必要条件,但不足以实现。
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Physician- and Patient-Elicited Barriers and Facilitators to Implementation of a Machine Learning-Based Screening Tool for Peripheral Arterial Disease: Preimplementation Study With Physician and Patient Stakeholders.

Background: Peripheral arterial disease (PAD) is underdiagnosed, partially due to a high prevalence of atypical symptoms and a lack of physician and patient awareness. Implementing clinical decision support tools powered by machine learning algorithms may help physicians identify high-risk patients for diagnostic workup.

Objective: This study aims to evaluate barriers and facilitators to the implementation of a novel machine learning-based screening tool for PAD among physician and patient stakeholders using the Consolidated Framework for Implementation Research (CFIR).

Methods: We performed semistructured interviews with physicians and patients from the Stanford University Department of Primary Care and Population Health, Division of Cardiology, and Division of Vascular Medicine. Participants answered questions regarding their perceptions toward machine learning and clinical decision support for PAD detection. Rapid thematic analysis was performed using templates incorporating codes from CFIR constructs.

Results: A total of 12 physicians (6 primary care physicians and 6 cardiovascular specialists) and 14 patients were interviewed. Barriers to implementation arose from 6 CFIR constructs: complexity, evidence strength and quality, relative priority, external policies and incentives, knowledge and beliefs about intervention, and individual identification with the organization. Facilitators arose from 5 CFIR constructs: intervention source, relative advantage, learning climate, patient needs and resources, and knowledge and beliefs about intervention. Physicians felt that a machine learning-powered diagnostic tool for PAD would improve patient care but cited limited time and authority in asking patients to undergo additional screening procedures. Patients were interested in having their physicians use this tool but raised concerns about such technologies replacing human decision-making.

Conclusions: Patient- and physician-reported barriers toward the implementation of a machine learning-powered PAD diagnostic tool followed four interdependent themes: (1) low familiarity or urgency in detecting PAD; (2) concerns regarding the reliability of machine learning; (3) differential perceptions of responsibility for PAD care among primary care versus specialty physicians; and (4) patient preference for physicians to remain primary interpreters of health care data. Facilitators followed two interdependent themes: (1) enthusiasm for clinical use of the predictive model and (2) willingness to incorporate machine learning into clinical care. Implementation of machine learning-powered diagnostic tools for PAD should leverage provider support while simultaneously educating stakeholders on the importance of early PAD diagnosis. High predictive validity is necessary for machine learning models but not sufficient for implementation.

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来源期刊
JMIR Cardio
JMIR Cardio Computer Science-Computer Science Applications
CiteScore
3.50
自引率
0.00%
发文量
25
审稿时长
12 weeks
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