Applying the Non-Adoption, Abandonment, Scale-up, Spread, and Sustainability Framework Across Implementation Stages to Identify Key Strategies to Facilitate Clinical Decision Support System Integration Within a Large Metropolitan Health Service: Interview and Focus Group Study.

IF 3.1 3区 医学 Q2 MEDICAL INFORMATICS JMIR Medical Informatics Pub Date : 2024-10-17 DOI:10.2196/60402
Manasha Fernando, Bridget Abell, Steven M McPhail, Zephanie Tyack, Amina Tariq, Sundresan Naicker
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Abstract

Background: Computerized clinical decision support systems (CDSSs) enhance patient care through real-time, evidence-based guidance for health care professionals. Despite this, the effective implementation of these systems for health services presents multifaceted challenges, leading to inappropriate use and abandonment over the course of time. Using the Non-Adoption, Abandonment, Scale-Up, Spread, and Sustainability (NASSS) framework, this qualitative study examined CDSS adoption in a metropolitan health service, identifying determinants across implementation stages to optimize CDSS integration into health care practice.

Objective: This study aims to identify the theory-informed (NASSS) determinants, which included multiple CDSS interventions across a 2-year period, both at the health-service level and at the individual hospital setting, that either facilitate or hinder the application of CDSSs within a metropolitan health service. In addition, this study aimed to map these determinants onto specific stages of the implementation process, thereby developing a system-level understanding of CDSS application across implementation stages.

Methods: Participants involved in various stages of the implementation process were recruited (N=30). Participants took part in interviews and focus groups. We used a hybrid inductive-deductive qualitative content analysis and a framework mapping approach to categorize findings into barriers, enablers, or neutral determinants aligned to NASSS framework domains. These determinants were also mapped to implementation stages using the Active Implementation Framework stages approach.

Results: Participants comprised clinical adopters (14/30, 47%), organizational champions (5/30, 16%), and those with roles in organizational clinical informatics (5/30, 16%). Most determinants were mapped to the organization level, technology, and adopter subdomains. However, the study findings also demonstrated a relative lack of long-term implementation planning. Consequently, determinants were not uniformly distributed across the stages of implementation, with 61.1% (77/126) identified in the exploration stage, 30.9% (39/126) in the full implementation stage, and 4.7% (6/126) in the installation stages. Stakeholders engaged in more preimplementation and full-scale implementation activities, with fewer cycles of monitoring and iteration activities identified.

Conclusions: These findings addressed a substantial knowledge gap in the literature using systems thinking principles to identify the interdependent dynamics of CDSS implementation. A lack of sustained implementation strategies (ie, training and longer-term, adopter-level championing) weakened the sociotechnical network between developers and adopters, leading to communication barriers. More rigorous implementation planning, encompassing all 4 implementation stages, may, in a way, help in addressing the barriers identified and enhancing enablers.

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在各实施阶段应用 "不采用、放弃、扩大规模、传播和可持续性 "框架,以确定促进大都市卫生服务机构内临床决策支持系统整合的关键策略:访谈与焦点小组研究。
背景:计算机化临床决策支持系统(CDSS)通过为医护人员提供实时、循证的指导来加强对患者的护理。尽管如此,在医疗服务中有效实施这些系统仍面临着多方面的挑战,导致使用不当和随着时间的推移而被放弃。本定性研究采用 "不采用、放弃、扩大规模、传播和可持续性"(NASSS)框架,考察了一个大都市医疗服务机构采用 CDSS 的情况,确定了各实施阶段的决定因素,以优化 CDSS 与医疗实践的整合:本研究旨在确定促进或阻碍 CDSS 在大都市医疗服务机构中应用的理论依据(NASSS)决定因素,其中包括医疗服务机构和单个医院在两年时间内采取的多种 CDSS 干预措施。此外,本研究还旨在将这些决定因素映射到实施过程的具体阶段,从而从系统层面了解 CDSS 在各个实施阶段的应用情况:方法:招募了参与实施过程各个阶段的参与者(30 人)。参与者参加了访谈和焦点小组。我们采用了归纳-演绎混合定性内容分析和框架映射方法,将研究结果归类为与 NASSS 框架领域相一致的障碍、促进因素或中性决定因素。这些决定因素还使用积极实施框架阶段法映射到实施阶段:结果:参与者包括临床采用者(14/30,47%)、组织拥护者(5/30,16%)以及在组织临床信息学中发挥作用的人员(5/30,16%)。大多数决定因素被映射到组织层面、技术和采用者子域。然而,研究结果也表明,相对缺乏长期的实施规划。因此,决定因素在实施阶段的分布并不均匀,61.1%(77/126)的决定因素在探索阶段被发现,30.9%(39/126)的决定因素在全面实施阶段被发现,4.7%(6/126)的决定因素在安装阶段被发现。利益相关者参与了更多的实施前和全面实施活动,而确定的监测和迭代活动周期较少:这些研究结果弥补了文献中的重大知识空白,利用系统思维原则确定了 CDSS 实施过程中相互依存的动态关系。缺乏持续的实施策略(即培训和长期的、采用者层面的支持)削弱了开发者和采用者之间的社会技术网络,导致沟通障碍。在某种程度上,包括所有 4 个实施阶段在内的更严格的实施规划可能有助于消除已发现的障碍和增强促进因素。
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来源期刊
JMIR Medical Informatics
JMIR Medical Informatics Medicine-Health Informatics
CiteScore
7.90
自引率
3.10%
发文量
173
审稿时长
12 weeks
期刊介绍: JMIR Medical Informatics (JMI, ISSN 2291-9694) is a top-rated, tier A journal which focuses on clinical informatics, big data in health and health care, decision support for health professionals, electronic health records, ehealth infrastructures and implementation. It has a focus on applied, translational research, with a broad readership including clinicians, CIOs, engineers, industry and health informatics professionals. Published by JMIR Publications, publisher of the Journal of Medical Internet Research (JMIR), the leading eHealth/mHealth journal (Impact Factor 2016: 5.175), JMIR Med Inform has a slightly different scope (emphasizing more on applications for clinicians and health professionals rather than consumers/citizens, which is the focus of JMIR), publishes even faster, and also allows papers which are more technical or more formative than what would be published in the Journal of Medical Internet Research.
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