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使用 GRADE 证据决策框架将基于证据的护士主导干预措施用于减少 30 天内医院再入院率进行背景化:一项德尔菲研究。

Contextualizing evidence-based nurse-led interventions for reducing 30-day hospital readmissions using GRADE evidence to decision framework: A Delphi study.

机构信息

Jockey Club School of Public Health and Primary Care, The Chinese University of Hong Kong, Shatin, Hong Kong.

School of Chinese Medicine, The Chinese University of Hong Kong, Shatin, Hong Kong.

出版信息

Worldviews Evid Based Nurs. 2023 Aug;20(4):315-329. doi: 10.1111/wvn.12650. Epub 2023 May 15.

Abstract

BACKGROUND

High 30-day readmission rates increase hospital costs and negatively impact patient outcomes in many healthcare systems, including Hong Kong. Evidence-based and local adaptable nurse-led interventions have not been established for reducing 30-day hospital readmissions among general medical patients in Hong Kong's public healthcare system.

AIMS

The aim of this study was to select and refine evidence-based nurse-led interventions for reducing 30-day hospital readmissions among general medical patients in Hong Kong's public healthcare system using the Grading of Recommendations Assessment, Development and Evaluation (GRADE) Evidence to Decision (EtD) framework.

METHODS

Eighteen local healthcare stakeholders were recruited to carry out a two-step process. In step 1, stakeholders were invited to prioritize nurse-led interventions which were supported by existing evidence and suggest important combinations of different interventions. For all interventions prioritized in step 1, step 2 involved stakeholders performing a two-round Delphi questionnaire aiming to generate consensus-based interventions appropriate to the local context. GRADE EtD framework was applied to guide the decision-making process, taking into account certainty of evidence, benefits and harms, resource use, equity, acceptability, and feasibility.

RESULTS

Four out of eight nurse-led interventions reached a positive consensus with percentage agreement ranging from 70.6% to 82.4%. GRADE EtD criteria ratings showed that over 70% of stakeholders agreed these four interventions were probably acceptable and feasible, though the certainty of evidence was low or moderate. Half of stakeholders believed their desirable effects compared to undesirable effects were large. However, the resources required and how these nurse-led interventions might affect health inequities when implemented were uncertain. Preliminary implementation issues included high complexity of delivering multiple nurse-led intervention components, and challenges of coordinating different involved parties in delivering the interventions. Appropriate resource allocation and training should be provided to address these potential problems, as suggested by stakeholders.

LINKING EVIDENCE TO ACTION

Using the GRADE EtD framework, four nurse-led interventions were recommended by healthcare stakeholders as possible strategies for reducing 30-day hospital readmissions among general medical patients in Hong Kong. To address preliminary implementation issues, nurses' role as care coordinators should also be strengthened to ensure smooth delivery of nurse-led intervention components, and to facilitate multidisciplinary collaboration during service delivery.

摘要

背景

在许多医疗保健系统中,包括香港,30 天内再入院率高会增加医院成本并对患者预后产生负面影响。在香港公共医疗体系中,针对一般内科患者降低 30 天内再入院率,尚未建立基于证据且适合本地情况的护士主导干预措施。

目的

本研究旨在使用推荐评估、制定与评价(GRADE)证据决策(EtD)框架,为香港公共医疗体系中一般内科患者降低 30 天内再入院率选择和完善基于证据的护士主导干预措施。

方法

招募了 18 位当地医疗保健利益相关者开展两步法。第一步中,邀请利益相关者对现有证据支持的护士主导干预措施进行优先级排序,并提出不同干预措施的重要组合。在第一步中确定的所有干预措施中,第二步涉及利益相关者开展两轮德尔菲问卷调查,旨在制定适合当地情况的基于共识的干预措施。GRADE EtD 框架用于指导决策过程,同时考虑证据的确定性、获益与危害、资源利用、公平性、可接受性和可行性。

结果

有 4 项护士主导干预措施获得了正性共识,其百分比协议在 70.6%至 82.4%之间。GRADE EtD 标准评价显示,超过 70%的利益相关者认为这些 4 项干预措施可能是可接受和可行的,尽管证据的确定性为低或中。半数利益相关者认为与不良反应相比,这些干预措施的期望效果更大。然而,实施这些护士主导干预措施所需的资源以及这些干预措施可能对健康不公平性的影响尚不确定。初步实施问题包括实施多个护士主导干预措施组件的复杂性较高,以及协调不同参与方实施干预措施的挑战。利益相关者建议,应提供适当的资源分配和培训以解决这些潜在问题。

将证据付诸行动

利用 GRADE EtD 框架,利益相关者推荐了 4 项护士主导干预措施,认为这是降低香港一般内科患者 30 天内再入院率的可能策略。为了解决初步实施问题,还应加强护士作为护理协调员的作用,以确保护士主导干预措施组件的顺利实施,并在服务提供过程中促进多学科协作。

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