Faculty of Medicine and Health, The University of Sydney, Sydney, New South Wales, Australia
Faculty of Medicine and Health, The University of Sydney, Sydney, New South Wales, Australia.
BMJ Open. 2023 Jun 7;13(6):e073697. doi: 10.1136/bmjopen-2023-073697.
The aim of this study is to explore the current and future state of quality measurement and feedback and identify factors influencing measurement feedback systems, including the barriers and enablers to their effective design, implementation, use and translation into quality improvement.
This qualitative study used semistructured interviews with key informants. A deductive framework analysis was conducted to code transcripts to the Theoretical Domains Framework (TDF). An inductive analysis was used to produce subthemes and belief statements within each TDF domain.
All interviews were conducted by videoconference and audio-recorded.
Key informants were purposively sampled experts in quality measurement and feedback, including clinical (n=5), government (n=5), research (n=4) and health service leaders (n=3) from Australia (n=7), the USA (n=4), the UK (n=2), Canada (n=2) and Sweden (n=2).
A total of 17 key informants participated in the study. The interview length ranged from 48 to 66 min. 12 theoretical domains populated by 38 subthemes were identified as relevant to measurement feedback systems. The most populous domains included , , and . The most populous subthemes included 'quality improvement culture', 'financial and human resource support' and 'patient-centred measurement'. There were minimal conflicting beliefs outside of 'data quality and completeness'. Conflicting beliefs in these subthemes were predominantly between government and clinical leaders.
Multiple factors were found to influence measurement feedback systems and future considerations are presented within this manuscript. The barriers and enablers that impact these systems are complex. While there are some clear modifiable factors in the design of measurement and feedback processes, influential factors described by key informants were largely socioenvironmental. Evidence-based design and implementation, coupled with a deeper understanding of the implementation context, may lead to enhanced quality measurement feedback systems and ultimately improved care delivery and patient outcomes.
本研究旨在探讨质量衡量和反馈的现状和未来,并确定影响衡量反馈系统的因素,包括其有效设计、实施、使用和转化为质量改进的障碍和促进因素。
这项定性研究采用半结构式访谈,对关键信息提供者进行访谈。采用演绎框架分析法对记录进行编码,以纳入理论领域框架(TDF)。采用归纳分析在每个 TDF 领域内生成子主题和信念陈述。
所有访谈均通过视频会议和录音进行。
关键信息提供者是质量衡量和反馈方面的专家,包括来自澳大利亚(7 人)、美国(4 人)、英国(2 人)、加拿大(2 人)和瑞典(2 人)的临床医生(n=5)、政府(n=5)、研究(n=4)和卫生服务领导者(n=3),他们是经过有目的抽样的。
共有 17 名关键信息提供者参加了这项研究。访谈时间从 48 分钟到 66 分钟不等。有 12 个理论领域包含 38 个子主题,被认为与衡量反馈系统相关。最常见的领域包括,,和。最常见的子主题包括“质量改进文化”、“财务和人力资源支持”和“以患者为中心的衡量”。除了“数据质量和完整性”之外,几乎没有相互矛盾的信念。这些子主题中的相互矛盾的信念主要存在于政府和临床领导者之间。
研究发现了多种影响衡量反馈系统的因素,并在本文中提出了未来的考虑因素。这些系统的障碍和促进因素是复杂的。虽然在衡量和反馈过程的设计中有一些明确的可修改因素,但关键信息提供者描述的影响因素在很大程度上是社会环境因素。循证设计和实施,再加上对实施背景的深入理解,可能会导致更好的质量衡量反馈系统,并最终改善护理提供和患者结果。