Centre for Health Informatics, Division of Informatics, Imaging and Data Science, The University of Manchester, Manchester, United Kingdom.
Department of Renal and Pancreatic Transplantation, Manchester University National Health Service Foundation Trust, Manchester, United Kingdom.
J Med Internet Res. 2022 Apr 21;24(4):e31825. doi: 10.2196/31825.
Data journey modeling is a methodology used to establish a high-level overview of information technology (IT) infrastructure in health care systems. It allows a better understanding of sociotechnical barriers and thus informs meaningful digital transformation. Kidney transplantation is a complex clinical service involving multiple specialists and providers. The referral pathway for a transplant requires the centralization of patient data across multiple IT solutions and health care organizations. At present, there is a poor understanding of the role of IT in this process, specifically regarding the management of patient data, clinical communication, and workflow support.
To apply data journey modeling to better understand interoperability, data access, and workflow requirements of a regional multicenter kidney transplant service.
An incremental methodology was used to develop the data journey model. This included review of service documents, domain expert interviews, and iterative modeling sessions. Results were analyzed based on the LOAD (landscape, organizations, actors, and data) framework to provide a meaningful assessment of current data management challenges and inform ways for IT to overcome these challenges.
Results were presented as a diagram of the organizations (n=4), IT systems (n>9), actors (n>4), and data journeys (n=0) involved in the transplant referral pathway. The diagram revealed that all movement of data was dependent on actor interaction with IT systems and manual transcription of data into Microsoft Word (Microsoft, Inc) documents. Each actor had between 2 and 5 interactions with IT systems to capture all relevant data, a process that was reported to be time consuming and error prone. There was no interoperability within or across organizations, which led to delays as clinical teams manually transferred data, such as medical history and test results, via post or email.
Overall, data journey modeling demonstrated that human actors, rather than IT systems, formed the central focus of data movement. The IT landscape did not complement this workflow and exerted a significant administrative burden on clinical teams. Based on this study, future solutions must consider regional interoperability and specialty-specific views of data to support multi-organizational clinical services such as transplantation.
数据之旅建模是一种用于建立医疗保健系统信息技术(IT)基础设施的高级概述的方法。它可以更好地了解社会技术障碍,从而为有意义的数字化转型提供信息。肾移植是一项涉及多个专科医生和提供者的复杂临床服务。移植的转诊途径需要在多个 IT 解决方案和医疗保健组织中集中患者数据。目前,人们对 IT 在该过程中的作用知之甚少,特别是在患者数据管理、临床沟通和工作流程支持方面。
应用数据之旅建模来更好地了解区域多中心肾移植服务的互操作性、数据访问和工作流程要求。
采用增量方法开发数据之旅模型。这包括审查服务文件、领域专家访谈和迭代建模会议。结果根据 LOAD(景观、组织、参与者和数据)框架进行分析,以对当前数据管理挑战进行有意义的评估,并为 IT 克服这些挑战提供方法。
结果以参与移植转诊途径的组织(n=4)、IT 系统(n>9)、参与者(n>4)和数据之旅(n=0)的图表形式呈现。该图表显示,所有数据的移动都依赖于参与者与 IT 系统的交互以及将数据手动转录到 Microsoft Word(Microsoft,Inc.)文档中。每个参与者与 IT 系统之间有 2 到 5 次交互,以捕获所有相关数据,据报道,这个过程既耗时又容易出错。在组织内部或之间没有互操作性,这导致临床团队需要手动通过邮件或邮政传输数据,例如病史和测试结果,从而导致延迟。
总体而言,数据之旅建模表明,人类参与者而不是 IT 系统成为数据移动的核心关注点。IT 景观并没有补充这一工作流程,而是给临床团队带来了重大的行政负担。基于这项研究,未来的解决方案必须考虑区域互操作性和特定专业的数据视图,以支持移植等多组织临床服务。