Tendedez Helena, Ferrario Maria-Angela, McNaney Roisin, Gradinar Adrian
School of Computing and Communications, Lancaster University, Lancaster, United Kingdom.
School of Electronics, Electrical Engineering and Computer Science, Queen's University Belfast, Belfast, United Kingdom.
JMIR Hum Factors. 2022 May 6;9(2):e32456. doi: 10.2196/32456.
When caring for patients with chronic conditions such as chronic obstructive pulmonary disease (COPD), health care professionals (HCPs) rely on multiple data sources to make decisions. Collating and visualizing these data, for example, on clinical dashboards, holds the potential to support timely and informed decision-making. Most studies on data-supported decision-making (DSDM) technologies for health care have focused on their technical feasibility or quantitative effectiveness. Although these studies are an important contribution to the literature, they do not further our limited understanding of how HCPs engage with these technologies and how they can be designed to support specific contexts of use. To advance our knowledge in this area, we must work with HCPs to explore this space and the real-world complexities of health care work and service structures.
This study aimed to qualitatively explore how DSDM technologies could support HCPs in their decision-making regarding COPD care. We created a scenario-based research tool called Respire, which visualizes HCPs' data needs about their patients with COPD and services. We used Respire with HCPs to uncover rich and nuanced findings about human-data interaction in this context, focusing on the real-world challenges that HCPs face when carrying out their work and making decisions.
We engaged 9 respiratory HCPs from 2 collaborating health care organizations to design Respire. We then used Respire as a tool to investigate human-data interaction in the context of decision-making about COPD care. The study followed a co-design approach that had 3 stages and spanned 2 years. The first stage involved 5 workshops with HCPs to identify data interaction scenarios that would support their work. The second stage involved creating Respire, an interactive scenario-based web app that visualizes HCPs' data needs, incorporating feedback from HCPs. The final stage involved 11 one-to-one sessions with HCPs to use Respire, focusing on how they envisaged that it could support their work and decisions about care.
We found that HCPs trust data differently depending on where it came from and who recorded it, sporadic and subjective data generated by patients have value but create challenges for decision-making, and HCPs require support in interpreting and responding to new data and its use cases.
Our study uncovered important lessons for the design of DSDM technologies to support health care contexts. We show that although DSDM technologies have the potential to support patient care and health care delivery, important sociotechnical and human-data interaction challenges influence the design and deployment of these technologies. Exploring these considerations during the design process can ensure that DSDM technologies are designed with a holistic view of how decision-making and engagement with data occur in health care contexts.
在护理慢性阻塞性肺疾病(COPD)等慢性病患者时,医疗保健专业人员(HCP)依靠多个数据源来做出决策。整理并可视化这些数据,例如在临床仪表盘上,有可能支持及时且明智的决策。大多数关于医疗保健数据支持决策(DSDM)技术的研究都集中在其技术可行性或定量有效性上。尽管这些研究对文献有重要贡献,但它们并未增进我们对HCP如何与这些技术互动以及如何设计这些技术以支持特定使用场景的有限理解。为了在这一领域推进我们的知识,我们必须与HCP合作,探索这个领域以及医疗保健工作和服务结构的现实世界复杂性。
本研究旨在定性探索DSDM技术如何支持HCP在COPD护理决策方面的工作。我们创建了一个名为Respire的基于场景的研究工具,它可以可视化HCP对其COPD患者和服务的数据需求。我们将Respire与HCP一起使用,以揭示这一背景下关于人机数据交互的丰富而细致入微的发现,重点关注HCP在开展工作和做出决策时面临的现实世界挑战。
我们邀请了来自2个合作医疗保健组织的9名呼吸科HCP参与设计Respire。然后,我们使用Respire作为工具来研究COPD护理决策背景下的人机数据交互。该研究采用了一种共设计方法,分为3个阶段,历时2年。第一阶段包括与HCP举行5次研讨会,以确定支持他们工作的数据交互场景。第二阶段包括创建Respire,一个基于场景的交互式网络应用程序,它可以可视化HCP的数据需求,并纳入了HCP的反馈。最后阶段包括与HCP进行11次一对一会议,以使用Respire,重点关注他们设想它如何支持他们的工作和护理决策。
我们发现,HCP根据数据的来源和记录者不同而对数据有不同的信任,患者产生的零星和主观数据有价值,但会给决策带来挑战,并且HCP在解释和回应新数据及其用例方面需要支持。
我们的研究为支持医疗保健场景的DSDM技术设计揭示了重要经验教训。我们表明,尽管DSDM技术有潜力支持患者护理和医疗保健服务,但重要的社会技术和人机数据交互挑战会影响这些技术的设计和部署。在设计过程中探索这些因素可以确保DSDM技术在设计时全面考虑医疗保健场景中决策和数据交互是如何发生的。