Shields Cathy, Cunningham Scott G, Wake Deborah J, Fioratou Evridiki, Brodie Doogie, Philip Sam, Conway Nicholas T
Division of Population Health and Genomics, School of Medicine, University of Dundee, Dundee, United Kingdom.
Usher Institute, University of Edinburgh, Edinburgh, United Kingdom.
JMIR Hum Factors. 2022 Feb 8;9(1):e29973. doi: 10.2196/29973.
Diabetes and its complications account for 10% of annual health care spending in the United Kingdom. Digital health care interventions (DHIs) can provide scalable care, fostering diabetes self-management and reducing the risk of complications. Tailorability (providing personalized interventions) and usability are key to DHI engagement/effectiveness. User-centered design of DHIs (aligning features to end users' needs) can generate more usable interventions, avoiding unintended consequences and improving user engagement.
MyDiabetesIQ (MDIQ) is an artificial intelligence engine intended to predict users' diabetes complications risk. It will underpin a user interface in which users will alter lifestyle parameters to see the impact on their future risks. MDIQ will link to an existing DHI, My Diabetes My Way (MDMW). We describe the user-centered design of the user interface of MDIQ as informed by human factors engineering.
Current users of MDMW were invited to take part in focus groups to gather their insights about users being shown their likelihood of developing diabetes-related complications and any risks they perceived from using MDIQ. Findings from focus groups informed the development of a prototype MDIQ interface, which was then user-tested through the "think aloud" method, in which users speak aloud about their thoughts/impressions while performing prescribed tasks. Focus group and think aloud transcripts were analyzed thematically, using a combination of inductive and deductive analysis. For think aloud data, a sociotechnical model was used as a framework for thematic analysis.
Focus group participants (n=8) felt that some users could become anxious when shown their future complications risks. They highlighted the importance of easy navigation, jargon avoidance, and the use of positive/encouraging language. User testing of the prototype site through think aloud sessions (n=7) highlighted several usability issues. Issues included confusing visual cues and confusion over whether user-updated information fed back to health care teams. Some issues could be compounded for users with limited digital skills. Results from the focus groups and think aloud workshops were used in the development of a live MDIQ platform.
Acting on the input of end users at each iterative stage of a digital tool's development can help to prioritize users throughout the design process, ensuring the alignment of DHI features with user needs. The use of the sociotechnical framework encouraged the consideration of interactions between different sociotechnical dimensions in finding solutions to issues, for example, avoiding the exclusion of users with limited digital skills. Based on user feedback, the tool could scaffold good goal setting, allowing users to balance their palatable future complications risk against acceptable lifestyle changes. Optimal control of diabetes relies heavily on self-management. Tools such as MDMW/ MDIQ can offer personalized support for self-management alongside access to users' electronic health records, potentially helping to delay or reduce long-term complications, thereby providing significant reductions in health care costs.
在英国,糖尿病及其并发症占年度医疗保健支出的10%。数字医疗保健干预措施(DHI)可以提供可扩展的护理,促进糖尿病自我管理并降低并发症风险。可定制性(提供个性化干预措施)和可用性是DHI参与度/有效性的关键。以用户为中心设计DHI(使功能与最终用户需求保持一致)可以生成更实用的干预措施,避免意外后果并提高用户参与度。
MyDiabetesIQ(MDIQ)是一种人工智能引擎,旨在预测用户患糖尿病并发症的风险。它将支撑一个用户界面,用户可以在该界面中更改生活方式参数,以查看对其未来风险的影响。MDIQ将链接到现有的DHI“我的糖尿病我的方式”(MDMW)。我们描述了以人类因素工程学为依据的MDIQ用户界面的以用户为中心的设计。
邀请MDMW的现有用户参加焦点小组,以收集他们对向用户展示其患糖尿病相关并发症的可能性以及他们从使用MDIQ中察觉到的任何风险的见解。焦点小组的结果为MDIQ界面原型的开发提供了信息,然后通过“大声思考”方法对该原型进行用户测试,即用户在执行规定任务时大声说出他们的想法/印象。使用归纳和演绎分析相结合的方法,对焦点小组和大声思考的记录进行主题分析。对于大声思考的数据,使用社会技术模型作为主题分析的框架。
焦点小组参与者(n = 8)认为,一些用户在看到自己未来的并发症风险时可能会感到焦虑。他们强调了易于导航、避免使用行话以及使用积极/鼓励性语言的重要性。通过大声思考环节对原型网站进行的用户测试(n = 7)突出了几个可用性问题。问题包括视觉提示混乱以及用户更新的信息是否反馈给医疗团队存在困惑。对于数字技能有限的用户,一些问题可能会更加复杂。焦点小组和大声思考研讨会的结果被用于开发一个实时MDIQ平台。
在数字工具开发的每个迭代阶段根据最终用户的意见采取行动,有助于在整个设计过程中优先考虑用户,确保DHI功能与用户需求保持一致。使用社会技术框架鼓励在寻找问题解决方案时考虑不同社会技术维度之间的相互作用,例如,避免将数字技能有限的用户排除在外。根据用户反馈,该工具可以搭建良好的目标设定框架,让用户在可接受的未来并发症风险与可接受的生活方式改变之间取得平衡。糖尿病的最佳控制在很大程度上依赖于自我管理。诸如MDMW/MDIQ之类的工具可以为自我管理提供个性化支持,同时访问用户的电子健康记录,有可能帮助延迟或减少长期并发症,从而大幅降低医疗保健成本。