Kongdee Rujiravee, Parsia Bijan, Thabit Hood, Harper Simon
Department of Computer Science, University of Manchester, LF1 Kilburn Building, Oxford Road, Manchester M13 9PL, UK.
Department of Computer Science, University of Manchester, Manchester, UK.
Ther Adv Endocrinol Metab. 2025 Sep 9;16:20420188251362089. doi: 10.1177/20420188251362089. eCollection 2025.
Findings from our previous study indicate that people with type 1 diabetes mellitus (T1DM) unknowingly misinterpret data displayed on glucose monitoring systems and make inaccurate treatment decisions, which increases the risk of hospitalisation.
This study aims to assess the effectiveness of incorporating textual descriptions in glucose monitoring systems compared to existing systems. The main goal is to minimise the effort required in glucose data interpretation, facilitating better self-management and ultimately improving haemoglobin A1C levels.
A two-arm and mixed-methods evaluation was conducted. Participants were randomly allocated to the control arm (existing systems) or the experimental arm (newly developed systems incorporating textual descriptions). In the first part, a task-based usability assessment was conducted to compare performance between the two arms. The second part evaluated participant preferences, agreement with textual descriptions and perceptions of the new systems.
A total of 86 participants were recruited. The experimental arm achieved an 85.15% total correctness score, compared to 74.38% in the control arm ( < 0.001). The experimental arm particularly outperformed the control arm in the ambiguous tasks, such as compression low. However, despite a higher performance and greater agreement with the textual descriptions, the experimental group exhibited a less favourable perception compared to the control group.
Incorporating textual description into glucose monitoring systems enhances treatment decision-making for people with T1DM. It suggests that we are on the right path to helping them better understand their glucose data and assist their self-management. Extensive research is required to focus more on the patient-centred approach in information presentation and prioritise it in parallel with other advancements in glucose monitoring technologies.
我们之前的研究结果表明,1型糖尿病(T1DM)患者会在不知情的情况下错误解读血糖监测系统显示的数据,并做出不准确的治疗决策,这增加了住院风险。
本研究旨在评估与现有系统相比,在血糖监测系统中加入文本描述的有效性。主要目标是尽量减少解读血糖数据所需的精力,促进更好的自我管理,并最终改善糖化血红蛋白水平。
进行了一项双臂混合方法评估。参与者被随机分配到对照组(现有系统)或实验组(新开发的包含文本描述的系统)。第一部分进行了基于任务的可用性评估,以比较两组之间的表现。第二部分评估了参与者的偏好、对文本描述的认同以及对新系统的看法。
共招募了86名参与者。实验组的总正确率为85.15%,而对照组为74.38%(<0.001)。实验组在模糊任务(如压缩低值)方面尤其优于对照组。然而,尽管表现更高且对文本描述的认同度更高,但与对照组相比,实验组的看法不太积极。
在血糖监测系统中加入文本描述可增强T1DM患者的治疗决策能力。这表明我们正朝着帮助他们更好地理解血糖数据并协助其自我管理的正确方向前进。需要进行广泛的研究,更多地关注以患者为中心的信息呈现方式,并将其与血糖监测技术的其他进步并行优先考虑。