Physiological Controls Research Center, Óbuda University, Bécsi út 96/b, H-1034 Budapest, Hungary.
Applied Informatics and Applied Mathematics Doctoral School, Óbuda University, Bécsi út 96/b, H-1034 Budapest, Hungary.
Sensors (Basel). 2022 Nov 7;22(21):8568. doi: 10.3390/s22218568.
Non-coordinated physical activity may lead to hypoglycemia, which is a dangerous condition for diabetic people. Decision support systems related to type 1 diabetes mellitus (T1DM) still lack the capability of automated therapy modification by recognizing and categorizing the physical activity. Further, this desired adaptive therapy should be achieved without increasing the administrative load, which is already high for the diabetic community. These requirements can be satisfied by using artificial intelligence-based solutions, signals collected by wearable devices, and relying on the already available data sources, such as continuous glucose monitoring systems. In this work, we focus on the detection of physical activity by using a continuous glucose monitoring system and a wearable sensor providing the heart rate-the latter is accessible even in the cheapest wearables. Our results show that the detection of physical activity is possible based on these data sources, even if only low-complexity artificial intelligence models are deployed. In general, our models achieved approximately 90% accuracy in the detection of physical activity.
非协调的身体活动可能导致低血糖,这对糖尿病患者来说是一种危险的情况。与 1 型糖尿病(T1DM)相关的决策支持系统仍然缺乏通过识别和分类身体活动来自动修改治疗的能力。此外,这种期望的适应性治疗应该在不增加行政负担的情况下实现,而糖尿病患者群体的行政负担已经很高。这些要求可以通过使用基于人工智能的解决方案、可穿戴设备收集的信号以及依赖于已经可用的数据源(如连续血糖监测系统)来满足。在这项工作中,我们专注于使用连续血糖监测系统和提供心率的可穿戴传感器来检测身体活动,后者即使在最便宜的可穿戴设备中也可以获得。我们的结果表明,即使仅部署低复杂度的人工智能模型,也可以基于这些数据源来检测身体活动。总的来说,我们的模型在检测身体活动方面的准确率约为 90%。