Woldaregay Ashenafi Zebene, Årsand Eirik, Botsis Taxiarchis, Hartvigsen Gunnar
Department of Computer Science, University of Tromsø - The Arctic University of Norway, Tromsø, Norway.
Norwegian Centre for E-health Research, University Hospital of North Norway, Tromsø, Norway.
Stud Health Technol Inform. 2017;245:619-623.
People with diabetes experience elevated blood glucose (BG) levels at the time of an infection. We propose to utilize patient-gathered information in an Electronic Disease Surveillance Monitoring Network (EDMON), which may support the identification of a cluster of infected people with elevated BG levels on a spatiotemporal basis. The system incorporates data gathered from diabetes apps, continuous glucose monitoring (CGM) devices, and other appropriate physiological indicators from people with type 1 diabetes. This paper presents a novel approach towards modeling of the individual's BG dynamics, a mechanism to track and detect deviations of elevated BG readings. The models were developed and validated using self-recorded data in the non-infection status using Dexcom CGM devices, from two type 1 diabetes individuals over a 1-month period. The models were also tested using simulated datasets, which resemble the individual's BG evolution during infections. The models accurately simulated the individual's normal BG fluctuations and further detected statistically significant BG elevations.
糖尿病患者在感染时会出现血糖(BG)水平升高的情况。我们建议在电子疾病监测网络(EDMON)中利用患者收集的信息,这可能有助于在时空基础上识别一群血糖水平升高的感染者。该系统整合了从糖尿病应用程序、持续葡萄糖监测(CGM)设备以及1型糖尿病患者的其他适当生理指标收集的数据。本文提出了一种对个体血糖动态进行建模的新方法,一种跟踪和检测血糖读数升高偏差的机制。这些模型是使用德康CGM设备在非感染状态下由两名1型糖尿病个体在1个月内自行记录的数据开发和验证的。这些模型还使用模拟数据集进行了测试,这些数据集类似于个体在感染期间的血糖变化。这些模型准确地模拟了个体正常的血糖波动,并进一步检测到具有统计学意义的血糖升高。