Jahromi Reza, Zahed Karim, Sasangohar Farzan, Erraguntla Madhav, Mehta Ranjana, Qaraqe Khalid
Industrial and Systems Engineering, Texas A&M University, College Station, TX, United States.
Department of Computer Science and Engineering, Texas A&M University, College Station, TX, United States.
JMIR Diabetes. 2023 Apr 19;8:e40990. doi: 10.2196/40990.
Diabetes affects millions of people worldwide and is steadily increasing. A serious condition associated with diabetes is low glucose levels (hypoglycemia). Monitoring blood glucose is usually performed by invasive methods or intrusive devices, and these devices are currently not available to all patients with diabetes. Hand tremor is a significant symptom of hypoglycemia, as nerves and muscles are powered by blood sugar. However, to our knowledge, no validated tools or algorithms exist to monitor and detect hypoglycemic events via hand tremors.
In this paper, we propose a noninvasive method to detect hypoglycemic events based on hand tremors using accelerometer data.
We analyzed triaxial accelerometer data from a smart watch recorded from 33 patients with type 1 diabetes for 1 month. Time and frequency domain features were extracted from acceleration signals to explore different machine learning models to classify and differentiate between hypoglycemic and nonhypoglycemic states.
The mean duration of the hypoglycemic state was 27.31 (SD 5.15) minutes per day for each patient. On average, patients had 1.06 (SD 0.77) hypoglycemic events per day. The ensemble learning model based on random forest, support vector machines, and k-nearest neighbors had the best performance, with a precision of 81.5% and a recall of 78.6%. The results were validated using continuous glucose monitor readings as ground truth.
Our results indicate that the proposed approach can be a potential tool to detect hypoglycemia and can serve as a proactive, nonintrusive alert mechanism for hypoglycemic events.
糖尿病影响着全球数百万人,且其发病率在稳步上升。与糖尿病相关的一种严重情况是低血糖。监测血糖通常通过侵入性方法或侵入式设备进行,而目前并非所有糖尿病患者都能使用这些设备。手抖是低血糖的一个重要症状,因为神经和肌肉由血糖提供能量。然而,据我们所知,目前尚无经过验证的工具或算法可通过手抖来监测和检测低血糖事件。
在本文中,我们提出一种基于加速度计数据通过手抖检测低血糖事件的非侵入性方法。
我们分析了33名1型糖尿病患者佩戴智能手表记录的1个月的三轴加速度计数据。从加速度信号中提取时域和频域特征,以探索不同的机器学习模型来对低血糖和非低血糖状态进行分类和区分。
每位患者低血糖状态的平均持续时间为每天27.31(标准差5.15)分钟。患者平均每天有1.06(标准差0.77)次低血糖事件。基于随机森林、支持向量机和k近邻的集成学习模型表现最佳,精度为81.5%,召回率为78.6%。结果以连续血糖监测读数作为金标准进行了验证。
我们的结果表明,所提出的方法可能是一种检测低血糖的潜在工具,可作为低血糖事件的一种主动、非侵入性警报机制。