Tsichlaki Stella, Koumakis Lefteris, Tsiknakis Manolis
Department of Electrical & Computer Engineering, Hellenic Mediterranean University, Heraklion, Greece.
Institute of Computer Science, Foundation for Research and Technology-Hellas, Heraklion, Greece.
JMIR Diabetes. 2022 Jul 21;7(3):e34699. doi: 10.2196/34699.
Diabetes is a chronic condition that necessitates regular monitoring and self-management of the patient's blood glucose levels. People with type 1 diabetes (T1D) can live a productive life if they receive proper diabetes care. Nonetheless, a loose glycemic control might increase the risk of developing hypoglycemia. This incident can occur because of a variety of causes, such as taking additional doses of insulin, skipping meals, or overexercising. Mainly, the symptoms of hypoglycemia range from mild dysphoria to more severe conditions, if not detected in a timely manner.
In this review, we aimed to report on innovative detection techniques and tactics for identifying and preventing hypoglycemic episodes, focusing on T1D.
A systematic literature search following the PRISMA (Preferred Reporting Items for Systematic Reviews and Meta-Analyses) guidelines was performed focusing on the PubMed, GoogleScholar, IEEEXplore, and ACM Digital Library to find articles on technologies related to hypoglycemia detection in patients with T1D.
The presented approaches have been used or devised to enhance blood glucose monitoring and boost its efficacy in forecasting future glucose levels, which could aid the prediction of future episodes of hypoglycemia. We detected 19 predictive models for hypoglycemia, specifically on T1D, using a wide range of algorithmic methodologies, spanning from statistics (1.9/19, 10%) to machine learning (9.88/19, 52%) and deep learning (7.22/19, 38%). The algorithms used most were the Kalman filtering and classification models (support vector machine, k-nearest neighbors, and random forests). The performance of the predictive models was found to be satisfactory overall, reaching accuracies between 70% and 99%, which proves that such technologies are capable of facilitating the prediction of T1D hypoglycemia.
It is evident that continuous glucose monitoring can improve glucose control in diabetes; however, predictive models for hypo- and hyperglycemia using only mainstream noninvasive sensors such as wristbands and smartwatches are foreseen to be the next step for mobile health in T1D. Prospective studies are required to demonstrate the value of such models in real-life mobile health interventions.
糖尿病是一种慢性病,需要对患者的血糖水平进行定期监测和自我管理。1型糖尿病(T1D)患者如果得到适当的糖尿病护理,能够过上有意义的生活。然而,血糖控制宽松可能会增加发生低血糖的风险。这种情况可能由于多种原因发生,例如额外注射胰岛素、不吃饭或过度运动。主要地,如果不及时发现,低血糖的症状从轻躁感到更严重的情况不等。
在本综述中,我们旨在报告用于识别和预防低血糖发作的创新检测技术和策略,重点关注1型糖尿病。
按照PRISMA(系统评价和Meta分析的首选报告项目)指南进行系统的文献检索,重点检索PubMed、GoogleScholar、IEEEXplore和ACM数字图书馆,以查找有关1型糖尿病患者低血糖检测相关技术的文章。
所提出的方法已被用于或设计用于加强血糖监测并提高其预测未来血糖水平的功效,这有助于预测未来的低血糖发作。我们使用广泛的算法方法检测到19种低血糖预测模型,特别是针对1型糖尿病的,范围从统计学(1.9/19,10%)到机器学习(9.88/19,52%)和深度学习(7.22/19,38%)。使用最多的算法是卡尔曼滤波和分类模型(支持向量机、k近邻和随机森林)。发现预测模型的性能总体上令人满意,准确率在70%至99%之间,这证明此类技术能够促进1型糖尿病低血糖的预测。
显然,持续血糖监测可以改善糖尿病患者的血糖控制;然而,使用仅如腕带和智能手表等主流非侵入性传感器的低血糖和高血糖预测模型预计将成为1型糖尿病移动健康的下一步。需要进行前瞻性研究以证明此类模型在实际移动健康干预中的价值。