Chan Nicholas Berin, Li Weizi, Aung Theingi, Bazuaye Eghosa, Montero Rosa M
Informatics Research Centre, Henley Business School, University of Reading, Reading, United Kingdom.
Royal Berkshire NHS Foundation Trust, Reading, United Kingdom.
JMIR AI. 2023 May 26;2:e45450. doi: 10.2196/45450.
Continuous glucose monitoring (CGM) for diabetes combines noninvasive glucose biosensors, continuous monitoring, cloud computing, and analytics to connect and simulate a hospital setting in a person's home. CGM systems inspired analytics methods to measure glycemic variability (GV), but existing GV analytics methods disregard glucose trends and patterns; hence, they fail to capture entire temporal patterns and do not provide granular insights about glucose fluctuations.
This study aimed to propose a machine learning-based framework for blood glucose fluctuation pattern recognition, which enables a more comprehensive representation of GV profiles that could present detailed fluctuation information, be easily understood by clinicians, and provide insights about patient groups based on time in blood fluctuation patterns.
Overall, 1.5 million measurements from 126 patients in the United Kingdom with type 1 diabetes mellitus (T1DM) were collected, and prevalent blood fluctuation patterns were extracted using dynamic time warping. The patterns were further validated in 225 patients in the United States with T1DM. Hierarchical clustering was then applied on time in patterns to form 4 clusters of patients. Patient groups were compared using statistical analysis.
In total, 6 patterns depicting distinctive glucose levels and trends were identified and validated, based on which 4 GV profiles of patients with T1DM were found. They were significantly different in terms of glycemic statuses such as diabetes duration (P=.04), glycated hemoglobin level (P<.001), and time in range (P<.001) and thus had different management needs.
The proposed method can analytically extract existing blood fluctuation patterns from CGM data. Thus, time in patterns can capture a rich view of patients' GV profile. Its conceptual resemblance with time in range, along with rich blood fluctuation details, makes it more scalable, accessible, and informative to clinicians.
糖尿病的连续血糖监测(CGM)结合了无创葡萄糖生物传感器、连续监测、云计算和分析技术,以在个人家中连接并模拟医院环境。CGM系统启发了用于测量血糖变异性(GV)的分析方法,但现有的GV分析方法忽略了血糖趋势和模式;因此,它们无法捕捉整个时间模式,也无法提供关于血糖波动的详细见解。
本研究旨在提出一种基于机器学习的血糖波动模式识别框架,该框架能够更全面地呈现GV概况,可提供详细的波动信息,便于临床医生理解,并根据血糖波动模式中的时间为患者群体提供见解。
总共收集了来自英国126例1型糖尿病(T1DM)患者的150万次测量数据,并使用动态时间规整提取了常见的血糖波动模式。这些模式在美国的225例T1DM患者中进一步得到验证。然后对模式中的时间应用层次聚类,以形成4个患者集群。使用统计分析对患者群体进行比较。
总共识别并验证了6种描绘独特血糖水平和趋势的模式,基于这些模式发现了T1DM患者的4种GV概况。它们在糖尿病病程(P = .04)、糖化血红蛋白水平(P < .001)和血糖达标时间(P < .001)等血糖状态方面存在显著差异,因此具有不同的管理需求。
所提出的方法可以从CGM数据中分析提取现有的血糖波动模式。因此,模式中的时间可以全面反映患者的GV概况。它与血糖达标时间在概念上相似,同时具有丰富的血糖波动细节,使其对临床医生而言更具可扩展性、实用性和信息量。