Liang Zilu
Ubiquitous and Personal Computing Lab, Faculty of Engineering, Kyoto University of Advanced Science (KUAS), Kyoto, Japan.
Institute of Industrial Science, The University of Tokyo, Tokyo, Japan.
Front Med Technol. 2022 Nov 4;4:1026830. doi: 10.3389/fmedt.2022.1026830. eCollection 2022.
It is often assumed that healthy people have the genuine ability to maintain tight blood glucose regulation. However, a few recent studies revealed that glucose dysregulation such as hyperglycemia may occur even in people who are considered normoglycemic by standard measures and were more prevalent than initially thought, suggesting that more investigations are needed to fully understand the within-day glucose dynamics of healthy people. In this paper, we conducted an analysis on a multi-modal dataset to examine the relationships between glycemic variability when people were awake and that when they were sleeping. The interstitial glucose levels were measured with a wearable continuous glucose monitoring (CGM) technology FreeStyle Libre 2 at every 15 min interval. In contrast to the traditional single-time-point measurements, the CGM data allow the investigation into the temporal patterns of glucose dynamics at high granularity. Sleep onset and offset timestamps were recorded daily with a Fitbit Charge 3 wristband. Our analysis leveraged the sleep data to split the glucose readings into segments of awake-time and in-sleep, instead of using fixed cut-off time points as has been done in existing literature. We combined repeated measure correlation analysis and quantitative association rules mining, together with an original post-filtering method, to identify significant and most relevant associations. Our results showed that low overall glucose in awake time was strongly correlated to low glucose in subsequent sleep, which in turn correlated to overall low glucose in the next day. Moreover, both analysis techniques identified significant associations between the minimal glucose reading in sleep and the low blood glucose index the next day. In addition, the association rules discovered in this study achieved high confidence (0.75-0.88) and lift (4.1-11.5), which implies that the proposed post-filtering method was effective in selecting quality rules.
人们通常认为健康人具备维持严格血糖调节的真正能力。然而,最近的一些研究表明,即使是通过标准测量被认为血糖正常的人,也可能出现血糖失调,如高血糖,而且这种情况比最初想象的更为普遍,这表明需要进行更多研究以全面了解健康人的日内血糖动态。在本文中,我们对一个多模态数据集进行了分析,以研究人们清醒时和睡眠时血糖变异性之间的关系。采用可穿戴式连续血糖监测(CGM)技术FreeStyle Libre 2每隔15分钟测量一次组织间液葡萄糖水平。与传统的单点测量不同,CGM数据能够以高粒度研究葡萄糖动态的时间模式。每天使用Fitbit Charge 3腕带记录入睡和醒来的时间戳。我们的分析利用睡眠数据将葡萄糖读数分为清醒时间段和睡眠段,而不是像现有文献那样使用固定的截止时间点。我们结合重复测量相关分析和定量关联规则挖掘,以及一种原始的后过滤方法,来识别显著且最相关的关联。我们的结果表明,清醒时的总体低葡萄糖水平与随后睡眠中的低葡萄糖水平密切相关,而这又与第二天的总体低葡萄糖水平相关。此外,两种分析技术都确定了睡眠中最小葡萄糖读数与第二天低血糖指数之间的显著关联。此外,本研究中发现的关联规则具有较高的置信度(0.75 - 0.88)和提升度(4.1 - 11.5),这意味着所提出的后过滤方法在选择高质量规则方面是有效的。