1 Department of Information Engineering, University of Padova , Padova, Italy .
Diabetes Technol Ther. 2013 Oct;15(10):836-44. doi: 10.1089/dia.2013.0105. Epub 2013 Aug 14.
In type 1 diabetes mellitus (T1DM), physical activity (PA) lowers the risk of cardiovascular complications but hinders the achievement of optimal glycemic control, transiently boosting insulin action and increasing hypoglycemia risk. Quantitative investigation of relationships between PA-related signals and glucose dynamics, tracked using, for example, continuous glucose monitoring (CGM) sensors, have been barely explored.
In the clinic, 20 control and 19 T1DM subjects were studied for 4 consecutive days. They underwent low-intensity PA sessions daily. PA was tracked by the PA monitoring system (PAMS), a system comprising accelerometers and inclinometers. Variations on glucose dynamics were tracked estimating first- and second-order time derivatives of glucose concentration from CGM via Bayesian smoothing. Short-time effects of PA on glucose dynamics were quantified through the partial correlation function in the interval (0, 60 min) after starting PA.
Correlation of PA with glucose time derivatives is evident. In T1DM, the negative correlation with the first-order glucose time derivative is maximal (absolute value) after 15 min of PA, whereas the positive correlation is maximal after 40-45 min. The negative correlation between the second-order time derivative and PA is maximal after 5 min, whereas the positive correlation is maximal after 35-40 min. Control subjects provided similar results but with positive and negative correlation peaks anticipated of 5 min.
Quantitative information on correlation between mild PA and short-term glucose dynamics was obtained. This represents a preliminary important step toward incorporation of PA information in more realistic physiological models of the glucose-insulin system usable in T1DM simulators, in development of closed-loop artificial pancreas control algorithms, and in CGM-based prediction algorithms for generation of hypoglycemic alerts.
在 1 型糖尿病(T1DM)中,体力活动(PA)降低了心血管并发症的风险,但阻碍了最佳血糖控制的实现,暂时增强了胰岛素作用并增加了低血糖风险。使用连续血糖监测(CGM)传感器等方法,对与 PA 相关的信号与血糖动态之间的关系进行定量研究几乎没有被探索过。
在临床中,对 20 名对照受试者和 19 名 T1DM 受试者进行了连续 4 天的研究。他们每天进行低强度的 PA 运动。PA 通过 PA 监测系统(PAMS)进行跟踪,该系统由加速度计和倾斜计组成。通过贝叶斯平滑从 CGM 估计血糖浓度的一阶和二阶时间导数来跟踪血糖动态的变化。通过在开始 PA 后(0,60 分钟)的区间内的偏相关函数来量化 PA 对血糖动态的短期影响。
PA 与血糖时间导数之间存在明显的相关性。在 T1DM 中,PA 与一阶血糖时间导数的负相关在 PA 开始后 15 分钟达到最大值(绝对值),而正相关在 40-45 分钟达到最大值。二阶时间导数与 PA 的负相关在 5 分钟时达到最大值,而正相关在 35-40 分钟时达到最大值。对照受试者提供了相似的结果,但正、负相关峰值预计在 5 分钟。
获得了关于轻度 PA 与短期血糖动态之间相关性的定量信息。这是朝着将 PA 信息纳入更现实的 T1DM 模拟器中血糖-胰岛素系统生理模型、开发闭环人工胰腺控制算法以及基于 CGM 的预测算法以生成低血糖警报的方向迈出的重要的初步步骤。