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Continuous Glucose Monitors and Activity Trackers to Inform Insulin Dosing in Type 1 Diabetes: The University of Virginia Contribution

机译:连续葡萄糖监测器和活动跟踪器通知胰岛素的1型糖尿病:弗吉尼亚大学贡献

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摘要

Objective: Suboptimal insulin dosing in type 1 diabetes (T1D) is frequently associated with time-varying insulin requirements driven by various psycho-behavioral and physiological factors influencing insulin sensitivity (IS). Among these, physical activity has been widely recognized as a trigger of altered IS both during and following the exercise effort, but limited indication is available for the management of structured and (even more) unstructured activity in T1D. In this work, we present two methods to inform insulin dosing with biosignals from wearable sensors to improve glycemic control in individuals with T1D. Research Design and Methods: Continuous glucose monitors (CGM) and activity trackers are leveraged by the methods. The first method uses CGM records to estimate IS in real time and adjust the insulin dose according to a person’s insulin needs; the second method uses step count data to inform the bolus calculation with the residual glucose-lowering effects of recently performed (structured or unstructured) physical activity. The methods were tested in silico within the University of Virginia/Padova T1D Simulator. A standard bolus calculator and the proposed “smart” systems were deployed in the control of one meal in presence of increased/decreased IS (Study 1) and following a 1-hour exercise bout (Study 2). Postprandial glycemic control was assessed in terms of time spent in different glycemic ranges and low/high blood glucose indices (LBGI/HBGI), and compared between the dosing strategies. Results: In Study 1, the CGM-informed system allowed to reduce exposure to hypoglycemia in presence of increased IS (percent time < 70 mg/dL: 6.1% versus 9.9%; LBGI: 1.9 versus 3.2) and exposure to hyperglycemia in presence of decreased IS (percent time > 180 mg/dL: 14.6% versus 18.3%; HBGI: 3.0 versus 3.9), tending toward optimal control. In Study 2, the step count-informed system allowed to reduce hypoglycemia (percent time < 70 mg/dL: 3.9% versus 13.4%; LBGI: 1.7 versus 3.2) at the cost of a minor increase in exposure to hyperglycemia (percent time > 180 mg/dL: 11.9% versus 7.5%; HBGI: 2.4 versus 1.5). Conclusions: We presented and validated in silico two methods for the smart dosing of prandial insulin in T1D. If seen within an ensemble, the two algorithms provide alternatives to individuals with T1D for improving insulin dosing accommodating a large variety of treatment options. Future work will be devoted to test the safety and efficacy of the methods in free-living conditions.
机译:目的:1型糖尿病(T1D)中的次优胰岛素给药经常与受影响胰岛素敏感性的各种心理行为和生理因素驱动的时变胰岛素要求。其中,由于在运动努力期间和之后,物理活动被广泛被认为是改变的触发,但是在T1D中的结构化和(甚至更多)的非结构化活动中可以提供有限的指示。在这项工作中,我们提出了两种方法,可以向胰岛素与可穿戴传感器一起使用生物素,以改善具有T1D个体中的血糖控制。研究设计和方法:连续葡萄糖显示器(CGM)和活动跟踪器通过该方法利用。第一种方法使用CGM记录来估计实际上并根据人的胰岛素需求调整胰岛素剂量;第二种方法使用步骤计数数据通过最近进行(结构化或非结构化)身体活动的残余葡萄糖降低效果通知推注计算。该方法在弗吉尼亚大学/帕多瓦T1D模拟器中在Silico进行了测试。标准推注计算器和所提出的“智能”系统在控制中的一个膳食中部署在增加/减少的一顿饭中(研究1),并在1小时的运动Bout(研究2)之后。在不同血糖范围和低/高血糖指数(LBGI / HBGI)中花费的时间评估了餐后血糖控制,并在给药策略之间进行了比较。结果:在研究1中,允许在增加的情况下减少对低血糖暴露的CGM的系统(百分比<70mg / dL:6.1%与9.9%; LBGI:1.9与3.2)和在存在下暴露于高血糖症减少(百分比> 180mg / dl:14.6%对18.3%; HBGI:3.0与3.9),趋向于最佳控制。在研究2中,步骤计数信息允许减少低血糖(百分比<70mg / dl:3.9%与13.4%; LBGI:1.7与3.2),以次要增加高血糖血症(百分比>) 180 mg / dl:11.9%对7.5%; HBGI:2.4与1.5)。结论:我们在T1D中展示并验证了Silico两种方法,用于T1D中的序列胰岛素的智能剂量。如果在一个集合中看到,这两种算法提供了具有T1D的个体的替代方案,用于改善容纳各种治疗方案的胰岛素给药。将致力于在自由生活条件下测试方法的安全性和疗效。

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