Zhou Tony, Dickson Jennifer L, Geoffrey Chase J
1 Department of Mechanical Engineering, University of Canterbury, Christchurch, New Zealand.
J Diabetes Sci Technol. 2018 Jan;12(1):90-104. doi: 10.1177/1932296817719089. Epub 2017 Jul 14.
Continuous glucose monitoring (CGM) devices have been effective in managing diabetes and offer potential benefits for use in the intensive care unit (ICU). Use of CGM devices in the ICU has been limited, primarily due to the higher point accuracy errors over currently used traditional intermittent blood glucose (BG) measures. General models of CGM errors, including drift and random errors, are lacking, but would enable better design of protocols to utilize these devices. This article presents an autoregressive (AR) based modeling method that separately characterizes the drift and random noise of the GlySure CGM sensor (GlySure Limited, Oxfordshire, UK).
Clinical sensor data (n = 33) and reference measurements were used to generate 2 AR models to describe sensor drift and noise. These models were used to generate 100 Monte Carlo simulations based on reference blood glucose measurements. These were then compared to the original CGM clinical data using mean absolute relative difference (MARD) and a Trend Compass.
The point accuracy MARD was very similar between simulated and clinical data (9.6% vs 9.9%). A Trend Compass was used to assess trend accuracy, and found simulated and clinical sensor profiles were similar (simulated trend index 11.4° vs clinical trend index 10.9°).
The model and method accurately represents cohort sensor behavior over patients, providing a general modeling approach to any such sensor by separately characterizing each type of error that can arise in the data. Overall, it enables better protocol design based on accurate expected CGM sensor behavior, as well as enabling the analysis of what level of each type of sensor error would be necessary to obtain desired glycemic control safety and performance with a given protocol.
持续葡萄糖监测(CGM)设备在糖尿病管理中已证明有效,并且在重症监护病房(ICU)使用具有潜在益处。CGM设备在ICU中的使用一直受到限制,主要是因为与目前使用的传统间歇性血糖(BG)测量相比,其逐点准确性误差更高。目前缺乏CGM误差的通用模型,包括漂移误差和随机误差,但此类模型将有助于更好地设计使用这些设备的方案。本文提出了一种基于自回归(AR)的建模方法,用于分别表征GlySure CGM传感器(GlySure Limited,英国牛津郡)的漂移和随机噪声。
利用临床传感器数据(n = 33)和参考测量值生成两个AR模型来描述传感器漂移和噪声。这些模型基于参考血糖测量值生成100次蒙特卡洛模拟。然后使用平均绝对相对差(MARD)和趋势罗盘将这些模拟与原始CGM临床数据进行比较。
模拟数据和临床数据之间的逐点准确性MARD非常相似(9.6%对9.9%)。使用趋势罗盘评估趋势准确性,发现模拟和临床传感器曲线相似(模拟趋势指数11.4°对临床趋势指数10.9°)。
该模型和方法准确地反映了患者群体中传感器的行为,通过分别表征数据中可能出现的每种误差类型,为任何此类传感器提供了一种通用的建模方法。总体而言, 它能够基于准确的预期CGM传感器行为进行更好的方案设计,还能够分析在给定方案下,为实现所需的血糖控制安全性和性能,每种类型的传感器误差需要达到何种水平。