Public Health Research Unit, Women's and Children's Hospital, Children Youth and Women's Health Service, North Adelaide, South Australia, Australia.
Diabetes Technol Ther. 2011 Mar;13(3):296-302. doi: 10.1089/dia.2010.0090. Epub 2011 Feb 3.
Glycemic variability is currently under scrutiny as a possible predictor of the complications of diabetes. The manual process for estimating a now classical measure of glycemic variability, the mean amplitude of glycemic excursion (MAGE), is both tedious and prone to error, and there is a special need for an automated method to calculate the MAGE from continuous glucose monitoring (CGM) data.
An automated algorithm for identifying the peaks and nadirs corresponding to the glycemic excursions required for the MAGE calculation has been developed. The algorithm takes a column of timed glucose measurements and generates a plot joining the peaks and nadirs required for estimating the MAGE. It returns estimates of the MAGE for both upward and downward excursions, together with several other indices of glycemic variability.
Details of the application of the algorithm to CGM data collected over a 48-h period are provided, together with graphical illustrations of the intermediate stages in identifying the peaks and nadirs required for the MAGE. Application of the algorithm to 104 CGM datasets (92 from children with diabetes and 12 from controls) generated plots that, on visual inspection, were all found to have identified the peaks, nadirs, and excursions correctly.
The proposed algorithm eliminates the tedium and/or errors of manually identifying and measuring countable excursions in CGM data in order to estimate the MAGE. It can also be used to calculate the MAGE from "sparse" blood glucose measurements, such as those collected in home blood glucose monitoring.
血糖变异性目前正受到关注,可能是糖尿病并发症的预测指标。目前,估算经典血糖变异性指标——平均血糖波动幅度(MAGE)的方法主要是手动操作,既繁琐又容易出错,因此特别需要一种自动方法来根据连续血糖监测(CGM)数据计算 MAGE。
我们开发了一种用于识别与 MAGE 计算相关的血糖波动的峰和谷的自动算法。该算法采用一列定时血糖测量值,并生成一个连接 MAGE 估算所需的峰和谷的图。它返回向上和向下波动的 MAGE 估计值,以及其他几个血糖变异性指标的估计值。
提供了该算法在 48 小时 CGM 数据中的应用细节,以及用于识别 MAGE 所需的峰和谷的中间阶段的图形说明。该算法应用于 104 个 CGM 数据集(92 个来自糖尿病儿童,12 个来自对照组),生成的图在视觉上均被认为正确地识别了峰、谷和波动。
该算法消除了手动识别和测量 CGM 数据中可计数波动的繁琐和/或错误,以便估算 MAGE。它还可以用于根据“稀疏”血糖测量值(如家庭血糖监测中收集的测量值)计算 MAGE。