首页> 美国卫生研究院文献>Diabetes Technology Therapeutics >Accuracy and Robustness of Dynamical Tracking of Average Glycemia (A1c) to Provide Real-Time Estimation of Hemoglobin A1c Using Routine Self-Monitored Blood Glucose Data
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Accuracy and Robustness of Dynamical Tracking of Average Glycemia (A1c) to Provide Real-Time Estimation of Hemoglobin A1c Using Routine Self-Monitored Blood Glucose Data

机译:动态跟踪平均血糖(A1c)的准确性和鲁棒性以使用常规的自我监测血糖数据实时估算血红蛋白A1c

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摘要

>Background: Laboratory hemoglobin A1c (HbA1c) assays are typically done only every few months. However, self-monitored blood glucose (SMBG) readings offer the possibility for real-time estimation of HbA1c. We present a new dynamical method tracking changes in average glycemia to provide real-time estimation of A1c (eA1c).>Materials and Methods: A new two-step algorithm was constructed that includes: (1) tracking fasting glycemia to compute base eA1c updated with every fasting SMBG data point and (2) calibration of the base eA1c trace with monthly seven-point SMBG profiles to capture the principal components of blood glucose variability and produce eA1c. A training data set (n=379 subjects) was used to estimate model parameters. The model was then fixed and applied to an independent test data set (n=375 subjects). Accuracy was evaluated in the test data set by computing mean absolute deviation (MAD) and mean absolute relative deviation (MARD) of eA1c from reference HbA1c, as well as eA1c–HbA1c correlation.>Results: MAD was 0.50, MARD was 6.7%, and correlation between eA1c and reference HbA1c was r=0.76. Using an HbA1c error grid plot, 77.5% of all eA1c fell within 10% from reference HbA1c, and 97.9% fell within 20% from reference.>Conclusions: A dynamical estimation model was developed that achieved accurate tracking of average glycemia over time. The model is capable of working with infrequent SMBG data typical for type 2 diabetes, thereby providing a new tool for HbA1c estimation at the patient level. The computational demands of the procedure are low; thus it is readily implementable into home SMBG meters. Real-time HbA1c estimation could increase patients' motivation to improve diabetes control.
机译:>背景:实验室血红蛋白A1c(HbA1c)测定通常每隔几个月进行一次。但是,自我监测的血糖(SMBG)读数为实时估计HbA1c提供了可能性。我们提供了一种跟踪平均血糖变化的动态方法,以提供对A1c(eA1c)的实时估计。>材料和方法:构建了一种新的两步算法,其中包括:(1)跟踪禁食血糖以计算每个空腹SMBG数据点更新的基础eA1c,以及(2)用每月的七个点SMBG配置文件对基础eA1c迹线进行校准,以捕获血糖变异性的主要成分并产生eA1c。训练数据集(n = 379个受试者)用于估计模型参数。然后将模型固定并应用于独立的测试数据集(n = 375个对象)。通过计算eA1c与参考HbA1c的平均绝对偏差(MAD)和平均绝对相对偏差(MARD)以及eA1c–HbA1c相关性,来评估测试数据的准确性。>结果: MAD为0.50 ,MARD为6.7%,eA1c与参考HbA1c之间的相关性为r = 0.76。使用HbA1c误差网格图,所有eA1c的77.5%相对于参考HbA1c均在10%范围内,而97.9%的相对于参考HbA1c则在20%范围内。随着时间的推移平均血糖升高。该模型能够处理2型糖尿病的典型SMBG数据,从而为患者水平的HbA1c估计提供了新工具。该程序的计算需求低;因此,它很容易在家用SMBG仪表中实现。实时HbA1c估计可以增加患者改善糖尿病控制的动力。

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