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The Minimum Frequency of Glucose Measurements from Which Glycemic Variation Can Be Consistently Assessed

机译:可以连续评估血糖变化的最小血糖测量频率

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Aims: While there has been much debate about the clinical importance of glycemic variation (GV), little attention has been directed to the properties of data sets from which it is measured. The purpose of this study is to assess the minimum frequency of glucose measurements from which GV can be consistently and meaningfully measured. Methods: Forty-eight 72 h continuous glucose monitoring traces from children with type 1 diabetes were assessed. Measures of GV included standard deviation (SD), mean amplitude of glycemic excursion (MAGE), and continuous overlapping net glycemic action (CONGA_(1–4)). Measures of GV calculated using 5 min sampling were designated as the 100% or “best estimate” value. Calculations were then repeated for each patient using glucose values spaced at increasing intervals. For each of the specified sampling frequencies, the ratio (%) of the between-subject SD based on the reduced subset of data to the estimate of the SD based on the full 5 min sampling data set was calculated. Results: As the interval between observations increased, so did the variability of the estimators of GV. Standard deviation exhibited the least systematic change at all measurement intervals, and MAGE exhibited the greatest systematic change. Conclusions: In patients with type 1 diabetes, GV as measured by SD or CONGA_(4), becomes unreliable if observations are more than 2–4 h apart, and estimates of MAGE become unreliable if glucose measurements are more than 1 h apart. MAGE is more unstable and prone to random measurement error than either SD or CONGA. The frequency of glycemic measurements is thus pivotal when selecting a parameter for measurement of GV.
机译:目的:尽管人们对血糖变异(GV)的临床重要性进行了很多辩论,但很少有人关注可用来测量血糖变异的数据集的性质。这项研究的目的是评估可以连续,有意义地测量GV的最小葡萄糖测量频率。方法:对来自1型糖尿病儿童的48个连续72小时血糖监测结果进行了评估。 GV的度量包括标准差(SD),血糖波动的平均幅度(MAGE)和连续重叠的净血糖作用(CONGA_(1-4))。使用5分钟采样计算出的GV值指定为100%或“最佳估计”值。然后使用间隔不断增加的葡萄糖值为每个患者重复计算。对于每个指定的采样频率,计算出基于减少的数据子集的对象间SD与基于完整的5分钟采样数据集的SD估计值之比(%)。结果:随着观察间隔的增加,GV估计量的变异性也增加。在所有测量时间间隔内,标准差的系统变化最小,而MAGE的系统变化最大。结论:在1型糖尿病患者中,通过SD或CONGA_(4)测量的GV如果观察值相差超过2-4小时变得不可靠,而如果测量的血糖值相差超过1 h则无法估计MAGE。与SD或CONGA相比,MAGE更不稳定,并且容易出现随机测量误差。因此,在选择用于测量GV的参数时,血糖测量的频率至关重要。

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