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Published in: Endocrine 1/2022

01-04-2022 | Hypoglycemia | Original Article

Gradient variability coefficient: a novel method for assessing glycemic variability and risk of hypoglycemia

Authors: Jingzhen Li, Jingyi Lu, Igbe Tobore, Yuhang Liu, Abhishek Kandwal, Lei Wang, Xiaojing Ma, Wei Lu, Yuqian Bao, Jian Zhou, Zedong Nie

Published in: Endocrine | Issue 1/2022

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Abstract

Objective

Despite the clinical importance of glycemic variability and hypoglycemia, thus far, there is no consensus on the optimum method for assessing glycemic variability and risk of hypoglycemia simultaneously.

Research design and methods

A novel metric, the gradient variability coefficient (GVC), was proposed for characterizing glycemic variability and risk of hypoglycemia. A total of 208 daily records of CGM encompassing 104 patients with T1DM and 2380 daily records from 1190 patients with T2DM were obtained in our study. Simulated CGM waveforms were used to assess the ability of GVC and other metrics to capture the amplitude and frequency of glucose fluctuations. In addition, the association between GVC and the risk of hypoglycemia was evaluated by receiver operating characteristic (ROC) curve.

Results

The results of simulated CGM waveforms indicated that, compared with the widely used metrics of glycemic variability including standard deviation of sensor glucose (SD), coefficient of variation (CV), and mean amplitude of glycemic excursion (MAGE), GVC could reflect both the amplitude and frequency of glucose oscillations. In addition, the area under the curve (AUC) of ROC was 0.827 in T1DM and 0.873 in T2DM, indicating good performance in predicting hypoglycemia.

Conclusions

The proposed GVC might be a clinically useful tool in characterizing glycemic variability and the assessment of hypoglycemia risk in patients with diabetes.
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Metadata
Title
Gradient variability coefficient: a novel method for assessing glycemic variability and risk of hypoglycemia
Authors
Jingzhen Li
Jingyi Lu
Igbe Tobore
Yuhang Liu
Abhishek Kandwal
Lei Wang
Xiaojing Ma
Wei Lu
Yuqian Bao
Jian Zhou
Zedong Nie
Publication date
01-04-2022
Publisher
Springer US
Keyword
Hypoglycemia
Published in
Endocrine / Issue 1/2022
Print ISSN: 1355-008X
Electronic ISSN: 1559-0100
DOI
https://doi.org/10.1007/s12020-021-02950-4

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