Characterization of Daily Glycemic Variability in Subjects with Type 1 Diabetes Using a Mixture of Metrics

Details

Serval ID
serval:BIB_1E280DECD001
Type
Article: article from journal or magazin.
Collection
Publications
Institution
Title
Characterization of Daily Glycemic Variability in Subjects with Type 1 Diabetes Using a Mixture of Metrics
Journal
Diabetes Technol Ther
Author(s)
Zheng F., Jalbert M., Forbes F., Bonnet S., Wojtusciszyn A., Lablanche S., Benhamou P. Y.
ISSN
1557-8593 (Electronic)
ISSN-L
1520-9156
Publication state
Published
Issued date
04/2020
Volume
22
Number
4
Pages
301-313
Language
english
Notes
Zheng, Fei
Jalbert, Manon
Forbes, Florence
Bonnet, Stephane
Wojtusciszyn, Anne
Lablanche, Sandrine
Benhamou, Pierre-Yves
eng
Research Support, Non-U.S. Gov't
Diabetes Technol Ther. 2020 Apr;22(4):301-313. doi: 10.1089/dia.2019.0250.
Abstract
Background: Glycemic variability (GV) is an important component of glycemic control for patients with type 1 diabetes (T1D). The inadequacy of existing measurements lies in the fact that they view the variability from different aspects, so that no consensus has been reached among physicians as to which metrics to use in practice. Moreover, although GV, from 1 day to another, can show very different patterns, few metrics have been dedicated to daily evaluations. Materials and Methods: A reference (stable glycemia) statistical model is built based on a combination of daily computed canonical glycemic control metrics including variability. The metrics are computed for subjects from the TRIMECO islet transplantation trial, selected when their beta-score (composite score for grading success) is >/=6 after a transplantation. Then, for any new daily glycemia recording, its likelihood with respect to this reference model provides a multimetric score of daily GV severity. In addition, determining the likelihood value that best separates the daily glycemia with beta-score = 0 from that with beta-score >/=6, we propose an objective decision rule to classify daily glycemia into "stable" or "unstable." Results: The proposed characterization framework integrates multiple standard metrics and provides a comprehensive daily GV index, based on which, long-term variability evaluations and investigations on the implicit link between variability and beta-score can be carried out. Evaluation, in a daily GV classification task, shows that the proposed method is highly concordant to the experience of diabetologists. Conclusion: A multivariate statistical model is proposed to characterize the daily GV of subjects with T1D. The model has the advantage to provide a single variability score that gathers the information power of a number of canonical scores, too partial to be used individually. A reliable decision rule to classify daily variability measurements into stable or unstable is also provided.
Keywords
*Anomaly detection, *Continuous glucose monitoring, *Glycemic variability, *Islet cell transplantation, *Statistical mixture models, *Type 1 diabetes
Pubmed
Create date
14/06/2021 9:59
Last modification date
15/06/2021 6:36
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