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Early Glycemic Control Assessment Based on Consensus CGM Metrics. | LitMetric

AI Article Synopsis

  • Continuous glucose monitoring (CGM) has changed diabetes management, leading to a consensus on clinical targets based on eight key metrics for interpreting CGM data.
  • To assess glycemic control, it's recommended to use data from at least 70% of 14 consecutive days, but the study explores the potential to accurately gauge these metrics with fewer days of data (intra-period) and across two consecutive periods (inter-period).
  • The findings show that while metrics like time in range (TIR) remain fairly accurate with less data, critical metrics for infrequent events, such as time below range (TBR), showed significant deviations, underscoring the need for caution in clinical decisions based on limited CGM data.

Article Abstract

Continuous glucose monitoring (CGM) has revolutionized the world of diabetes and transformed the approach to diabetes care. In this context, an expert panel has reached consensus on clinical targets for CGM data interpretation based on eight CGM metrics. At least 70% of 14 consecutive CGM days (referred to as a period) are recommended to assess glycemic control based on the metrics. In clinical practice less CGM data may be available. Therefore, the primary aim of this study is to explore the ability to recover the consensus metrics utilizing less than 14 days of CGM data (intra-period). As a secondary aim, we investigate the recovery considering two consecutive periods (inter-period). The analyses are based on real-world CGM data from 484 diabetes users (4726 periods) acquired from the Cornerstones4Care® Powered by Glooko app. Using up to 14 accumulated days, the consensus metrics are calculated for each user and period, and compared to the fully 14 accumulated intra- and inter-period days. Relatively low deviations were observed for time in range (TIR) and average based metrics when using less than 14 days, however, we observed large deviations in metrics characterizing infrequent events such as time below range (TBR). Furthermore, the consensus metrics obtained in two consecutive 14 day periods have clear discrepancies (inter-period). Recovering consensus metrics using less than 14 days might still be valuable in terms of interpreting CGM data in certain clinical contexts. However, caution should be taken if treatment decisions would be made with less than 14 days of data on critical metrics such as TBR, since the metrics characterizing infrequent events deviate substantially when less data are available. Substantial deviation is also seen when comparing across two consecutive periods, which means that care should be taken not to over-generalize consensus metric based glycemic control conclusions from one period to subsequent periods.

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Source
http://dx.doi.org/10.1109/EMBC46164.2021.9631015DOI Listing

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