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Predicting Factors Associated with Hypoglycemia Reduction with Automated Predictive Insulin Suspension in Patients at High Risk of Severe Hypoglycemia: An Analysis from the SMILE Randomized Trial

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posted on 2021-02-15, 09:34 authored by A Habteab, J Castañeda, H De Valk, P Choudhary, E Bosi, S Lablanche, S De Portu, J Da Silva, L Vorrink-De Groot, J Shin, O Cohen
Background: This analysis from the SMILE randomized study was performed to identify predictive factors associated with the greatest reductions in hypoglycemia with the Medtronic MiniMed™ 640G Suspend before low feature in adults with type 1 diabetes at high risk of severe hypoglycemia. Methods: Clinical and treatment-related factors associated with decreased sensor hypoglycemia (SH) were identified in participants from the intervention arm by univariate and multivariate analyses. Results: The reduction in SH events <54 mg/dL (<3.0 mmol/L) in the intervention group was significantly (P < 0.0001) associated with the baseline mean number of sensor hypoglycemic events (MNSHE) <54 mg/dL. When excluding continuous glucose monitoring (CGM) factors not readily available (MNSHE, duration of SH events, area under the curve, mean amplitude of glycemic excursions), only the baseline mean time spent <54 mg/dL was found to be a significant independent predictor factor (P < 0.0001). Baseline HbA1c, mean self-monitoring of blood glucose (SMBG), and coefficient of variation of SMBG were significant, although weak, predictors in the absence of any CGM data. Conclusions: The greatest reductions in SH events achieved with the MiniMed 640G system with the Suspend before low feature were seen in participants with higher baseline MNSHE. Measuring these (usually uncollected) events can be a useful tool to predict hypoglycemia reduction. ClinicalTrials.gov Registration Identifier NCT02733991.

History

Citation

Diabetes Technology & Therapeutics.Sep 2020.681-685.http://doi.org/10.1089/dia.2019.0495

Author affiliation

Diabetes Research Centre, College of Life Sciences

Version

  • VoR (Version of Record)

Published in

Diabetes Technology and Therapeutics

Volume

22

Issue

9

Pagination

681 - 685

Publisher

Mary Ann Liebert Inc

issn

1520-9156

eissn

1557-8593

Copyright date

2020

Available date

2020-05-15

Spatial coverage

United States

Language

eng

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