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Published in: Acta Diabetologica 5/2013

Open Access 01-10-2013 | Original Article

Prospective, randomized trial on intensive SMBG management added value in non-insulin-treated T2DM patients (PRISMA): a study to determine the effect of a structured SMBG intervention

Authors: Marina Scavini, Emanuele Bosi, Antonio Ceriello, Francesco Giorgino, Massimo Porta, Antonio Tiengo, Giacomo Vespasiani, Davide Bottalico, Raffaele Marino, Christopher Parkin, Erminio Bonizzoni, Domenico Cucinotta

Published in: Acta Diabetologica | Issue 5/2013

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Abstract

Self-monitoring of blood glucose (SMBG) is a core component of diabetes management. However, the International Diabetes Federation recommends that SMBG be performed in a structured manner and that the data are accurately interpreted and used to take appropriate therapeutic actions. We designed a study to evaluate the impact of structured SMBG on glycemic control in non-insulin-treated type 2 diabetes (T2DM) patients. The Prospective, Randomized Trial on Intensive SMBG Management Added Value in Non-insulin-Treated T2DM Patients (PRISMA) is a 12-month, prospective, multicenter, open, parallel group, randomized, and controlled trial to evaluate the added value of an intensive, structured SMBG regimen in T2DM patients treated with oral agents and/or diet. One thousand patients (500 per arm) will be enrolled at 39 clinical sites in Italy. Eligible patients will be randomized to the intensive structured monitoring (ISM) group or the active control (AC) group, with a glycosylated hemoglobin (HbA1c) target of <7.0%. Intervention will comprise (1) structured SMBG (4-point daily glucose profiles on 3 days per week [ISM]; discretionary, unstructured SMBG [AC]); (2) comprehensive patient education (both groups); and (3) clinician’s adjustment of diabetes medications using an algorithm targeting SMBG levels, HbA1c and hypoglycemia (ISM) or HbA1c and hypoglycemia (AC). The intervention and trial design build upon previous research by emphasizing appropriate and collaborative use of SMBG by both patients and physicians. Utilization of per protocol and intent-to-treat analyses facilitates assessment of the intervention. Inclusion of multiple dependent variables allows us to assess the broader impact of the intervention, including changes in patient and physician attitudes and behaviors. ClinicalTrials.gov (NCT00643474).
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Metadata
Title
Prospective, randomized trial on intensive SMBG management added value in non-insulin-treated T2DM patients (PRISMA): a study to determine the effect of a structured SMBG intervention
Authors
Marina Scavini
Emanuele Bosi
Antonio Ceriello
Francesco Giorgino
Massimo Porta
Antonio Tiengo
Giacomo Vespasiani
Davide Bottalico
Raffaele Marino
Christopher Parkin
Erminio Bonizzoni
Domenico Cucinotta
Publication date
01-10-2013
Publisher
Springer Milan
Published in
Acta Diabetologica / Issue 5/2013
Print ISSN: 0940-5429
Electronic ISSN: 1432-5233
DOI
https://doi.org/10.1007/s00592-011-0357-y

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