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Published in: Journal of Translational Medicine 1/2020

Open Access 01-12-2020 | Stroke | Protocol

Glycemic variability: prognostic impact on acute ischemic stroke and the impact of corrective treatment for hyperglycemia. The GLIAS-III translational study

Authors: Blanca Fuentes, Silvia Pastor-Yborra, Raquel Gutiérrez-Zúñiga, Noemí González-Pérez de Villar, Elena de Celis, Jorge Rodríguez-Pardo, Mari Carmen Gómez-de Frutos, Fernando Laso-García, María Gutiérrez-Fernández, MÁngeles Ortega-Casarrubios, Alfonso Soto, María López-Fernández, María Santamaría, Noemí Díez-González, Mar M. Freijo, Beatriz Zandio, Raquel Delgado-Mederos, Ana Calleja, Juan Carlos Portilla-Cuenca, Arturo Lisbona, Laura Otero-Ortega, Exuperio Díez-Tejedor

Published in: Journal of Translational Medicine | Issue 1/2020

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Abstract

Introduction

Glycemic variability (GV) represents the amplitude of oscillations in glucose levels over time and is associated with higher mortality in critically ill patients. Our aim is to evaluate the impact of GV on acute ischemic stroke (IS) outcomes in humans and explore the impact of two different insulin administration routes on GV in an animal model.

Methods

This translational study consists of two studies conducted in parallel: The first study is an observational, multicenter, prospective clinical study in which 340 patients with acute IS will be subcutaneously implanted a sensor to continuously monitor blood glucose levels for 96 h. The second study is a basic experimental study using an animal model (rats) with permanent occlusion of the middle cerebral artery and induced hyperglycemia (through an intraperitoneal injection of nicotinamide and streptozotocin). The animal study will include the following 6 groups (10 animals per group): sham; hyperglycemia without IS; IS without hyperglycemia; IS and hyperglycemia without treatment; IS and hyperglycemia and intravenous insulin; and IS and hyperglycemia and subcutaneous insulin. The endpoint for the first study is mortality at 3 months, while the endpoints for the animal model study are GV, functional recovery and biomarkers.

Discussion

The GLIAS-III study will be the first translational approach analyzing the prognostic influence of GV, evaluated by the use of subcutaneous glucose monitors, in acute stroke.
Trial registration https://​www.​clinicaltrials.​gov (NCT04001049)
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Metadata
Title
Glycemic variability: prognostic impact on acute ischemic stroke and the impact of corrective treatment for hyperglycemia. The GLIAS-III translational study
Authors
Blanca Fuentes
Silvia Pastor-Yborra
Raquel Gutiérrez-Zúñiga
Noemí González-Pérez de Villar
Elena de Celis
Jorge Rodríguez-Pardo
Mari Carmen Gómez-de Frutos
Fernando Laso-García
María Gutiérrez-Fernández
MÁngeles Ortega-Casarrubios
Alfonso Soto
María López-Fernández
María Santamaría
Noemí Díez-González
Mar M. Freijo
Beatriz Zandio
Raquel Delgado-Mederos
Ana Calleja
Juan Carlos Portilla-Cuenca
Arturo Lisbona
Laura Otero-Ortega
Exuperio Díez-Tejedor
Publication date
01-12-2020
Publisher
BioMed Central
Published in
Journal of Translational Medicine / Issue 1/2020
Electronic ISSN: 1479-5876
DOI
https://doi.org/10.1186/s12967-020-02586-4

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