| Literature DB >> 28756769 |
James S Krinsley1, J Geoffrey Chase2, Jan Gunst3, Johan Martensson4,5, Marcus J Schultz6,7, Fabio S Taccone8, Jan Wernerman9, Julien Bohe10, Christophe De Block11, Thomas Desaive12, Pierre Kalfon13, Jean-Charles Preiser14.
Abstract
Glucose management in intensive care unit (ICU) patients has been a matter of debate for almost two decades. Compared to intermittent monitoring systems, continuous glucose monitoring (CGM) can offer benefit in the prevention of severe hyperglycemia and hypoglycemia by enabling insulin infusions to be adjusted more rapidly and potentially more accurately because trends in glucose concentrations can be more readily identified. Increasingly, it is apparent that a single glucose target/range may not be optimal for all patients at all times and, as with many other aspects of critical care patient management, a personalized approach to glucose control may be more appropriate. Here we consider some of the evidence supporting different glucose targets in various groups of patients, focusing on those with and without diabetes and neurological ICU patients. We also discuss some of the reasons why, despite evidence of benefit, CGM devices are still not widely employed in the ICU and propose areas of research needed to help move CGM from the research arena to routine clinical use.Entities:
Keywords: Diabetes; Glucose; Insulin; Monitoring; Neurointensive care
Mesh:
Substances:
Year: 2017 PMID: 28756769 PMCID: PMC5535285 DOI: 10.1186/s13054-017-1784-0
Source DB: PubMed Journal: Crit Care ISSN: 1364-8535 Impact factor: 9.097
Summary of trial designs
| Trial design type | Purpose | Limitations | Comments, recommendations |
|---|---|---|---|
| Randomized controlled trial | To determine proof of causality | Heterogeneous patient populations reduce ability of the trial to ascertain differences in treatment effect. | Participating centers should have a phase-in period that allows demonstration of the capacity of the center to perform the study safely and effectively. |
| Observational study | Hypothesis generation | Do not provide proof of causality | Collaborations among centers with large databases. |
| Individual patient meta-analysis | To avoid the limitations and complications inherent in comparing disparate studies. | Hugely time and resource intensive | The analysis will be confounded by the same limitations as present in the original trials |
| Cluster randomization | To reduce variations in process of care for complex interventions as a confounding factor in randomized controlled trials | Requires more complex statistical methodology to account for the effects of clustering | May be particularly suitable for complex interventions, such as glucose control in the critically ill |