Medizinische Universität Graz Austria/Österreich - Forschungsportal - Medical University of Graz

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SHR Neuro Krebs Kardio Lipid Stoffw Microb

Wilinska, ME; Blaha, J; Chassin, LJ; Cordingley, JJ; Dormand, NC; Ellmerer, M; Haluzik, M; Plank, J; Vlasselaers, D; Wouters, PJ; Hovorka, R.
Evaluating glycemic control algorithms by computer simulations.
DIABETES TECHNOL THE. 2011; 13(7): 713-722. Doi: 10.1089/dia.2011.0016
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Co-Autor*innen der Med Uni Graz
Ellmerer Martin
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Abstract:
Background: Numerous guidelines and algorithms exist to achieve glycemic control. Their strengths and weaknesses are difficult to assess without head-to-head comparison in time-consuming clinical trials. We hypothesized that computer simulations may be useful. Methods: Two open-label randomized clinical trials were replicated using computer simulations. One study compared performance of the enhanced model predictive control (eMPC) algorithm at two intensive care units in the United Kingdom and Belgium. The other study compared three glucose control algorithms-eMPC, Matias (the absolute glucose protocol), and Bath (the relative glucose change protocol)-in a single intensive care unit. Computer simulations utilized a virtual population of 56 critically ill subjects derived from routine data collected at four European surgical and medical intensive care units. Results: In agreement with the first clinical study, computer simulations reproduced the main finding and discriminated between the two intensive care units in terms of the sampling interval (1.3 h vs. 1.8 h, United Kingdom vs. Belgium; P < 0.01). Other glucose control metrics were comparable between simulations and clinical results. The principal outcome of the second study was also reproduced. The eMPC demonstrated better performance compared with the Matias and Bath algorithms as assessed by the time when plasma glucose was in the target range between 4.4 and 6.1 mmol/L (65% vs. 43% vs. 42% [P < 0.001], eMPC vs. Matias vs. Bath) without increasing the risk of severe hypoglycemia. Conclusions: Computer simulations may provide resource-efficient means for preclinical evaluation of algorithms for glycemic control in the critically ill.
Find related publications in this database (using NLM MeSH Indexing)
Adult -
Aged -
Aged, 80 and over -
Algorithms -
Biomedical Research - methods
Blood Glucose - analysis
Computer Simulation -
Critical Illness - therapy
Diabetes Complications - therapy
Diabetes Mellitus - diet therapy
Female -
Humans -
Hyperglycemia - prevention and control
Hypoglycemia - prevention and control
Hypoglycemic Agents - administration and dosage
Insulin - administration and dosage
Intensive Care Units -
Male -
Middle Aged -
Randomized Controlled Trials as Topic -
Retrospective Studies -
Risk Assessment - methods

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