Hyperglycaemia in critically ill patients increases the risk of further complications
and mortality. This paper introduces a model capable of capturing the essential
glucose and insulin kinetics in patients from retrospective data gathered in an
Intensive Care Unit (ICU). The model uses two time-varying patient specific
parameters for glucose effectiveness and insulin sensitivity. The model is
mathematically reformulated in terms of integrals to enable a novel method for
identification of patient specific parameters. The method was tested on long-term
blood glucose recordings from 17 ICU patients, producing 4% average error, which is
within the sensor error. One-hour forward predictions of blood glucose data proved
acceptable with an error of 2-11%. All identified parameter values were within
reported physiological ranges. The parameter identification method is more accurate
and significantly faster computationally than commonly used non-linear, non-convex
methods. These results verifl the model's ability to capture long-term observed
glucose-insulin dynamics in hyperglycernic ICU patients, as well as the fitting method
developed. Applications of the model and parameter identification method for
automated control of blood glucose and medical decision support are discussed
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