Article ID Journal Published Year Pages File Type
558366 Biomedical Signal Processing and Control 2006 14 Pages PDF
Abstract

Tight glycemic control has been shown to reduce mortality by 29–45% in critical care. Targeted glycemic control in critical care patients can be achieved by frequent fitting and prediction of a patient's modelled insulin sensitivity index, SI. This parameter can vary significantly in the critically ill due to the evolution of their condition and drug therapy.A three-dimensional stochastic model of SI variability is constructed using 18 long-term retrospective critical care patients’ data. Given SI for an hour, the stochastic model returns the probability distribution of SI for the next hour. Consequently, the resulting glycemic distribution 1 h following a known insulin and/or nutrition intervention can be derived. Knowledge of this distribution enables more accurate predictions for glycemic control with pre-determined likelihood based on confidence intervals.Clinical control data from eight independent critical care glycemic control trials were re-evaluated using the stochastic model. The stochastic model successfully captures the identified SI variation trend, accounting for 84% of measurements over time within the 0.90 confidence band, and 45% with a 0.50 confidence. Incorporating the stochastic model into the numerical glucose–insulin dynamics model, a virtual cohort was generated, imitating typical glucose–insulin dynamics in a critically ill population. Control trial simulations on this virtual cohort showed that the 0.90 confidence intervals cover 88% of measurements, and the 0.5 confidence intervals cover 46%. These results indicate that the stochastic model provides first order estimate of insulin sensitivity, SI, variation and resulting glycemic variation in critical care.

Related Topics
Physical Sciences and Engineering Computer Science Signal Processing
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