Abstracts

Insulin kinetics and the Neonatal Intensive Care InsulinNutritionGlucose (NICING) model

by JG Chase




Institution: University of Canterbury
Department:
Year: 2017
Keywords: Physiological modelling; Glucose; Insulin; Premature infant; Glycaemic control; Field of Research::11 - Medical and Health Sciences::1103 - Clinical Sciences::110306 - Endocrinology; Field of Research::11 - Medical and Health Sciences::1103 - Clinical Sciences::110310 - Intensive Care
Posted: 02/01/2018
Record ID: 2198212
Full text PDF: http://hdl.handle.net/10092/14539


Abstract

Background: Models of human glucoseinsulin physiology have been developed for a range of uses, with similarly different levels of complexity and accuracy. STAR (Stochastic Targeted) is a model-based approach to glycaemic control. Elevated blood glucose concentrations (hyperglycaemia) are a common complication of stress and prematurity in very premature infants, and have been associated with worsened outcomes and higher mortality. This research identifies and validates the model parameters for model-based glycaemic control in neonatal intensive care. Methods: C-peptide, plasma insulin, and BG from a cohort of 41 extremely pre-term (median age 27.2 [26.228.7] weeks) and very low birth weight infants (median birth weight 839 [7351000] g) are used alongside C-peptide kinetic models to identify model parameters associated with insulin kinetics in the NICING (Neonatal Intensive Care InsulinNutritionGlucose) model. A literature analysis is used to determine models of kidney clearance and body fluid compartment volumes. The full, final NICING model is validated by fitting the model to a cohort of 160 glucose, insulin, and nutrition data records from extremely premature infants from two different NICUs (neonatal intensive care units). Results: Six model parameters related to insulin kinetics were identified. The resulting NICING model is more physiologically descriptive than prior model iterations, including clearance pathways of insulin via the liver and kidney, rather than a lumped parameter. In addition, insulin diffusion between plasma and interstitial spaces is evaluated, with differences in distribution volume taken into consideration for each of these spaces. The NICING model was shown to fit clinical data well, with a low model fit error similar to that of previous model iterations. Conclusions: Insulin kinetic parameters have been identified, and the NICING model is presented for glycaemic control neonatal intensive care. The resulting NICING model is more complex and physiologically relevant, with no loss in bedside-identifiability or ability to capture and predict metabolic dynamics.