Title :
Continuous glucose monitors and tight glycaemic control in intensive care: An in-silico proof of concept analysis
Author :
Signal, Matthew ; Pretty, Christopher G. ; Le Compte, Aaron ; Shaw, Geoffrey M. ; Chase, J. Geoffrey
Author_Institution :
Centre for Bioeng., Univ. of Canterbury, Christchurch, New Zealand
Abstract :
Tight glycaemic control (TGC) in critical care has shown distinct benefits, but has also proven difficult to obtain. The risk of severe hypoglycaemia (<; 2.2mmol/L) raises significant concerns for safety. Continuous Glucose Monitors (CGMs) offer frequent, though potentially noisy, automated measurement and thus the possibility of using them for early detection and intervention of hypoglycaemic events. This in-silico study investigates the potential of CGM devices to maintain control, prevent hypoglycaemia and reduce clinical effort. Retrospective clinical data from the SPRINT TGC study covering 26 patients was used with clinically validated metabolic system models and 3 different stochastic noise models (two Gaussian and one first-order autoregressive.) The noisy, virtual CGM blood glucose (BG) values were filtered and used to drive the SPRINT TGC protocol. A simple threshold alarm was used to trigger glucose interventions to avert potential hypoglycaemia. Monte Carlo analysis was used to get robust results from the stochastic noise models. Using SPRINT with simulated CGM noise, the BG time in the 4.4-6.1mmol/L band was reduced no more than 3% from the 45.2% obtained with glucometer sensors. The number of patients experiencing severe hypoglycaemia was reduced from 12 (baseline) to as low as 8. Duration of hypoglycaemic events was reduced by 19-65%. Finally, nurse workload was reduced by approximately 20 minutes per patient, per day. The results of this proof of concept study justify a pilot clinical study for verification in a clinical setting.
Keywords :
Monte Carlo methods; health care; medical control systems; safety; stochastic processes; sugar; virtual reality; Monte Carlo analysis; SPRINT TGC; automated measurement; concept analysis; continuous glucose monitors; critical care; hypoglycaemia; in-silico proof; intensive care; retrospective clinical data; safety; stochastic noise models; tight glycaemic control; virtual CGM blood glucose; CGM; Hypoglycaemia; alarm; blood glucose; continuous glucose monitor; glycaemic control; sensor;
Conference_Titel :
Control 2010, UKACC International Conference on
Conference_Location :
Coventry
Electronic_ISBN :
978-1-84600-038-6
DOI :
10.1049/ic.2010.0414