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Estimation of Future Glucose Concentrations with Subject-specific Recursive Linear Models

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Date 2009 Apr 7
PMID 19344199
Citations 40
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Abstract

Background: Estimation of future glucose concentrations is a crucial task for diabetes management. Predicted glucose values can be used for early hypoglycemic/hyperglycemic alarms or for adjustment of insulin injections or insulin infusion rates of manual or automated pumps. Continuous glucose monitoring (CGM) technologies provide glucose readings at a high frequency and consequently detailed insight into the subject's glucose variations. The objective of this research is to develop reliable subject-specific glucose prediction models using CGM data.

Methods: Two separate patient databases collected under hospitalized (disturbance-free) and normal daily life conditions are used for validation of the proposed glucose prediction algorithm. Both databases consist of glucose concentration data collected at 5-min intervals using a CGM device. Using time-series analysis, low-order linear models are developed from patients' own CGM data. The time-series models are integrated with recursive identification and change detection methods, which enables dynamic adaptation of the model to inter-/intra-subject variability and glycemic disturbances. Prediction performance is evaluated in terms of glucose prediction error and Clarke Error Grid analysis (CG-EGA).

Results: Prediction errors are significantly reduced with recursive identification of the models, and predictions are further improved with inclusion of a parameter change detection method. CG-EGA analysis results in accurate readings of 90% or more.

Conclusions: Subject-specific glucose prediction strategy has been developed. Including a change detection method to the recursive algorithm improves the prediction accuracy. The proposed modeling algorithm with small number of parameters is a good candidate for installation in portable devices for early hypoglycemic/hyperglycemic alarms and for closing the glucose regulation loop with an insulin pump.

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References
1.
Klonoff D . Continuous glucose monitoring: roadmap for 21st century diabetes therapy. Diabetes Care. 2005; 28(5):1231-9. DOI: 10.2337/diacare.28.5.1231. View

2.
Clarke W, Cox D, Gonder-Frederick L, Carter W, POHL S . Evaluating clinical accuracy of systems for self-monitoring of blood glucose. Diabetes Care. 1987; 10(5):622-8. DOI: 10.2337/diacare.10.5.622. View

3.
Buckingham B . Analysis: dawn of real-time continuous glucose sensing. Diabetes Technol Ther. 2003; 5(3):381-3. DOI: 10.1089/152091503765691875. View

4.
Yamaguchi M, Kaseda C, Yamazaki K, Kobayashi M . Prediction of blood glucose level of type 1 diabetics using response surface methodology and data mining. Med Biol Eng Comput. 2006; 44(6):451-7. DOI: 10.1007/s11517-006-0049-x. View

5.
Knobbe E, Buckingham B . The extended Kalman filter for continuous glucose monitoring. Diabetes Technol Ther. 2005; 7(1):15-27. DOI: 10.1089/dia.2005.7.15. View