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Observer-Based Plasma Glucose Prediction in Type I Diabetes

Author

Summary, in English

Recent years’ progress in the development of Continuous Glucose Monitors (CGM) has made rich well-sampled glucose data readily available. Reliable, frequent measurements are of outmost importance for the emerging closed-loop control of diabetic plasma glucose. However, these sensors do not measure the variable of primary interest - plasma glucose, but a delayed signal - the interstitial glucose. To overcome this difficulty this paper presents a novel model, merging a black-box model of the glucose dynamics together with a CGM sensor model. Using an observer the plasma glucose level is estimated and predicted. The outlined scheme was evaluated on one patient, with a significant sensor delay, from a clinical trial of the DIAdvisor European FP7-project. Using the raw signal from the CGM device together with meal and insulin infusion data predictions for 20, 40 and 60 min were produced for a breakfast meal. Results: RMSE of the prediction error was smaller than 26 mg/dl for validation data even for the longest prediction horizon and no points in the C/D/E zones in the pCGA evaluation. The model clearly outperformed the CGMS and the results indicate that the method could be used successfully.

Publishing year

2010

Language

English

Pages

1620-1625

Publication/Series

Proc. 2010 IEEE Multi-conference on Systems and Control (MSC2010), September 8-10, 2010, Yokohama, Japan.

Document type

Conference paper

Topic

  • Control Engineering

Conference name

2010 IEEE Multi-Conference on Systems and Control

Conference date

2010-09-08

Conference place

Yokohama, Japan

Status

Published

Project

  • DIAdvisor

Research group

  • LCCC