Regularised Model Identification Improves Accuracy of Multisensor Systems for Noninvasive Continuous Glucose Monitoring in Diabetes Management

Joint Authors

Cobelli, Claudio
Zanon, Mattia
Talary, Mark S.
Sparacino, Giovanni
Facchinetti, Andrea
Caduff, Andreas

Source

Journal of Applied Mathematics

Issue

Vol. 2013, Issue 2013 (31 Dec. 2013), pp.1-10, 10 p.

Publisher

Hindawi Publishing Corporation

Publication Date

2013-07-16

Country of Publication

Egypt

No. of Pages

10

Main Subjects

Mathematics

Abstract EN

Continuous glucose monitoring (CGM) by suitable portable sensors plays a central role in the treatment of diabetes, a disease currently affecting more than 350 million people worldwide.

Noninvasive CGM (NI-CGM), in particular, is appealing for reasons related to patient comfort (no needles are used) but challenging.

NI-CGM prototypes exploiting multisensor approaches have been recently proposed to deal with physiological and environmental disturbances.

In these prototypes, signals measured noninvasively (e.g., skin impedance, temperature, optical skin properties, etc.) are combined through a static multivariate linear model for estimating glucose levels.

In this work, by exploiting a dataset of 45 experimental sessions acquired in diabetic subjects, we show that regularisation-based techniques for the identification of the model, such as the least absolute shrinkage and selection operator (better known as LASSO), Ridge regression, and Elastic-Net regression, improve the accuracy of glucose estimates with respect to techniques, such as partial least squares regression, previously used in the literature.

More specifically, the Elastic-Net model (i.e., the model identified using a combination of l1 and l2 norms) has the best results, according to the metrics widely accepted in the diabetes community.

This model represents an important incremental step toward the development of NI-CGM devices effectively usable by patients.

American Psychological Association (APA)

Zanon, Mattia& Sparacino, Giovanni& Facchinetti, Andrea& Talary, Mark S.& Caduff, Andreas& Cobelli, Claudio. 2013. Regularised Model Identification Improves Accuracy of Multisensor Systems for Noninvasive Continuous Glucose Monitoring in Diabetes Management. Journal of Applied Mathematics،Vol. 2013, no. 2013, pp.1-10.
https://search.emarefa.net/detail/BIM-498621

Modern Language Association (MLA)

Zanon, Mattia…[et al.]. Regularised Model Identification Improves Accuracy of Multisensor Systems for Noninvasive Continuous Glucose Monitoring in Diabetes Management. Journal of Applied Mathematics No. 2013 (2013), pp.1-10.
https://search.emarefa.net/detail/BIM-498621

American Medical Association (AMA)

Zanon, Mattia& Sparacino, Giovanni& Facchinetti, Andrea& Talary, Mark S.& Caduff, Andreas& Cobelli, Claudio. Regularised Model Identification Improves Accuracy of Multisensor Systems for Noninvasive Continuous Glucose Monitoring in Diabetes Management. Journal of Applied Mathematics. 2013. Vol. 2013, no. 2013, pp.1-10.
https://search.emarefa.net/detail/BIM-498621

Data Type

Journal Articles

Language

English

Notes

Includes bibliographical references

Record ID

BIM-498621