Multi-sensor data fusion for non-invasive continuous glucose monitoring

Measurements of impedance spectra used for non-invasive glucose monitoring are affected by a variety of perturbing factors such as temperature and sweat/moisture fluctuations, changes in perfusion, and body movements. In order to quantify and compensate for these perturbing effects, a multi-sensor approach was suggested. Different sensors are used, measuring signals correlated with blood glucose and perturbing factors, respectively. Here, we investigate how the multiple sensor data can be transformed into meaningful information about changes in the concentration of blood glucose. Linear regression models and variable selection (stepwise for/back-ward and lasso) techniques are used to derive generally valid models allowing for the estimation of blood glucose concentration. We find that over-fitting is best avoided by using a special version of cross-validated prediction error as the model selection criterion. Indeed, the resulting models are reasonably small, plausible, and comprise an additive adjustment for the experimental run.

[1]  Yu Feldman,et al.  Non-invasive glucose monitoring in patients with diabetes: a novel system based on impedance spectroscopy. , 2006, Biosensors & bioelectronics.

[2]  R. Tibshirani Regression Shrinkage and Selection via the Lasso , 1996 .

[3]  Mark S. Talary,et al.  In vivo life sign application of dielectric spectroscopy and non-invasive glucose monitoring , 2007 .

[4]  P Kann,et al.  Impact of environmental temperature on skin thickness and microvascular blood flow in subjects with and without diabetes. , 2006, Diabetes technology & therapeutics.

[5]  A Caduff,et al.  First human experiments with a novel non-invasive, non-optical continuous glucose monitoring system. , 2003, Biosensors & bioelectronics.

[6]  L Heinemann,et al.  Glucose Clamps with the Biostator: A Critical Reappraisal , 1994, Hormone and metabolic research = Hormon- und Stoffwechselforschung = Hormones et metabolisme.

[7]  Trevor Hastie,et al.  The Elements of Statistical Learning , 2001 .

[8]  A. Caduff,et al.  Impact of posture and fixation technique on impedance spectroscopy used for continuous and noninvasive glucose monitoring. , 2004, Diabetes technology & therapeutics.

[9]  J. Franklin,et al.  The elements of statistical learning: data mining, inference and prediction , 2005 .

[10]  A. Caduff,et al.  Multisensor Concept for non-invasive Physiological Monitoring , 2007, 2007 IEEE Instrumentation & Measurement Technology Conference IMTC 2007.

[11]  R. Tibshirani,et al.  Least angle regression , 2004, math/0406456.

[12]  Robert Tibshirani,et al.  The Elements of Statistical Learning: Data Mining, Inference, and Prediction, 2nd Edition , 2001, Springer Series in Statistics.

[13]  H. Zou The Adaptive Lasso and Its Oracle Properties , 2006 .