Background: Impedance spectroscopy has been shown to be a candidate for noninvasive continuous glucose monitoring in humans. However, in addition to glucose, other factors also have effects on impedance characteristics of the skin and underlying tissue. Method: Impedance spectra were summarized through a principal component analysis and relevant variables were identified with Akaike's information criterion. In order to model blood glucose, a linear least-squares model was used. A Monte Carlo simulation was applied to examine the effects of personalizing models. Results: The principal component analysis was able to identify two major effects in the impedance spectra: a blood glucose-related process and an equilibration process related to moisturization of the skin and underlying tissue. With a global linear least-squares model, a coefficient of determination (R2) of 0.60 was achieved, whereas the personalized model reached an R2 of 0.71. The Monte Carlo simulation proved a significant advantage of personalized models over global models. Conclusion: A principal component analysis is useful for extracting glucose-related effects in the impedance spectra of human skin. A linear global model based on Solianis Multisensor data yields a good predictive power for blood glucose estimation. However, a personalized linear model still has greater predictive power. © Diabetes Technology Society.
CITATION STYLE
Mueller, M., Talary, M. S., Falco, L., De Feo, O., Stahel, W. A., & Caduff, A. (2011). Data processing for noninvasive continuous glucose monitoring with a multisensor device. Journal of Diabetes Science and Technology, 5(3), 694–702. https://doi.org/10.1177/193229681100500324
Mendeley helps you to discover research relevant for your work.