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Development of Robust Calibration Models Using Support Vector Machines for Spectroscopic Monitoring of Blood Glucose
- Source :
- Analytical Chemistry. 82:9719-9726
- Publication Year :
- 2010
- Publisher :
- American Chemical Society (ACS), 2010.
-
Abstract
- Sample-to-sample variability has proven to be a major challenge in achieving calibration transfer in quantitative biological Raman spectroscopy. Multiple morphological and optical parameters, such as tissue absorption and scattering, physiological glucose dynamics and skin heterogeneity, vary significantly in a human population introducing non-analyte specific features into the calibration model. In this paper, we show that fluctuations of such parameters in human subjects introduce curved (non-linear) effects in the relationship between the concentrations of the analyte of interest and the mixture Raman spectra. To account for these curved effects, we propose the use of support vector machines (SVM) as a non-linear regression method over conventional linear regression techniques such as partial least squares (PLS). Using transcutaneous blood glucose detection as an example, we demonstrate that application of SVM enables a significant improvement (at least 30%) in cross-validation accuracy over PLS when measurements from multiple human volunteers are employed in the calibration set. Furthermore, using physical tissue models with randomized analyte concentrations and varying turbidities, we show that the fluctuations in turbidity alone causes curved effects which can only be adequately modeled using non-linear regression techniques. The enhanced levels of accuracy obtained with the SVM based calibration models opens up avenues for prospective prediction in humans and thus for clinical translation of the technology.
- Subjects :
- Blood Glucose
Analyte
education.field_of_study
Calibration (statistics)
Chemistry
Population
Analytical chemistry
Regression analysis
Spectrum Analysis, Raman
Article
Analytical Chemistry
Support vector machine
Nonlinear system
Artificial Intelligence
Calibration
Linear regression
Humans
Least-Squares Analysis
Biological system
education
Nonlinear regression
Subjects
Details
- ISSN :
- 15206882 and 00032700
- Volume :
- 82
- Database :
- OpenAIRE
- Journal :
- Analytical Chemistry
- Accession number :
- edsair.doi.dedup.....ff543de0a08392395b1e68f1080e3c6c