• Spectroscopy and Spectral Analysis
  • Vol. 34, Issue 2, 494 (2014)
LI Qing-bo* and HUANG Zheng-wei
Author Affiliations
  • [in Chinese]
  • show less
    DOI: 10.3964/j.issn.1000-0593(2014)02-0494-04 Cite this Article
    LI Qing-bo, HUANG Zheng-wei. The Net Analyte Preprocessing Combined with Radial Basis Partial Least Squares Regression Applied in Noninvasive Measurement of Blood Glucose[J]. Spectroscopy and Spectral Analysis, 2014, 34(2): 494 Copy Citation Text show less

    Abstract

    In order to improve the prediction accuracy of quantitative analysis model in the near-infrared spectroscopy of blood glucose, this paper, by combining net analyte preprocessing(NAP) algorithm and radial basis functions partial least squares(RBFPLS) regression, builds a nonlinear model building method which is suitable for glucose measurement of human, named as NAP-RBFPLS. First, NAP is used to pre-process the near-infrared spectroscopy of blood glucose, in order to effectively extract the information which only relates to glucose signal from the original near-infrared spectra, so that it could effectively weaken the occasional correlation problems of the glucose changes and the interference factors which are caused by the absorption of water, albumin, hemoglobin, fat and other components of the blood in human body, the change of temperature of human body, the drift of measuring instruments, the changes of measuring environment, and the changes of measuring conditions; and then a nonlinear quantitative analysis model is built with the near-infrared spectroscopy data after NAP, in order to solve the nonlinear relationship between glucose concentrations and near-infrared spectroscopy which is caused by body strong scattering. In this paper, the new method is compared with other three quantitative analysis models building on partial least squares(PLS), net analyte preprocessing partial least squares(NAP-PLS) and RBFPLS respectively. At last, the experimental results show that the nonlinear calibration model, developed by combining NAP algorithm and RBFPLS regression, which was put forward in this paper, greatly improves the prediction accuracy of prediction sets, and what has been proved in this paper is that the nonlinear model building method will produce practical applications for the research of non-invasive detection techniques on human glucose concentrations.
    LI Qing-bo, HUANG Zheng-wei. The Net Analyte Preprocessing Combined with Radial Basis Partial Least Squares Regression Applied in Noninvasive Measurement of Blood Glucose[J]. Spectroscopy and Spectral Analysis, 2014, 34(2): 494
    Download Citation