Sparse group LASSO and nonlinear machine learning for frequency-feature optimization in noninvasive blood glucose monitoring via bioimpedance spectroscopy.

Journal: The Review of scientific instruments
Published Date:

Abstract

Diabetic patients need to test their blood glucose levels (BGL) frequently; however, traditional methods of blood collection and testing cause great pain to patients. In order to improve the quality of life of patients, this paper develops a noninvasive, portable, and continuous monitoring blood glucose detection system, which uses the latest bioimpedance integrated circuit to obtain the bioimpedance spectrum (BIS) of the inner forearm of the human body. The obtained BIS covers most of the frequencies up to 1 MHz. A BGL estimation model is developed using sparse group least absolute shrinkage and selection operator combined with a Gaussian kernel function support vector regression to select the optimal frequencies and features for BIS. The correlations between different frequencies and features and BGL are investigated. We test our system on a collected dataset of clinical subjects, and the results show that the average mean absolute relative difference for all subjects is 9.90%, the root mean square error is 14.81 mg/dl, and the mean absolute error is 11.75 mg/dl. 100% of the estimates fall in zones A and B of the Clarke error grid. Preliminary results show that the use of BIS integrated circuits in combination with machine learning techniques promises to enable portable, noninvasive, continuous monitoring of BGLs.

Authors

  • Zhongwei Lu
    School of Electronic Engineering and Automation, Guilin University of Electronic Technology, Guilin 541004, China.
  • Tian Zhou
    Jingtai Technology Co. Ltd Floor 4, No. 9, Yifenghua Industrial Zone, 91 Huaning Road, Longhua District Shenzhen Guangdong Province 518109 China.
  • Cong Hu
    School of Artificial Intelligence and Computer Science, Jiangnan University, Wuxi 214122, China; Jiangsu Provincial Engineering Laboratory of Pattern Recognition and Computational Intelligence, Jiangnan University, Wuxi 214122, China.
  • Chuanpei Xu
    School of Electronic Engineering and Automation, Guilin University of Electronic Technology, Guilin 541004, China.
  • Shike Long
    School of Electronic Engineering and Automation, Guilin University of Electronic Technology, Guilin 541004, China; School of Aeronautics and Astronautics, Guilin University of Aerospace technology, Guilin 541004, China. Electronic address: 2018087@guat.edu.cn.
  • Shaorong Zhang
    School of Electronic Information and Automation, Guilin University of Aerospace Technology, Guilin 541004, China.
  • Benxin Zhang
    School of Electronic Engineering and Automation, Guilin University of Electronic Technology, Guilin 541004, China.