Abstract

At present, the mainstream blood glucose detection methods are invasive, which will cause harm to the human body and make it inconvenient to measure. The non-contact measurement method can avoid these problems. In this paper, a non-contact blood glucose detection method based on a near-infrared camera is proposed. Blood glucose has a strong absorption capacity in the near-infrared band, and other components in blood (water, hemoglobin, etc.) have different absorption characteristics in this band compared with blood glucose. Therefore, in this method, we realize blood glucose detection by receiving the near-infrared light reflected back after blood glucose absorption. We extracted 26 pulse wave features from the pulse wave and analyzed 6 that were highly correlated with blood glucose. Then, four kinds of machine learning algorithms (PCR, PLS, SVR, RFR) were used to build models respectively, and the RFR with the best performance was selected to build the final blood glucose prediction model. Finally, the experimental results are analyzed by Clark error grid analysis, which shows that the proposed method is in good agreement with the reference glucose monitor. Compared with traditional invasive blood glucose detection methods, the non-contact blood glucose detection method has more application prospects.

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