Research on Near-Infrared Non-Invasive Blood Glucose Detection Technology

Diabetes is a chronic disease posing significant threats to global public health, where precision blood glucose monitoring serves as a cornerstone of effective disease management. While invasive blood sampling techniques remain prevalent in clinical practice, their inherent drawbacks—including patie...

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Main Author: Wang Jinshuo
Format: Article
Language:English
Published: EDP Sciences 2025-01-01
Series:MATEC Web of Conferences
Online Access:https://www.matec-conferences.org/articles/matecconf/pdf/2025/04/matecconf_menec2025_04020.pdf
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author Wang Jinshuo
author_facet Wang Jinshuo
author_sort Wang Jinshuo
collection DOAJ
description Diabetes is a chronic disease posing significant threats to global public health, where precision blood glucose monitoring serves as a cornerstone of effective disease management. While invasive blood sampling techniques remain prevalent in clinical practice, their inherent drawbacks—including patient discomfort and potential infection risks— have positioned non-invasive glucose detection as a major focus of scientific research. This study is based on near-infrared spectroscopy technology (780- 2500nm) to systematically analyze the characteristic absorption of hydrogen-containing functional groups, such as C-H and O-H in glucose molecules. The detection wavelength selection (1500-1800nm) and detection site (fingertip) were optimized, and the applicability of diffuse reflection and transmission detection modes was compared. In response to the complex and easily interfered characteristics of near-infrared spectral signals, an innovative BP neural network algorithm is introduced to construct a prediction model. By utilizing its powerful nonlinear mapping ability and adaptive learning characteristics, the accuracy of blood glucose concentration prediction is effectively improved. The research results indicate that this method has the advantages of noninvasiveness, convenience, and low cost, but it also faces technical challenges such as individual differences and environmental interference.
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spelling doaj-art-0dac8b5bdc81414080f79b9b934b67bf2025-08-20T02:46:25ZengEDP SciencesMATEC Web of Conferences2261-236X2025-01-014100402010.1051/matecconf/202541004020matecconf_menec2025_04020Research on Near-Infrared Non-Invasive Blood Glucose Detection TechnologyWang Jinshuo0International Business School, Henan UniversityDiabetes is a chronic disease posing significant threats to global public health, where precision blood glucose monitoring serves as a cornerstone of effective disease management. While invasive blood sampling techniques remain prevalent in clinical practice, their inherent drawbacks—including patient discomfort and potential infection risks— have positioned non-invasive glucose detection as a major focus of scientific research. This study is based on near-infrared spectroscopy technology (780- 2500nm) to systematically analyze the characteristic absorption of hydrogen-containing functional groups, such as C-H and O-H in glucose molecules. The detection wavelength selection (1500-1800nm) and detection site (fingertip) were optimized, and the applicability of diffuse reflection and transmission detection modes was compared. In response to the complex and easily interfered characteristics of near-infrared spectral signals, an innovative BP neural network algorithm is introduced to construct a prediction model. By utilizing its powerful nonlinear mapping ability and adaptive learning characteristics, the accuracy of blood glucose concentration prediction is effectively improved. The research results indicate that this method has the advantages of noninvasiveness, convenience, and low cost, but it also faces technical challenges such as individual differences and environmental interference.https://www.matec-conferences.org/articles/matecconf/pdf/2025/04/matecconf_menec2025_04020.pdf
spellingShingle Wang Jinshuo
Research on Near-Infrared Non-Invasive Blood Glucose Detection Technology
MATEC Web of Conferences
title Research on Near-Infrared Non-Invasive Blood Glucose Detection Technology
title_full Research on Near-Infrared Non-Invasive Blood Glucose Detection Technology
title_fullStr Research on Near-Infrared Non-Invasive Blood Glucose Detection Technology
title_full_unstemmed Research on Near-Infrared Non-Invasive Blood Glucose Detection Technology
title_short Research on Near-Infrared Non-Invasive Blood Glucose Detection Technology
title_sort research on near infrared non invasive blood glucose detection technology
url https://www.matec-conferences.org/articles/matecconf/pdf/2025/04/matecconf_menec2025_04020.pdf
work_keys_str_mv AT wangjinshuo researchonnearinfrarednoninvasivebloodglucosedetectiontechnology