|
|
|
|
|
|
Research on Intelligent Algorithm of Near-Infrared Spectroscopy
Non-Invasive Detection Based on GA-SVR Method |
YU Xin-ran1, 3, ZHAO Peng2, HUAN Ke-wei2, LI Ye2, JIANG Zhi-xia1, 3, ZHOU Lin-hua1, 3* |
1. School of Mathematics and Statistics,Changchun University of Science and Technology,Changchun 130022, China
2. School of Physics,Changchun University of Science and Technology,Changchun 130022, China
3. Mathematical Experiment Demonstration Center of Changchun University of Science and Technology,Changchun 130022, China
|
|
|
Abstract In recent years, non-invasive detection based on near-infrared spectroscopy and artificial intelligence algorithms has received much attention in medicine and biology due to its safety, non-invasiveness, and high efficiency. One key issue is selecting effective input features for intelligent regression models from wide-band near-infrared spectroscopy. This paper establishes a non-invasive near-infrared blood glucose concentration intelligent prediction model by combining near-infrared spectroscopy, genetic algorithm, and support vector regression (GA-SVR) using blood glucose concentration detection as an example. Firstly, according to the OGTT experimental rules, non-invasive dynamic blood near-infrared spectroscopy and corresponding blood glucose concentrations of volunteers were collected. The optimal near-infrared feature wavelength combination was further determined based on a genetic algorithm. Finally, the support vector machine regression model was established to achieve blood glucose concentration prediction. In this paper, comparative experiments were designed to compare the proposed method with the genetic algorithm and multi-layer perceptron regression (GA-MLPR), partial least squares regression (GA-PLSR), and random forest regression (GA-RFR). The experimental results show that the proposed GA-SVR model has the best prediction performance, and the correlation coefficient of the test set is increased by 44% compared with GA-PLSR, the correlation coefficient reaches 99.97%, and the mean square error is 0.000 97. The study shows that the proposed GA-SVR can achieve effective feature selection of near-infrared spectroscopy data, verifying the feasibility of intelligent algorithms for feature selection. The excellent performance of this feature selection model provides a new approach to non-invasive detection.
|
Received: 2023-08-17
Accepted: 2024-03-12
|
|
Corresponding Authors:
ZHOU Lin-hua
E-mail: zhoulh@cust.edu.cn
|
|
[1] Awelisah Y M, Li G, Lin L. Infrared Physics & Technology, 2022, 121: 104049.
[2] Peng X, Yan Y X, Liu H. Optical Fiber Technology, 2022, 68: 102822.
[3] Heise H M, Delbeck S, Marbach R. Biosensors, 2021, 11(3): 64.
[4] Sun J, Pang R, Chen S, et al. Journal of Innovative Optical Health Sciences, 2021, 14(06): 2130006.
[5] Devezas M A M. Journal of Neuroimaging, 2021, 31(4): 641.
[6] Dahne C, Gross D. US Patent: 4655225, 1987.
[7] Morales G, Sheppard J W, Logan R D, et al. Remote Sensing. 2021; 13(18): 3649.
[8] YAN Hong-mei, HE Ming-yi(闫红梅,何明一). Journal of Signal Processing(信号处理), 2023, 39(1): 1.
[9] ZHANG Jin, HU Yun, ZHOU Luo-xiong, et al(张 进, 胡 芸, 周罗雄,等). Journal of Instrumental Analysis(分析测试学报), 2020, 39(10): 1196.
[10] Kasim S, Malek S, Ibrahim K S, et al. European Heart Journal, 2021, 42(Supplement_1): 3069.
[11] Qian W, Xiong Y, Yang J, et al. Information Sciences, 2022, 582: 38.
[12] Mostafa R R, Ewees A A, Ghoniem R M, et al. Knowledge-Based Systems, 2022, 246: 108743.
[13] Shao R, Zhang G, Gong X. Photonics Research, 2022, 10(8): 1868.
[14] El-Nemr M, Afifi M, Rezk H, et al. Mathematics, 2021, 9(5): 576.
[15] Wei Y, Chen Z, Zhao C, et al. Ocean Engineering, 2023, 270: 113659.
[16] Leardi R. Journal of Chemometrics, 2000, 14: 643.
[17] LI Hao-guang, YU Yun-hua, PANG Yan, et al(李浩光, 于云华, 逄 燕,等). Spectroscopy and Spectral Analysis(光谱学与光谱分析), 2021, 41(8): 2437.
[18] An Y, Xue H. Pattern Recognition, 2022, 121: 108195.
[19] MA Shuang, PU Bao-ming(马 爽, 蒲宝明). Computer Systems & Applications(计算机系统应用), 2016,25(8): 120.
[20] Oyehan T A, Alade I O, Bagudu A, et al. Computers in Biology and Medicine, 2018, 98: 85.
[21] LI Meng-ze, JI Zhong, CHENG Jin-xiu(李孟泽, 季 忠, 程锦绣). Journal of Biomedical Engineering(生物医学工程学杂志), 2021,38 (2): 342.
[22] Yadav J, Rani A, Singh V, et al. Near-Infrared LED Based Non-Invasive Blood Glucose Sensor, 2014 International Conference on Signal Processing and Integrated Networks (SPIN). IEEE, 2014: 591.
|
[1] |
TANG Yan1, 3, WU Jia1, XU Jian-jie2*, GUO Teng-xiao2, HU Jian-bo1, 4, ZHANG Hang4, LIU Yong-gang5*, YANG Yun-fan4. Analysis of Near-Infrared Anharmonic Vibration Spectra of Amino Acids
Using Density Functional Theory[J]. SPECTROSCOPY AND SPECTRAL ANALYSIS, 2024, 44(11): 3149-3156. |
[2] |
CHEN Xiao-yu1, NING Xiao-dong1, LI Xin-yi2, DU Ya-xin1, KONG De-ming2*. Classification and Identification of Oil-in-Water Light Oil Emulsions Based on LIF[J]. SPECTROSCOPY AND SPECTRAL ANALYSIS, 2024, 44(11): 3064-3068. |
[3] |
WANG Hong-en, FENG Guo-hong*, XU Hua-dong, ZHANG Run-ze. Identification of Blueberry Ripeness Based on Visible-Near Infrared
Spectroscopy and Deep Forest[J]. SPECTROSCOPY AND SPECTRAL ANALYSIS, 2024, 44(11): 3280-3286. |
[4] |
ZHAO Gao-kun1, LI Jia-chen2, WU Yu-ping1*, LI Jun-hui2, KONG Guang-hui1, ZHANG Guang-hai1, YAO Heng1, LI Wei1, GAO Yan-lan1. Application of Near-Infrared Spectroscopy to Analyze the Similarity of Cigar Tobacco From Different Origins[J]. SPECTROSCOPY AND SPECTRAL ANALYSIS, 2024, 44(11): 3195-3198. |
[5] |
QU Dong-ming, ZHANG Zi-yi, LIANG Jun-xuan, LIAO Hai-wen, YANG Guang*. Classification of Copper Alloys Based on Microjoule High Repetition
Laser-Induced Breakdown Spectra[J]. SPECTROSCOPY AND SPECTRAL ANALYSIS, 2024, 44(11): 3222-3227. |
[6] |
WANG Xue1, 2, 4, WANG Zi-wen1, ZHANG Guang-yue1, MA Tie-min1, CHEN Zheng-guang1, YI Shu-juan3, 4, WANG Chang-yuan2. A Universal Model for Quantitative Analysis of Near-Infrared
Spectroscopy Based on Transfer Component Analysis[J]. SPECTROSCOPY AND SPECTRAL ANALYSIS, 2024, 44(11): 3213-3221. |
[7] |
DENG Zhi-gang1, 2, ZHAO Hong-mei2*, ZHA Wen-xian2, TANG Lin-ling2, TIAN Ye2. A Hyperspectral Vegetation Feature Band Selection Based on Quantum
Genetic Spectral Angle Mapper Algorithm[J]. SPECTROSCOPY AND SPECTRAL ANALYSIS, 2024, 44(11): 3258-3265. |
[8] |
MAO Li-yu1, 2, BIN Bin1*, ZHANG Hong-ming2*, LÜ Bo2, 3*, GONG Xue-yu1, YIN Xiang-hui1, SHEN Yong-cai4, FU Jia2, WANG Fu-di2, HU Kui5, SUN Bo2, FAN Yu2, ZENG Chao2, JI Hua-jian2, 3, LIN Zi-chao2, 3. Development of Wheat Component Detector Based on Near Infrared
Spectrum[J]. SPECTROSCOPY AND SPECTRAL ANALYSIS, 2024, 44(10): 2768-2777. |
[9] |
JIANG Xiao-gang1, 2, HE Cong1, 2, JIANG Nan3, LI Li-sha1, ZHU Ming-wang1, LIU Yan-de1, 2*. Discrimination of Apple Origin and Prediction of SSC Based on
Multi-Model Decision Fusion[J]. SPECTROSCOPY AND SPECTRAL ANALYSIS, 2024, 44(10): 2812-2818. |
[10] |
MU Liang-yin1, ZHAO Zhong-gai1*, JIN Sai2, SUN Fu-xin2, LIU Fei1. Near-Infrared Prediction Models for Quality Parameters of Culture Broth in Seed Tank During Citric Acid Fermentation[J]. SPECTROSCOPY AND SPECTRAL ANALYSIS, 2024, 44(10): 2819-2826. |
[11] |
FANG Xiao-meng, WANG Hua-lai, XU Hui, HUANG Meng-qiang, LIU Xiang*. Identification and Detection of Multi-Component Trace Gases Based on Near-Infrared TDLAS Technology Based on SVM[J]. SPECTROSCOPY AND SPECTRAL ANALYSIS, 2024, 44(10): 2909-2915. |
[12] |
GUO Zhi-qiang1, ZHANG Bo-tao1, ZENG Yun-liu2*. Study on Sugar Content Detection of Kiwifruit Using Near-Infrared
Spectroscopy Combined With Stacking Ensemble Learning[J]. SPECTROSCOPY AND SPECTRAL ANALYSIS, 2024, 44(10): 2932-2940. |
[13] |
ZHANG Wei-wei, QU Yi, WANG Qiang, LÜ Ri-qin, GU Hai-yang, SHAO Juan, SUN Yan-hui*. Research on the Synchronous Fluorescence Spectroscopy Combined With Support Vector Machines for Intelligent Discrimination of Milk
Adulteration[J]. SPECTROSCOPY AND SPECTRAL ANALYSIS, 2024, 44(09): 2428-2433. |
[14] |
LI Xuan1, GAN Shu1, 2*, YUAN Xi-ping2, 3, 4, YANG Min3, 4, GONG Wei-zhen1. Spectral Characteristic and Identification Modelling of Three Typical Wetland Vegetation Along the Seashore of the East Coast of the Erhai Lake[J]. SPECTROSCOPY AND SPECTRAL ANALYSIS, 2024, 44(09): 2439-2444. |
[15] |
ZHU Yu-kang1, LU Chang-hua1, ZHANG Yu-jun2, JIANG Wei-wei1*. Quantitative Method to Near-Infrared Spectroscopy With Multi-Feature Fusion Convolutional Neural Network Based on Wavelength Attention[J]. SPECTROSCOPY AND SPECTRAL ANALYSIS, 2024, 44(09): 2607-2612. |
|
|
|
|