Non-invasive glucose prediction and classification using NIR technology with machine learning

被引:3
|
作者
Naresh, M. [1 ]
Nagaraju, V. Siva [2 ]
Kollem, Sreedhar [3 ]
Kumar, Jayendra [1 ]
Peddakrishna, Samineni [1 ]
机构
[1] VIT AP Univ, Sch Elect Engn, Guntur 522241, Andhra Pradesh, India
[2] Inst Aeronaut Engn, Dept ECE, Dundigal, Hyderabad 500043, Telangana, India
[3] SR Univ, Sch Engn, Dept ECE, Warangal 506371, Telangana, India
关键词
Absorbance; Spectroscopy; Glucose; Infrared; Machine learning; Noninvasive; Regression; Classification; Detectors; OPTICAL COHERENCE TOMOGRAPHY; NEAR-INFRARED SPECTROSCOPY; ACCURACY; SENSORS; SYSTEM;
D O I
10.1016/j.heliyon.2024.e28720
中图分类号
O [数理科学和化学]; P [天文学、地球科学]; Q [生物科学]; N [自然科学总论];
学科分类号
07 ; 0710 ; 09 ;
摘要
In this paper, a dual wavelength short near-infrared system is described for the detection of glucose levels. The system aims to improve the accuracy of blood glucose detection in a cost-effective and non-invasive way. The accuracy of the method is evaluated using real-time samples collected with the reference finger prick glucose device. A feed forward neural network (FFNN) regression method is employed to predict glucose levels based on the input data obtained from NIR technology. The system calculates glucose evaluation metrics and performs Surveillance error grid (SEG) analysis. The coefficient of determination R-2 and mean absolute error are observed 0.99 and 2.49 mg/dl, respectively. Additionally, the system determines the root mean square error (RMSE) as 3.02 mg/dl. It also shows that the mean absolute percentage error (MAPE) is 1.94% and mean squared error (MSE) is 9.16 (mg/dl)(2) for FFNN. The SEG analysis shows that the glucose values measured by the system fall within the clinically acceptable range when compared to the reference method. Finally, the system uses the multi-class classification method of the multilayer perceptron (MLP) and K-nearest neighbors (KNN) classifier to classify glucose levels with an accuracy of 99%.
引用
收藏
页数:22
相关论文
共 50 条
  • [41] Non-invasive setup for grape maturation classification using deep learning
    Ramos, Rodrigo P.
    Gomes, Jessica S.
    Prates, Ricardo M.
    Simas Filho, Eduardo F.
    Teruel, Barbara J.
    dos Santos Costa, Daniel
    JOURNAL OF THE SCIENCE OF FOOD AND AGRICULTURE, 2021, 101 (05) : 2042 - 2051
  • [42] Histopathological distinction of non-invasive and invasive bladder cancers using machine learning approaches
    Peng-Nien Yin
    Kishan KC
    Shishi Wei
    Qi Yu
    Rui Li
    Anne R. Haake
    Hiroshi Miyamoto
    Feng Cui
    BMC Medical Informatics and Decision Making, 20
  • [43] Non-Invasive Blood Glucose Monitoring Technology: A Review
    Tang, Liu
    Chang, Shwu Jen
    Chen, Ching-Jung
    Liu, Jen-Tsai
    SENSORS, 2020, 20 (23) : 1 - 32
  • [44] Non-invasive classification of macrophage polarisation by 2P-FLIM and machine learning
    Neto, Nuno G. B.
    O'Rourke, Sinead A.
    Zhang, Mimi
    Fitzgerald, Hannah K.
    Dunne, Aisling
    Monaghan, Michael G.
    Dustin, Michael L.
    ELIFE, 2022, 11
  • [45] NON-INVASIVE CLASSIFICATION OF MACROPHAGE POLARISATION BY 2P-FLIM AND MACHINE LEARNING
    Neto, Nuno
    O'Rourke, Sinead
    Zhang, Mimi
    Fitzgerald, Hannah
    Dunne, Aisling
    Monaghan, Michael
    TISSUE ENGINEERING PART A, 2023, 29 (11-12) : 904 - 904
  • [46] Non-Invasive Assessment, Classification, and Prediction of Biophysical Parameters Using Reflectance Hyperspectroscopy
    Falcioni, Renan
    dos Santos, Glaucio Leboso Alemparte Abrantes
    Crusiol, Luis Guilherme Teixeira
    Antunes, Werner Camargos
    Chicati, Marcelo Luiz
    de Oliveira, Roney Berti
    Dematte, Jose A. M.
    Nanni, Marcos Rafael
    PLANTS-BASEL, 2023, 12 (13):
  • [47] Integrating non-invasive VIS-NIR and bioimpedance spectroscopies for stress classification of sweet basil ( Ocimum basilicum L.) with machine learning
    Son, Daesik
    Park, Junyoung
    Lee, Siun
    Kim, Jae Joon
    Chung, Soo
    BIOSENSORS & BIOELECTRONICS, 2024, 263
  • [48] Hepatic Involvement across the Metabolic Syndrome Spectrum: Non-Invasive Assessment and Risk Prediction Using Machine Learning
    Solomon, Adelaida
    Cipaian, Calin Remus
    Negrea, Mihai Octavian
    Boicean, Adrian
    Mihaila, Romeo
    Beca, Corina
    Popa, Mirela Livia
    Grama, Sebastian Mihai
    Teodoru, Minodora
    Neamtu, Bogdan
    JOURNAL OF CLINICAL MEDICINE, 2023, 12 (17)
  • [49] A Study on Non-invasive Diabetes Causing Variables and Their Covariance Relationship in Diabetes Prediction Using Machine Learning Algorithms
    Yadav, Avinash Kumar
    Sagar, D.
    Rani, Naveeta
    SMART TRENDS IN COMPUTING AND COMMUNICATIONS, VOL 3, SMARTCOM 2024, 2024, 947 : 365 - 375
  • [50] Non-invasive prediction of hemoglobin level using machine learning techniques with the PPG signal's characteristics features
    Kavsaoglu, A. Resit
    Polat, Kemal
    Hariharan, M.
    APPLIED SOFT COMPUTING, 2015, 37 : 983 - 991