Literature DB >> 34336539

Non-Invasive Glucose Monitoring Using Optical Sensor and Machine Learning Techniques for Diabetes Applications.

Maryamsadat Shokrekhodaei1, David P Cistola2, Robert C Roberts1, Stella Quinones3.   

Abstract

Diabetes is a major public health challenge affecting more than 451 million people. Physiological and experimental factors influence the accuracy of non-invasive glucose monitoring, and these need to be overcome before replacing the finger prick method. Also, the suitable employment of machine learning techniques can significantly improve the accuracy of glucose predictions. One aim of this study is to use light sources with multiple wavelengths to enhance the sensitivity and selectivity of glucose detection in an aqueous solution. Multiple wavelength measurements have the potential to compensate for errors associated with inter- and intra-individual differences in blood and tissue components. In this study, the transmission measurements of a custom built optical sensor are examined using 18 different wavelengths between 410 and 940 nm. Results show a high correlation value (0.98) between glucose concentration and transmission intensity for four wavelengths (485, 645, 860 and 940 nm). Five machine learning methods are investigated for glucose predictions. When regression methods are used, 9% of glucose predictions fall outside the correct range (normal, hypoglycemic or hyperglycemic). The prediction accuracy is improved by applying classification methods on sets of data arranged into 21 classes. Data within each class corresponds to a discrete 10 mg/dL glucose range. Classification based models outperform regression, and among them, the support vector machine is the most successful with F1-score of 99%. Additionally, Clarke error grid shows that 99.75% of glucose readings fall within the clinically acceptable zones. This is an important step towards critical diagnosis during an emergency patient situation.

Entities:  

Keywords:  Classification; decision tree; diabetes; k-nearest neighbor; machine learning; neural network; non-invasive; optimization; spectroscopy; support vector machine

Year:  2021        PMID: 34336539      PMCID: PMC8321391          DOI: 10.1109/access.2021.3079182

Source DB:  PubMed          Journal:  IEEE Access        ISSN: 2169-3536            Impact factor:   3.367


  23 in total

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Authors:  J L Parkes; S L Slatin; S Pardo; B H Ginsberg
Journal:  Diabetes Care       Date:  2000-08       Impact factor: 19.112

2.  Continuous glucose monitoring: real-time algorithms for calibration, filtering, and alarms.

Authors:  B Wayne Bequette
Journal:  J Diabetes Sci Technol       Date:  2010-03-01

3.  Molar absorptivities of glucose and other biological molecules in aqueous solutions over the first overtone and combination regions of the near-infrared spectrum.

Authors:  Airat K Amerov; Jun Chen; Mark A Arnold
Journal:  Appl Spectrosc       Date:  2004-10       Impact factor: 2.388

4.  Introduction to multivariate regression analysis.

Authors:  E C Alexopoulos
Journal:  Hippokratia       Date:  2010-12       Impact factor: 0.471

Review 5.  Effects of Distance Measure Choice on K-Nearest Neighbor Classifier Performance: A Review.

Authors:  Haneen Arafat Abu Alfeilat; Ahmad B A Hassanat; Omar Lasassmeh; Ahmad S Tarawneh; Mahmoud Bashir Alhasanat; Hamzeh S Eyal Salman; V B Surya Prasath
Journal:  Big Data       Date:  2019-08-14       Impact factor: 2.128

6.  Noninvasive in vivo glucose sensing on human subjects using mid-infrared light.

Authors:  Sabbir Liakat; Kevin A Bors; Laura Xu; Callie M Woods; Jessica Doyle; Claire F Gmachl
Journal:  Biomed Opt Express       Date:  2014-06-23       Impact factor: 3.732

7.  Understanding and checking the assumptions of linear regression: a primer for medical researchers.

Authors:  Robert J Casson; Lachlan D M Farmer
Journal:  Clin Exp Ophthalmol       Date:  2014-06-21       Impact factor: 4.207

Review 8.  Glucose meters: a review of technical challenges to obtaining accurate results.

Authors:  Ksenia Tonyushkina; James H Nichols
Journal:  J Diabetes Sci Technol       Date:  2009-07-01

Review 9.  Review of Non-invasive Glucose Sensing Techniques: Optical, Electrical and Breath Acetone.

Authors:  Maryamsadat Shokrekhodaei; Stella Quinones
Journal:  Sensors (Basel)       Date:  2020-02-25       Impact factor: 3.576

10.  Critical-depth Raman spectroscopy enables home-use non-invasive glucose monitoring.

Authors:  Signe M Lundsgaard-Nielsen; Anders Pors; Stefan O Banke; Jan E Henriksen; Dietrich K Hepp; Anders Weber
Journal:  PLoS One       Date:  2018-05-11       Impact factor: 3.240

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Authors:  N Priyanga; K Sasikumar; A Sahaya Raja; Mehboobali Pannipara; Abdullah G Al-Sehemi; R Jude Vimal Michael; M Praveen Kumar; A Therasa Alphonsa; G Gnana Kumar
Journal:  Mikrochim Acta       Date:  2022-04-26       Impact factor: 5.833

2.  Noninvasive Glucose Monitoring: In God We Trust-All Others Bring Data.

Authors:  David C Klonoff; Kevin T Nguyen; Nicole Y Xu; Mark A Arnold
Journal:  J Diabetes Sci Technol       Date:  2021-10-21

Review 3.  Sense and Learn: Recent Advances in Wearable Sensing and Machine Learning for Blood Glucose Monitoring and Trend-Detection.

Authors:  Ahmad Yaser Alhaddad; Hussein Aly; Hoda Gad; Abdulaziz Al-Ali; Kishor Kumar Sadasivuni; John-John Cabibihan; Rayaz A Malik
Journal:  Front Bioeng Biotechnol       Date:  2022-05-12

Review 4.  Artificial Intelligence (AI) and Internet of Medical Things (IoMT) Assisted Biomedical Systems for Intelligent Healthcare.

Authors:  Pandiaraj Manickam; Siva Ananth Mariappan; Sindhu Monica Murugesan; Shekhar Hansda; Ajeet Kaushik; Ravikumar Shinde; S P Thipperudraswamy
Journal:  Biosensors (Basel)       Date:  2022-07-25

5.  Non-invasive blood glucose sensing by machine learning of optic fiber-based speckle pattern variation.

Authors:  Deep Pal; Sergey Agadarov; Yevgeny Beiderman; Yafim Beiderman; Amitesh Kumar; Zeev Zalevsky
Journal:  J Biomed Opt       Date:  2022-09       Impact factor: 3.758

6.  A Single Wavelength Mid-Infrared Photoacoustic Spectroscopy for Noninvasive Glucose Detection Using Machine Learning.

Authors:  Abdulrahman Aloraynan; Shazzad Rassel; Chao Xu; Dayan Ban
Journal:  Biosensors (Basel)       Date:  2022-03-07
  6 in total

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