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Published in: Journal of Medical Systems 1/2019

01-01-2019 | Patient Facing Systems

Blood Sugar Level Indication Through Chewing and Swallowing from Acoustic MEMS Sensor and Deep Learning Algorithm for Diabetic Management

Authors: S. Krishna Kumari, J. M. Mathana

Published in: Journal of Medical Systems | Issue 1/2019

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Abstract

Diabetes, a metabolic disorder due to high blood glycemic index in the human body. The glycemic index varies in the human of improper diet and eating pattern such as junk foods, variation in the quantity of food, swallowing of food without chewing and stress. However, the diagnose of increase or decrease in the glycemic index is a challenging task. Similarly, the regulation of glycemic index without regular exercise is a major problem in day to day life. In this paper, we propose a novel SCS method to regulate glycemic index without exercise through changing the eating method. The proposed SCS eating method consists of Size of the food, Chewing style and Swallow time (SCS) of the food to regulate glycemic index. Furthermore, the proposed SCS method evaluate and validate through the acoustic signal acquired and processed with deep learning algorithm to analyze the chewing pattern of food to formulate a standard procedure for eating style and to reduce the glycemic level. The validation of diabetes done by measurement of blood glycemic through AccuChek Instant S Glucometer. Furthermore, the SCS method of eating style from 50 diabetes persons reduces the blood glucose level drastically by 85% after following the proposed method of eating style.
Literature
1.
go back to reference Sazonov, E. S., and Fontana, J. M., A sensor system for automatic detection of food intake through non-invasive monitoring of chewing. IEEE Sensors Journal 12(5):1340–1348, 2012.CrossRef Sazonov, E. S., and Fontana, J. M., A sensor system for automatic detection of food intake through non-invasive monitoring of chewing. IEEE Sensors Journal 12(5):1340–1348, 2012.CrossRef
2.
go back to reference Xu, W. L., Pap, J.-S., and Bronlund, J., Design of a biologically inspired parallel robot for foods chewing. IEEE Transactions on Industrial Electronics 55(2):832–841, 2008.CrossRef Xu, W. L., Pap, J.-S., and Bronlund, J., Design of a biologically inspired parallel robot for foods chewing. IEEE Transactions on Industrial Electronics 55(2):832–841, 2008.CrossRef
3.
go back to reference Emorine, M., Mielle, P., Maratray, J., Septier, C., Thomas-Danguin, T., and Salles, C., Use of sensors to measure in-mouth salt release during food chewing. IEEE Sensors Journal 12(11):3124–3130, 2012.CrossRef Emorine, M., Mielle, P., Maratray, J., Septier, C., Thomas-Danguin, T., and Salles, C., Use of sensors to measure in-mouth salt release during food chewing. IEEE Sensors Journal 12(11):3124–3130, 2012.CrossRef
4.
go back to reference Papapanagiotou, V., Diou, C., Zhou, L., van den Boer, J., Mars, M., and Delopoulos, A., A Novel Chewing Detection System Based on PPG, Audio, and Accelerometry. IEEE Journalof Biomedical and Health Informatics 21(3):607–618, 2017.CrossRef Papapanagiotou, V., Diou, C., Zhou, L., van den Boer, J., Mars, M., and Delopoulos, A., A Novel Chewing Detection System Based on PPG, Audio, and Accelerometry. IEEE Journalof Biomedical and Health Informatics 21(3):607–618, 2017.CrossRef
5.
go back to reference Mata, A. D., Marques, D., Rocha, S., Francisco, H., Santos, C., Mesquita, M. F., and Singh, J., Effects of diabetes mellitus on salivary secretion and its composition in the human. Journal Of Molecular And Cellular Biochemistry 261(1-2):137–142, 2004.CrossRef Mata, A. D., Marques, D., Rocha, S., Francisco, H., Santos, C., Mesquita, M. F., and Singh, J., Effects of diabetes mellitus on salivary secretion and its composition in the human. Journal Of Molecular And Cellular Biochemistry 261(1-2):137–142, 2004.CrossRef
6.
go back to reference Buisson, J.-C., and Garel, A., Balancing meals using fuzzy arithmetic and heuristic search algorithms. IEEE Transactions on Fuzzy Systems 11(1):68–78, 2003.CrossRef Buisson, J.-C., and Garel, A., Balancing meals using fuzzy arithmetic and heuristic search algorithms. IEEE Transactions on Fuzzy Systems 11(1):68–78, 2003.CrossRef
7.
go back to reference Komatsu, K., Hasegawa, H., Honda, T., Yabashi, A., and Kawasaki, T., Nerve Growth Factor in Saliva Stimulated by Mastication. Oral Science International 5(2):78–84, 2008.CrossRef Komatsu, K., Hasegawa, H., Honda, T., Yabashi, A., and Kawasaki, T., Nerve Growth Factor in Saliva Stimulated by Mastication. Oral Science International 5(2):78–84, 2008.CrossRef
8.
go back to reference Anthimopoulos, M. M., Gianola, L., Scarnato, L., Diem, P., and Mougiakakou, S. G., A food recognition system for diabetic patients based on an optimized bag-of-features model. IEEE Journal of Biomedical Health Informatics 18(4):1261–1271, 2014.CrossRef Anthimopoulos, M. M., Gianola, L., Scarnato, L., Diem, P., and Mougiakakou, S. G., A food recognition system for diabetic patients based on an optimized bag-of-features model. IEEE Journal of Biomedical Health Informatics 18(4):1261–1271, 2014.CrossRef
9.
go back to reference Päßler, S., and Wolf-Joachim, F., Food intake monitoring: Automated chew event detection in chewing sounds. IEEE Journal of Biomedical and Health Informatics 18(1):278–289, 2014.CrossRef Päßler, S., and Wolf-Joachim, F., Food intake monitoring: Automated chew event detection in chewing sounds. IEEE Journal of Biomedical and Health Informatics 18(1):278–289, 2014.CrossRef
10.
go back to reference Lucisano, J. Y., Routh, T. L., Lin, J. T., and Gough, D. A., Glucose Monitoring in Individuals with Diabetes Using a Long-Term Implanted Sensor/Telemetry System and Model. IEEE Transactions on Biomedical Engineering 64(9):1982–1993, 2017.CrossRef Lucisano, J. Y., Routh, T. L., Lin, J. T., and Gough, D. A., Glucose Monitoring in Individuals with Diabetes Using a Long-Term Implanted Sensor/Telemetry System and Model. IEEE Transactions on Biomedical Engineering 64(9):1982–1993, 2017.CrossRef
11.
go back to reference Temiloluwa (Olubanjo) Prioleau, Elliot Moore II, and Maysam Ghovanloo., Unobtrusive and Wearable Systems for Automatic Dietary Monitoring. IEEE Transactions on Biomedical Engineering. 64( 9): 2075–2089, 2017. Temiloluwa (Olubanjo) Prioleau, Elliot Moore II, and Maysam Ghovanloo., Unobtrusive and Wearable Systems for Automatic Dietary Monitoring. IEEE Transactions on Biomedical Engineering. 64( 9): 2075–2089, 2017.
12.
go back to reference Farooq, M., and Sazonov, E., Segmentation and Characterization of Chewing Bouts by Monitoring Temporalis Muscle Using Smart Glasses with Piezoelectric Sensor. IEEE Journal of Biomedical and Health Informatics 21(6):1495–1503, 2017.CrossRef Farooq, M., and Sazonov, E., Segmentation and Characterization of Chewing Bouts by Monitoring Temporalis Muscle Using Smart Glasses with Piezoelectric Sensor. IEEE Journal of Biomedical and Health Informatics 21(6):1495–1503, 2017.CrossRef
13.
go back to reference Huang, Q., Wang, W., and Zhang, Q., Your Glasses Know Your Diet: Dietary Monitoring Using Electromyography Sensors. IEEE Internet of Things Journal 4(3):705–712, 2017.CrossRef Huang, Q., Wang, W., and Zhang, Q., Your Glasses Know Your Diet: Dietary Monitoring Using Electromyography Sensors. IEEE Internet of Things Journal 4(3):705–712, 2017.CrossRef
14.
go back to reference Farooq, M., and Sazonov, E., Accelerometer-Based Detection of Food Intake in Free-Living Individuals. IEEE Sensors Journal 18(9):3752–3758, 2018.CrossRef Farooq, M., and Sazonov, E., Accelerometer-Based Detection of Food Intake in Free-Living Individuals. IEEE Sensors Journal 18(9):3752–3758, 2018.CrossRef
Metadata
Title
Blood Sugar Level Indication Through Chewing and Swallowing from Acoustic MEMS Sensor and Deep Learning Algorithm for Diabetic Management
Authors
S. Krishna Kumari
J. M. Mathana
Publication date
01-01-2019
Publisher
Springer US
Published in
Journal of Medical Systems / Issue 1/2019
Print ISSN: 0148-5598
Electronic ISSN: 1573-689X
DOI
https://doi.org/10.1007/s10916-018-1115-2

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