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Por favor, use este identificador para citar o enlazar este ítem: http://repositorio.unapec.edu.do/handle/123456789/892
Título : Breath analyzer for personalized monitoring of exercise-induced metabolic fat burning
Autor : Del Orbe, Dionisio V.
Park, Hyung Ju
Kwack, Myung-Joon
Lee, Hyung-Kun
Kim, Do Yeob
Lim, Jung Gweon
Park, Inkyu
Sohn, Minji
Lim, Soo
Lee, Dae-Sik
Palabras clave : Breath analyzer
Low-power chemiresistive sensor
Sensor array
Physical exercise
Metabolic fat burning monitoring
Recurrent neural network
Fecha de publicación : oct-2022
Editorial : Sensors and Actuators B: Chemical
Citación : Orbe, Dionisio & Park, Hyung & Kwack, Myung-Joon & Lee, Hyung Kun & Kim, Do Yeob & Lim, Jung & Park, Inkyu & Sohn, Minji & Lim, Soo & Le, Dae-Sik. (2022). Breath analyzer for personalized monitoring of exercise-induced metabolic fat burning. Sensors and Actuators B: Chemical. 369. https://doi.org/10.1016/j.snb.2022.132192
Resumen : Obesity increases the risk of chronic diseases, such as type 2 diabetes mellitus, dyslipidemia, and cardiovascular diseases. Simple anthropometric measurements have time limitations in reflecting short-term weight and body fat changes. Thus, for detecting, losing or maintaining weight in short term, it is desirable to develop portable/ compact devices to monitor exercise-induced fat burn in real time. Exhaled breath acetone and blood-borne β-hydroxybutyric acid (BOHB) are both correlated biomarkers of the metabolic fat burning process that takes place in the liver, predominantly post-exercise. Here, we have fabricated a compact breath analyzer for convenient, noninvasive and personalized estimation of fat burning in real time in a highly automated manner. The analyzer collects end-tidal breath in a standardized, user-friendly manner and it is equipped with an array of four low-power MEMS sensors for enhanced accuracy; this device presents a combination of required and desirable design features in modern portable/compact breath analyzers. We analyzed the exhaled breath (with our analyzer) and the blood samples (for BOHB) in 20 participants after exercise; we estimated the values of BOHB, as indication of the fat burn, resulting in Pearson coefficient r between the actual and predicted BOHB of 0.8. The estimation uses the responses from the sensor array in our analyzer and demographic and anthropo- metric information from the participants as inputs to a machine learning algorithm. The system and approach herein may help guide regular exercise for weight loss and its maintenance based on individuals’ own metabolic changes.
Descripción : Dionisio V. Del Orbe recibió su Licenciatura en Ingeniería Aeronáutica de la Universidad de Western Michigan (2012), EE. UU., y una Maestría en Ingeniería de Manufactura Microelectrónica del Instituto de Tecnología de Rochester (2015), EE. UU. Recibió su doctorado en Ingeniería Mecánica KAIST (2022), Corea del Sur, y trabajó como investigador de posgrado en el Departamento de Investigación de TIC Médicas y de Bienestar en ETRI, Corea del Sur. Su investigación se centra en sensores de gases químicos para diversas aplicaciones, especialmente, análisis de aliento y detección de gases tóxicos/inflamables; también tiene intereses en dispositivos portátiles y flexibles. Actualmente, es docente e investigador en UNAPEC, República Dominicana.
URI : http://repositorio.unapec.edu.do/handle/123456789/892
ISSN : 0925-4005
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