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Monitoring saliva compositions for non-invasive detection of diabetes using a colorimetric-based multiple sensor
by
Bagheri, Hasan
, Hosseini, Mahboobeh Sadat
, Samadinia, Hosein
, Halabian, Raheleh
, Bordbar, Mohammad Mahdi
, Safaei, Elham
, Daryanavard, Seyed Mosayeb
, Sheini, Azarmidokht
in
639/638/11/511
/ 639/638/11/876
/ Colorimetry
/ Developing countries
/ Diabetes
/ Diabetes mellitus
/ Humanities and Social Sciences
/ LDCs
/ multidisciplinary
/ Nanoparticles
/ pH effects
/ Population growth
/ Saliva
/ Science
/ Science (multidisciplinary)
/ Sensors
/ Silver
2023
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Monitoring saliva compositions for non-invasive detection of diabetes using a colorimetric-based multiple sensor
by
Bagheri, Hasan
, Hosseini, Mahboobeh Sadat
, Samadinia, Hosein
, Halabian, Raheleh
, Bordbar, Mohammad Mahdi
, Safaei, Elham
, Daryanavard, Seyed Mosayeb
, Sheini, Azarmidokht
in
639/638/11/511
/ 639/638/11/876
/ Colorimetry
/ Developing countries
/ Diabetes
/ Diabetes mellitus
/ Humanities and Social Sciences
/ LDCs
/ multidisciplinary
/ Nanoparticles
/ pH effects
/ Population growth
/ Saliva
/ Science
/ Science (multidisciplinary)
/ Sensors
/ Silver
2023
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While trying to remove the title from your shelf something went wrong :( Kindly try again later!
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Monitoring saliva compositions for non-invasive detection of diabetes using a colorimetric-based multiple sensor
by
Bagheri, Hasan
, Hosseini, Mahboobeh Sadat
, Samadinia, Hosein
, Halabian, Raheleh
, Bordbar, Mohammad Mahdi
, Safaei, Elham
, Daryanavard, Seyed Mosayeb
, Sheini, Azarmidokht
in
639/638/11/511
/ 639/638/11/876
/ Colorimetry
/ Developing countries
/ Diabetes
/ Diabetes mellitus
/ Humanities and Social Sciences
/ LDCs
/ multidisciplinary
/ Nanoparticles
/ pH effects
/ Population growth
/ Saliva
/ Science
/ Science (multidisciplinary)
/ Sensors
/ Silver
2023
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Monitoring saliva compositions for non-invasive detection of diabetes using a colorimetric-based multiple sensor
Journal Article
Monitoring saliva compositions for non-invasive detection of diabetes using a colorimetric-based multiple sensor
2023
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Overview
The increasing population of diabetic patients, especially in developing countries, has posed a serious risk to the health sector, so that the lack of timely diagnosis and treatment process of diabetes can lead to threatening complications for the human lifestyle. Here, a multiple sensor was fabricated on a paper substrate for rapid detection and controlling the progress of the diabetes disease. The proposed sensor utilized the sensing ability of porphyrazines, pH-sensitive dyes and silver nanoparticles in order to detect the differences in saliva composition of diabetic and non-diabetic patients. A unique color map (sensor response) was obtained for each studied group, which can be monitored by a scanner. Moreover, a good correlation was observed between the colorimetric response resulting from the analysis of salivary composition and the fasting blood glucose (FBG) value measured by standard laboratory instruments. It was also possible to classify participants into two groups, including patients caused by diabetes and those were non-diabetic persons with a total accuracy of 88.9%. Statistical evaluations show that the multiple sensor can be employed as an effective and non-invasive device for continuous monitoring of diabetes, substantially in the elderly.
Publisher
Nature Publishing Group UK,Nature Publishing Group,Nature Portfolio
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