SugarMate: Non-intrusive blood glucose monitoring with smartphones

Inferring abnormal glucose events such as hyperglycemia and hypoglycemia is crucial for the health of both diabetic patients and non-diabetic people. However, regular blood glucose monitoring can be invasive and inconvenient in everyday life. We present SugarMate, a first smartphone-based blood gluc...

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Main Authors: GU, Weixi, ZHOU, Yuxun, ZHOU, Zimu, LIU, Xi, ZOU, Han, ZHANG, Pei, SPANOS, Costas J., ZHANG, Lin
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Language:English
Published: Institutional Knowledge at Singapore Management University 2017
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Online Access:https://ink.library.smu.edu.sg/sis_research/4507
https://ink.library.smu.edu.sg/context/sis_research/article/5510/viewcontent/ubicomp17_gu.pdf
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spelling sg-smu-ink.sis_research-55102019-12-19T05:54:54Z SugarMate: Non-intrusive blood glucose monitoring with smartphones GU, Weixi ZHOU, Yuxun ZHOU, Zimu LIU, Xi ZOU, Han ZHANG, Pei SPANOS, Costas J. ZHANG, Lin Inferring abnormal glucose events such as hyperglycemia and hypoglycemia is crucial for the health of both diabetic patients and non-diabetic people. However, regular blood glucose monitoring can be invasive and inconvenient in everyday life. We present SugarMate, a first smartphone-based blood glucose inference system as a temporary alternative to continuous blood glucose monitors (CGM) when they are uncomfortable or inconvenient to wear. In addition to the records of food, drug and insulin intake, it leverages smartphone sensors to measure physical activities and sleep quality automatically. Provided with the imbalanced and often limited measurements, a challenge of SugarMate is the inference of blood glucose levels at a fine-grained time resolution. We propose Md3RNN, an efficient learning paradigm to make full use of the available blood glucose information. Specifically, the newly designed grouped input layers, together with the adoption of a deep RNN model, offer an opportunity to build blood glucose models for the general public based on limited personal measurements from single-user and grouped-users perspectives. Evaluations on 112 users demonstrate that Md3RNN yields an average accuracy of 82.14%, significantly outperforming previous learning methods those are either shallow, generically structured, or oblivious to grouped behaviors. Also, a user study with the 112 participants shows that SugarMate is acceptable for practical usage. 2017-09-01T07:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/4507 info:doi/10.1145/3130919 https://ink.library.smu.edu.sg/context/sis_research/article/5510/viewcontent/ubicomp17_gu.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University Human-centered computing Smartphones Computing methodologies Machine learning Computer and Systems Architecture Software Engineering
institution Singapore Management University
building SMU Libraries
continent Asia
country Singapore
Singapore
content_provider SMU Libraries
collection InK@SMU
language English
topic Human-centered computing
Smartphones
Computing methodologies
Machine learning
Computer and Systems Architecture
Software Engineering
spellingShingle Human-centered computing
Smartphones
Computing methodologies
Machine learning
Computer and Systems Architecture
Software Engineering
GU, Weixi
ZHOU, Yuxun
ZHOU, Zimu
LIU, Xi
ZOU, Han
ZHANG, Pei
SPANOS, Costas J.
ZHANG, Lin
SugarMate: Non-intrusive blood glucose monitoring with smartphones
description Inferring abnormal glucose events such as hyperglycemia and hypoglycemia is crucial for the health of both diabetic patients and non-diabetic people. However, regular blood glucose monitoring can be invasive and inconvenient in everyday life. We present SugarMate, a first smartphone-based blood glucose inference system as a temporary alternative to continuous blood glucose monitors (CGM) when they are uncomfortable or inconvenient to wear. In addition to the records of food, drug and insulin intake, it leverages smartphone sensors to measure physical activities and sleep quality automatically. Provided with the imbalanced and often limited measurements, a challenge of SugarMate is the inference of blood glucose levels at a fine-grained time resolution. We propose Md3RNN, an efficient learning paradigm to make full use of the available blood glucose information. Specifically, the newly designed grouped input layers, together with the adoption of a deep RNN model, offer an opportunity to build blood glucose models for the general public based on limited personal measurements from single-user and grouped-users perspectives. Evaluations on 112 users demonstrate that Md3RNN yields an average accuracy of 82.14%, significantly outperforming previous learning methods those are either shallow, generically structured, or oblivious to grouped behaviors. Also, a user study with the 112 participants shows that SugarMate is acceptable for practical usage.
format text
author GU, Weixi
ZHOU, Yuxun
ZHOU, Zimu
LIU, Xi
ZOU, Han
ZHANG, Pei
SPANOS, Costas J.
ZHANG, Lin
author_facet GU, Weixi
ZHOU, Yuxun
ZHOU, Zimu
LIU, Xi
ZOU, Han
ZHANG, Pei
SPANOS, Costas J.
ZHANG, Lin
author_sort GU, Weixi
title SugarMate: Non-intrusive blood glucose monitoring with smartphones
title_short SugarMate: Non-intrusive blood glucose monitoring with smartphones
title_full SugarMate: Non-intrusive blood glucose monitoring with smartphones
title_fullStr SugarMate: Non-intrusive blood glucose monitoring with smartphones
title_full_unstemmed SugarMate: Non-intrusive blood glucose monitoring with smartphones
title_sort sugarmate: non-intrusive blood glucose monitoring with smartphones
publisher Institutional Knowledge at Singapore Management University
publishDate 2017
url https://ink.library.smu.edu.sg/sis_research/4507
https://ink.library.smu.edu.sg/context/sis_research/article/5510/viewcontent/ubicomp17_gu.pdf
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