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Main Authors: Cheng, Ming, Diao, Xingjian, Zhou, Ziyi, Cui, Yanjun, Liu, Wenjun, Cheng, Shitong
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2404.11924
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author Cheng, Ming
Diao, Xingjian
Zhou, Ziyi
Cui, Yanjun
Liu, Wenjun
Cheng, Shitong
author_facet Cheng, Ming
Diao, Xingjian
Zhou, Ziyi
Cui, Yanjun
Liu, Wenjun
Cheng, Shitong
contents The global diabetes epidemic highlights the importance of maintaining good glycemic control. Glucose prediction is a fundamental aspect of diabetes management, facilitating real-time decision-making. Recent research has introduced models focusing on long-term glucose trend prediction, which are unsuitable for real-time decision-making and result in delayed responses. Conversely, models designed to respond to immediate glucose level changes cannot analyze glucose variability comprehensively. Moreover, contemporary research generally integrates various physiological parameters (e.g. insulin doses, food intake, etc.), which inevitably raises data privacy concerns. To bridge such a research gap, we propose TimeGlu -- an end-to-end pipeline for short-term glucose prediction solely based on CGM time series data. We implement four baseline methods to conduct a comprehensive comparative analysis of the model's performance. Through extensive experiments on two contrasting datasets (CGM Glucose and Colas dataset), TimeGlu achieves state-of-the-art performance without the need for additional personal data from patients, providing effective guidance for real-world diabetic glucose management.
format Preprint
id arxiv_https___arxiv_org_abs_2404_11924
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Toward Short-Term Glucose Prediction Solely Based on CGM Time Series
Cheng, Ming
Diao, Xingjian
Zhou, Ziyi
Cui, Yanjun
Liu, Wenjun
Cheng, Shitong
Artificial Intelligence
The global diabetes epidemic highlights the importance of maintaining good glycemic control. Glucose prediction is a fundamental aspect of diabetes management, facilitating real-time decision-making. Recent research has introduced models focusing on long-term glucose trend prediction, which are unsuitable for real-time decision-making and result in delayed responses. Conversely, models designed to respond to immediate glucose level changes cannot analyze glucose variability comprehensively. Moreover, contemporary research generally integrates various physiological parameters (e.g. insulin doses, food intake, etc.), which inevitably raises data privacy concerns. To bridge such a research gap, we propose TimeGlu -- an end-to-end pipeline for short-term glucose prediction solely based on CGM time series data. We implement four baseline methods to conduct a comprehensive comparative analysis of the model's performance. Through extensive experiments on two contrasting datasets (CGM Glucose and Colas dataset), TimeGlu achieves state-of-the-art performance without the need for additional personal data from patients, providing effective guidance for real-world diabetic glucose management.
title Toward Short-Term Glucose Prediction Solely Based on CGM Time Series
topic Artificial Intelligence
url https://arxiv.org/abs/2404.11924