为 1 型糖尿病患者设计实时体育活动检测和分类框架。

IF 4.1 Q2 ENDOCRINOLOGY & METABOLISM
Sunghyun Cho, Eleonora M Aiello, Basak Ozaslan, Michael C Riddell, Peter Calhoun, Robin L Gal, Francis J Doyle
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引用次数: 0

摘要

背景:1型糖尿病(T1D)患者在运动期间和运动后的血糖管理具有挑战性,因为这些运动会对血糖产生广泛的影响,具体取决于运动的时间、类型和强度。为此,先进的体力活动知情技术有助于改善血糖控制:方法:我们提出了一种基于随机森林模型的实时体力活动检测和分类框架。该模块可自动检测运动过程,并根据三轴加速度计、心率和连续血糖监测记录预测活动类型和强度:结果:19 名患有 T1D 的成年人在一天的不同时间进行了有氧运动、阻力运动或高强度间歇运动。运动开始和结束的预测时间均在 1 分钟之内,平均准确率分别为 81% 和 78%。从运动开始算起,在 2.38 分钟内识别出了活动类型和强度。对于被分配到测试集的参与者,如果运动有通知,活动类型和强度分类的平均准确率分别为 74% 和 73%。对于未宣布的运动事件,活动类型的分类准确率为 65%,强度的分类准确率为 70%:结论:所提出的模块在运动开始后一分钟内对运动进行实时检测和分类方面表现出色。将该模块整合到胰岛素治疗决策中有助于促进体育活动前后的血糖管理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Design of a Real-Time Physical Activity Detection and Classification Framework for Individuals With Type 1 Diabetes.

Background: Managing glycemia during and after exercise events in type 1 diabetes (T1D) is challenging since these events can have wide-ranging effects on glycemia depending on the event timing, type, intensity. To this end, advanced physical activity-informed technologies can be beneficial for improving glucose control.

Methods: We propose a real-time physical activity detection and classification framework, which builds upon random forest models. This module automatically detects exercise sessions and predicts the activity type and intensity from tri-axial accelerometer, heart rate, and continuous glucose monitoring records.

Results: Data from 19 adults with T1D who performed structured sessions of either aerobic, resistance, or high-intensity interval exercise at varying times of day were used to train and test this framework. The exercise onset and completion were both predicted within 1 minute with an average accuracy of 81% and 78%, respectively. Activity type and intensity were identified within 2.38 minutes and from the exercise onset. On participants assigned to the test set, the average accuracy for activity type and intensity classification was 74% and 73%, respectively, if exercise was announced. For unannounced exercise events, the classification accuracy was 65% for the activity type and 70% for its intensity.

Conclusions: The proposed module showed high performance in detection and classification of exercise in real-time within a minute of exercise onset. Integration of this module into insulin therapy decisions can help facilitate glucose management around physical activity.

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来源期刊
Journal of Diabetes Science and Technology
Journal of Diabetes Science and Technology Medicine-Internal Medicine
CiteScore
7.50
自引率
12.00%
发文量
148
期刊介绍: The Journal of Diabetes Science and Technology (JDST) is a bi-monthly, peer-reviewed scientific journal published by the Diabetes Technology Society. JDST covers scientific and clinical aspects of diabetes technology including glucose monitoring, insulin and metabolic peptide delivery, the artificial pancreas, digital health, precision medicine, social media, cybersecurity, software for modeling, physiologic monitoring, technology for managing obesity, and diagnostic tests of glycation. The journal also covers the development and use of mobile applications and wireless communication, as well as bioengineered tools such as MEMS, new biomaterials, and nanotechnology to develop new sensors. Articles in JDST cover both basic research and clinical applications of technologies being developed to help people with diabetes.
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