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利用可穿戴生理数据预测运动强度水平的深度学习方法

Deep Learning Approaches to Predict Exercise Exertion Levels Using Wearable Physiological Data.

作者信息

Smiley Aref, Finkelstein Joseph

机构信息

Department of Biomedical Informatics, University of Utah, Salt Lake City, UT, USA.

出版信息

AMIA Jt Summits Transl Sci Proc. 2024 May 31;2024:419-428. eCollection 2024.

Abstract

Using physiological data from wearable devices, the study aimed to predict exercise exertion levels by building deep learning classification and regression models. Physiological data were obtained using an unobtrusive chest-worn ECG sensor and portable pulse oximeter from healthy individuals who performed 16-minute cycling exercise sessions. During each session, real-time ECG, pulse rate, oxygen saturation, and revolutions per minute (RPM) data were collected at three intensity levels. Subjects' ratings of perceived exertion (RPE) were collected once per minute. Each 16-minute exercise session was divided into eight 2-minute windows. The self-reported RPEs, heart rate, RPMs, and oxygen saturation levels were averaged for each window to form the predictive features. In addition, heart rate variability (HRV) features were extracted from the ECG for each window. Different feature selection algorithms were used to choose top-ranked predictors. The best predictors were then used to train and test deep learning models for regression and classification analysis. Our results showed the highest accuracy and F1 score of 98.2% and 98%, respectively in training the models. For testing the models, the highest accuracy and F1 score were 80%.

摘要

该研究利用可穿戴设备的生理数据,旨在通过构建深度学习分类和回归模型来预测运动强度水平。生理数据是通过一个不显眼的胸部佩戴式心电图传感器和便携式脉搏血氧仪,从进行16分钟自行车运动的健康个体身上获取的。在每个运动时段,在三个强度水平下收集实时心电图、心率、血氧饱和度和每分钟转数(RPM)数据。每分钟收集一次受试者的主观用力感觉评分(RPE)。每个16分钟的运动时段被分为八个2分钟的窗口。对每个窗口的自我报告的RPE、心率、RPM和血氧饱和度水平进行平均,以形成预测特征。此外,从每个窗口的心电图中提取心率变异性(HRV)特征。使用不同的特征选择算法来选择排名靠前的预测因子。然后使用最佳预测因子来训练和测试用于回归和分类分析的深度学习模型。我们的结果显示,在训练模型时,最高准确率和F1分数分别为98.2%和98%。在测试模型时,最高准确率和F1分数为80%。

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