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用于健康监测中区分身体活动强度的智能手表算法的开发与验证。

Development and validation of a smartwatch algorithm for differentiating physical activity intensity in health monitoring.

作者信息

Chen Daixi, Du Yuchen, Liu Yuan, Hong Jun, Yin Xiaojian, Zhu Zhuoting, Wang Jingjing, Zhang Junyao, Chen Jun, Zhang Bo, Du Linlin, Yang Jinliuxing, He Xiangui, Xu Xun

机构信息

Department of Ophthalmology, Shanghai General Hospital, Shanghai Jiao Tong University School of Medicine, National Clinical Research Center for Eye Diseases, Center of Eye Shanghai Key Laboratory of Ocular Fundus Diseases, Shanghai Engineering Center for Visual Science and Photomedicine, Shanghai, 200080, China.

Shanghai Eye Disease Prevention and Treatment Center, Shanghai Eye Hospital, School of Medicine, Tongji University, National Clinical Research Center for Eye Diseases, Shanghai Engineering Research Center of Precise Diagnosis and Treatment of Eye Diseases, Shanghai, 200030, China.

出版信息

Sci Rep. 2024 Apr 25;14(1):9530. doi: 10.1038/s41598-024-59602-6.

Abstract

To develop and validate a machine learning based algorithm to estimate physical activity (PA) intensity using the smartwatch with the capacity to record PA and determine outdoor state. Two groups of participants, including 24 adults (13 males) and 18 children (9 boys), completed a sequential activity trial. During each trial, participants wore a smartwatch, and energy expenditure was measured using indirect calorimetry as gold standard. The support vector machine algorithm and the least squares regression model were applied for the metabolic equivalent (MET) estimation using raw data derived from the smartwatch. Exercise intensity was categorized based on MET values into sedentary activity (SED), light activity (LPA), moderate activity (MPA), and vigorous activity (VPA). The classification accuracy was evaluated using area under the ROC curve (AUC). The METs estimation accuracy were assessed via the mean absolute error (MAE), the correlation coefficient, Bland-Altman plots, and intraclass correlation (ICC). A total of 24 adults aged 21-34 years and 18 children aged 9-13 years participated in the study, yielding 1790 and 1246 data points for adults and children respectively for model building and validation. For adults, the AUC for classifying SED, MVPA, and VPA were 0.96, 0.88, and 0.86, respectively. The MAE between true METs and estimated METs was 0.75 METs. The correlation coefficient and ICC were 0.87 (p < 0.001) and 0.89, respectively. For children, comparable levels of accuracy were demonstrated, with the AUC for SED, MVPA, and VPA being 0.98, 0.89, and 0.85, respectively. The MAE between true METs and estimated METs was 0.80 METs. The correlation coefficient and ICC were 0.79 (p < 0.001) and 0.84, respectively. The developed model successfully estimated PA intensity with high accuracy in both adults and children. The application of this model enables independent investigation of PA intensity, facilitating research in health monitoring and potentially in areas such as myopia prevention and control.

摘要

开发并验证一种基于机器学习的算法,该算法使用能够记录身体活动(PA)并确定户外状态的智能手表来估计身体活动强度。两组参与者,包括24名成年人(13名男性)和18名儿童(9名男孩),完成了一项连续活动试验。在每次试验期间,参与者佩戴智能手表,并使用间接量热法测量能量消耗作为金标准。支持向量机算法和最小二乘回归模型被应用于使用从智能手表获得的原始数据来估计代谢当量(MET)。运动强度根据MET值分为久坐活动(SED)、轻度活动(LPA)、中度活动(MPA)和剧烈活动(VPA)。使用ROC曲线下面积(AUC)评估分类准确性。通过平均绝对误差(MAE)、相关系数、Bland-Altman图和组内相关系数(ICC)评估MET估计准确性。共有24名年龄在21至34岁之间的成年人和18名年龄在9至13岁之间的儿童参与了该研究,分别为成年人和儿童产生了1790个和1246个数据点用于模型构建和验证。对于成年人,分类SED、MVPA和VPA的AUC分别为0.96、0.88和0.86。真实MET与估计MET之间的MAE为0.75 MET。相关系数和ICC分别为0.87(p < 0.001)和0.89。对于儿童,也展示了相当的准确性水平,SED、MVPA和VPA的AUC分别为0.98、0.89和0.85。真实MET与估计MET之间的MAE为0.80 MET。相关系数和ICC分别为0.79(p < 0.001)和0.84。所开发的模型在成年人和儿童中均成功地高精度估计了PA强度。该模型的应用能够独立研究PA强度,促进健康监测研究,并可能在近视防控等领域发挥作用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/da23/11045869/b96383ed964f/41598_2024_59602_Fig1_HTML.jpg

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