Cheng Runbei, Haste Phoebe, Levens Elyse, Bergmann Jeroen
Natural Interaction Lab, Institute of Biomedical Engineering, Department of Engineering Science, University of Oxford, Oxford, United Kingdom.
Department of Technology and Innovation, University of Southern Denmark, Odense, Denmark.
Front Sports Act Living. 2024 Sep 24;6:1448243. doi: 10.3389/fspor.2024.1448243. eCollection 2024.
The purpose of this study is to investigate the importance of respiratory features, relative to heart rate (HR), when estimating rating of perceived exertion (RPE) using machine learning models.
A total of 20 participants aged 18 to 43 were recruited to carry out Yo-Yo level-1 intermittent recovery tests, while wearing a COSMED K5 portable metabolic machine. RPE information was collected throughout the Yo-Yo test for each participant. Three regression models (linear, random forest, and a multi-layer perceptron) were tested with 8 training features (HR, minute ventilation (VE), respiratory frequency (Rf), volume of oxygen consumed (VO2), age, gender, weight, and height).
Using a leave-one-subject-out cross validation, the random forest model was found to be the most accurate, with a root mean square error of 1.849, and a mean absolute error of 1.461 ± 1.133. Feature importance was estimated via permutation feature importance, and VE was found to be the most important for all three models followed by HR.
Future works that aim to estimate RPE using wearable sensors should therefore consider using a combination of cardiovascular and respiratory data.
本研究的目的是在使用机器学习模型估计主观用力程度(RPE)时,研究呼吸特征相对于心率(HR)的重要性。
招募了20名年龄在18至43岁之间的参与者,让他们佩戴COSMED K5便携式代谢仪进行Yo-Yo一级间歇恢复测试。在Yo-Yo测试过程中收集每位参与者的RPE信息。使用8个训练特征(心率、分钟通气量(VE)、呼吸频率(Rf)、耗氧量(VO2)、年龄、性别、体重和身高)对三种回归模型(线性、随机森林和多层感知器)进行测试。
使用留一法交叉验证,发现随机森林模型最准确,均方根误差为1.849,平均绝对误差为1.461±1.133。通过排列特征重要性估计特征重要性,发现VE对所有三种模型都是最重要的,其次是HR。
因此,未来旨在使用可穿戴传感器估计RPE的工作应考虑结合心血管和呼吸数据。