Sport Laboratory, College of Physical Education, Sichuan Normal University, Sichuan, China.
Front Public Health. 2022 Feb 7;9:804471. doi: 10.3389/fpubh.2021.804471. eCollection 2021.
Tabata training plays an important role in health promotion. Effective monitoring of exercise energy expenditure is an important basis for exercisers to adjust their physical activities to achieve exercise goals. The input of acceleration combined with heart rate data and the application of machine learning algorithm are expected to improve the accuracy of EE prediction. This study is based on acceleration and heart rate to build linear regression and back propagate neural network prediction model of Tabata energy expenditure, and compare the accuracy of the two models. Participants ( = 45; Mean age: 21.04 ± 2.39 years) were randomly assigned to the modeling and validation data set in a 3:1 ratio. Each participant simultaneously wore four accelerometers (dominant hand, non-dominant hand, right hip, right ankle), a heart rate band and a metabolic measurement system to complete Tabata exercise test. After obtaining the test data, the correlation of the variables is calculated and passed to linear regression and back propagate neural network algorithms to predict energy expenditure during exercise and interval period. The validation group was entered into the model to obtain the predicted value and the prediction effect was tested. Bland-Alterman test showed two models fell within the consistency interval. The mean absolute percentage error of back propagate neural network was 12.6%, and linear regression was 14.7%. Using both acceleration and heart rate for estimation of Tabata energy expenditure is effective, and the prediction effect of back propagate neural network algorithm is better than linear regression, which is more suitable for Tabata energy expenditure monitoring.
塔巴塔训练在促进健康方面发挥着重要作用。有效监测运动能量消耗是锻炼者调整身体活动以实现运动目标的重要依据。加速度的输入结合心率数据和机器学习算法的应用有望提高 EE 预测的准确性。本研究基于加速度和心率构建塔巴塔能量消耗的线性回归和反向传播神经网络预测模型,并比较了两种模型的准确性。参与者(n=45;平均年龄:21.04±2.39 岁)以 3:1 的比例随机分配到建模和验证数据集。每位参与者同时佩戴四个加速度计(优势手、非优势手、右髋、右踝)、一个心率带和一个代谢测量系统来完成塔巴塔运动测试。获得测试数据后,计算变量的相关性,并将其传递给线性回归和反向传播神经网络算法,以预测运动和间歇期间的能量消耗。将验证组输入到模型中,以获得预测值并测试预测效果。Bland-Alterman 检验表明,两种模型均落在一致性区间内。反向传播神经网络的平均绝对百分比误差为 12.6%,线性回归为 14.7%。同时使用加速度和心率来估计塔巴塔能量消耗是有效的,反向传播神经网络算法的预测效果优于线性回归,更适合塔巴塔能量消耗监测。