Department of Computer Science, KU Leuven, Leuven, Belgium.
Department of Movement Sciences, KU Leuven, Leuven, Belgium.
PLoS One. 2018 Jun 29;13(6):e0199509. doi: 10.1371/journal.pone.0199509. eCollection 2018.
Maximal oxygen uptake (VO2max) is often used to assess an individual's cardiorespiratory fitness. However, measuring this variable requires an athlete to perform a maximal exercise test which may be impractical, since this test requires trained staff and specialized equipment, and may be hard to incorporate regularly into training programs. The aim of this study is to develop a new model for predicting VO2max by exploiting its relationship to heart rate and accelerometer features extracted during submaximal running. To do so, we analyzed data collected from 31 recreational runners (15 men and 16 women) aged 19-26 years who performed a maximal incremental test on a treadmill. During this test, the subjects' heart rate and acceleration at three locations (the upper back, the lower back and the tibia) were continuously measured. We extracted a wide variety of features from the measurements of the warm-up and the first three stages of the test and employed a data-driven approach to select the most relevant ones. Furthermore, we evaluated the utility of combining different types of features. Empirically, we found that combining heart rate and accelerometer features resulted in the best model with a mean absolute error of 2.33 ml ⋅ kg-1 ⋅ min-1 and a mean absolute percentage error of 4.92%. The model includes four features: gender, body mass, the inverse of the average heart rate and the inverse of the variance of the total tibia acceleration during the warm-up stage of the treadmill test. Our model provides a practical tool for recreational runners in the same age range to estimate their VO2max from submaximal running on a treadmill. It requires two body-worn sensors: a heart rate monitor and an accelerometer positioned on the tibia.
最大摄氧量(VO2max)通常用于评估个体的心肺功能。然而,测量这个变量需要运动员进行最大运动测试,这可能不切实际,因为这个测试需要训练有素的工作人员和专门的设备,而且可能难以定期纳入训练计划。本研究的目的是通过利用其与心率和加速度计特征的关系,开发一种新的预测 VO2max 的模型,这些特征是在亚最大跑步期间提取的。为此,我们分析了从 31 名 19-26 岁的娱乐跑步者(15 名男性和 16 名女性)收集的数据,这些人在跑步机上进行了最大增量测试。在这个测试中,被试者的心率和三个位置(上背部、下背部和胫骨)的加速度连续测量。我们从热身和测试的前三个阶段的测量中提取了各种各样的特征,并采用数据驱动的方法选择最相关的特征。此外,我们评估了结合不同类型特征的效用。经验上,我们发现将心率和加速度计特征相结合产生了最好的模型,平均绝对误差为 2.33ml ⋅ kg-1 ⋅ min-1,平均绝对百分比误差为 4.92%。该模型包括四个特征:性别、体重、平均心率的倒数和跑步机测试热身阶段胫骨总加速度的方差的倒数。我们的模型为同一年龄范围的娱乐跑步者提供了一种实用的工具,可根据亚最大跑步时的跑步机数据来估计他们的 VO2max。它需要两个佩戴在身上的传感器:一个心率监测器和一个放置在胫骨上的加速度计。