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Prediction of the Wingate anaerobic mechanical power outputs from a maximal incremental cardiopulmonary exercise stress test using machine-learning approach

机译:使用机器学习方法通​​过最大增量心肺运动压力测试预测Wingate无氧机械功率输出

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摘要

The Wingate Anaerobic Test (WAnT) is a short-term maximal intensity cycle ergometer test, which provides anaerobic mechanical power output variables. Despite the physiological significance of the variables extracted from the WAnT, the test is very intense, and generally applies for athletes. Our goal, in this paper, was to develop a new approach to predict the anaerobic mechanical power outputs using maximal incremental cardiopulmonary exercise stress test (CPET). We hypothesized that maximal incremental exercise stress test hold hidden information about the anaerobic components, which can be directly translated into mechanical power outputs. We therefore designed a computational model that included aerobic variables (features), and used a new computational predictive algorithm, which enabled the prediction of the anaerobic mechanical power outputs. We analyzed the chosen predicted features using clustering on a network. For peak power (PP) and mean power (MP) outputs, the equations included six features and four features, respectively. The combination of these features produced a prediction model of r = 0.94 and r = 0.9, respectively, on the validation set between the real and predicted PP/MP values (P< 0.001). The newly predictive model allows the accurate prediction of the anaerobic mechanical power outputs at high accuracy. The assessment of additional tests is desired for the development of a robust application for athletes, older individuals, and/or non-healthy populations.
机译:Wingate厌氧测试(WAnT)是短期最大强度循环测功机测试,可提供厌氧机械功率输出变量。尽管从WAnT中提取的变量具有生理学意义,但该测试非常激烈,通常适用于运动员。在本文中,我们的目标是开发一种使用最大增量心肺运动压力测试(CPET)预测无氧机械功率输出的新方法。我们假设最大增量运动压力测试保存有关厌氧成分的隐藏信息,这些信息可以直接转换为机械功率输出。因此,我们设计了一个包含有氧变量(特征)的计算模型,并使用了一种新的计算预测算法,该算法能够预测厌氧机械功率的输出。我们使用网络上的聚类分析了选定的预测特征。对于峰值功率(PP)和平均功率(MP)输出,这些方程式分别包含六个特征和四个特征。在真实PP / MP值与预测PP / MP值之间的验证集上,这些特征的组合分别产生了r = 0.94和r = 0.9的预测模型(P <0.001)。新的预测模型可以高精度地预测厌氧机械功率输出。评估其他测试对于开发健壮的运动员,老年人和/或非健康人群的应用是理想的。

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