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Detection of ventilatory thresholds using near-infrared spectroscopy with a polynomial regression model

机译:使用多项式回归模型的近红外光谱检测通气阈值

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摘要

Whether near-infrared spectroscopy (NIRS) is a convenient and accurate method of determining first and second ventilatory thresholds (VT and VT ) using raw data remains unknown. This study investigated the reliability and validity of VT and VT determined by NIRS skeletal muscle hemodynamic raw data via a polynomial regression model. A total of 100 male students were recruited and performed maximal cycling exercises while their cardiopulmonary and NIRS muscle hemodynamic data were measured. The criterion validity of VT and VT were determined using a traditional V-slope and ventilatory efficiency. Statistical significance was set at α = . 05. There was high reproducibility of VT and VT determined by a NIRS polynomial regression model during exercise (VT , r = 0.94; VT , r = 0.93). There were high correlations of VT vs VT (r = 0.93,  2VET vs VT (r = 0.94,  2) between VT and VT or VT and VT was not significantly different. NIRS raw data are reliable and valid for determining VT and VT in healthy males using a polynomial regression model. Skeletal muscle raw oxygenation and deoxygenation status reflects more realistic causes and timing of VT and VT .
机译:使用原始数据确定第一和第二通气阈值(VT和VT)是否是方便而准确的方法,近红外光谱法(NIRS)是否是未知的。本研究通过多项式回归模型研究了由NIRS骨骼肌血液动力学原始数据确定的VT和VT的可靠性和有效性。总共招募了100名男学生并进行了最大的自行车运动,同时测量了他们的心肺和NIRS肌肉血流动力学数据。使用传统的V型斜率和通气效率确定VT和VT的标准有效性。统计显着性设置为α=。 05.运动过程中通过NIRS多项式回归模型确定的VT和VT具有很高的重现性(VT,r = 0.94; VT,r = 0.93)。 VT与VT之间的VT与VT的相关性高(r = 0.93,2VET与VT(r = 0.94,2)或VT与VT之间无显着差异.NIRS原始数据对于确定健康的VT和VT是可靠且有效的男性使用多项式回归模型,骨骼肌的原始氧合和脱氧状态反映了更现实的原因和VT和VT的时机。

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