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Predicting oxygen uptake responses during cycling at varied intensities using an artificial neural network

机译:使用人工神经网络预测不同强度骑行期间的氧气吸收反应

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Summary Study aim : Oxygen Uptake (VO2) is avaluable metric for the prescription of exercise intensity and the monitoring of training progress. However, VO2 is difficult to assess in anon-laboratory setting. Recently, an artificial neural network (ANN) was used to predict VO2 responses during aset walking protocol on the treadmill [9]. The purpose of the present study was to test the ability of an ANN to predict VO2 responses during cycling at self-selected intensities using Heart Rate (HR), time derivative of HR, power output, cadence, and body mass data. Material and methods : 12 moderately-active adult males (age: 21.1 ± 2.5 years) performed a50-minute bout of cycling at a variety of exercise intensities. VO2, HR, power output, and cadence were recorded throughout the test. An ANN was trained, validated and tested using the following inputs: HR, time derivative of HR, power output, cadence, and body mass. A twelve-fold hold-out cross validation was conducted to determine the accuracy of the model. Results : The ANN accurately predicted the experimental VO2 values throughout the test (R2 = 0.91 ± 0.04, SEE = 3.34 ± 1.07 mL/kg/min). Discussion : This preliminary study demonstrates the potential for using an ANN to predict VO2 responses during cycling at varied intensities using easily accessible inputs. The predictive accuracy is promising, especially considering the large range of intensities and long duration of exercise. Expansion of these methods could allow ageneral algorithm to be developed for a more diverse population, improving the feasibility of oxygen uptake assessment.
机译:总结研究目的:摄氧量(VO2)是衡量运动强度和监测训练进度的一项重要指标。但是,VO2在非实验室环境中很难评估。最近,人工神经网络(ANN)被用来预测跑步机上的步行步行协议中的VO2响应[9]。本研究的目的是使用心率(HR),HR的时间导数,功率输出,节奏和体重数据来测试ANN在自行选择强度的自行车中预测VO2响应的能力。材料和方法:12名中等活动度的成年男性(年龄:21.1±2.5岁)以各种运动强度进行了50分钟的自行车运动。在整个测试过程中记录VO2,HR,功率输出和节奏。使用以下输入对ANN进行训练,验证和测试:HR,HR的时间导数,功率输出,节奏和体重。进行了十二次保留交叉验证,以确定模型的准确性。结果:ANN可以准确预测整个测试过程中的实验VO2值(R2 = 0.91±0.04,SEE = 3.34±1.07 mL / kg / min)。讨论:这项初步研究表明,使用易于访问的输入,在变化强度的自行车中使用ANN预测VO2响应的潜力。预测准确性是有希望的,特别是考虑到强度范围大和运动时间长的情况。这些方法的扩展可以允许针对更多样化的人群开发通用算法,从而提高氧气吸收评估的可行性。

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