Deep learning to predict power output from respiratory inductive plethysmography data

Applied AI letters Pub Date : 2022-03-17 DOI:10.1002/ail2.65
Erik Johannes B. L. G Husom, Pierre Bernabé, Sagar Sen
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Abstract

Power output is one of the most accurate methods for measuring exercise intensity during outdoor endurance sports, since it records the actual effect of the work performed by the muscles over time. However, power meters are expensive and are limited to activity forms where it is possible to embed sensors in the propulsion system such as in cycling. We investigate using breathing to estimate power output during exercise, in order to create a portable method for tracking physical effort that is universally applicable in many activity forms. Breathing can be quantified through respiratory inductive plethysmography (RIP), which entails recording the movement of the rib cage and abdomen caused by breathing, and it enables us to have a portable, non-invasive device for measuring breathing. RIP signals, heart rate and power output were recorded during a N-of-1 study of a person performing a set of workouts on a stationary bike. The recorded data were used to build predictive models through deep learning algorithms. A convolutional neural network (CNN) trained on features derived from RIP signals and heart rate obtained a mean absolute percentage error (MAPE) of 0.20 (ie, 20% average error). The model showed promising capability of estimating correct power levels and reactivity to changes in power output, but the accuracy is significantly lower than that of cycling power meters.

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深度学习预测呼吸感应脉搏波数据的功率输出
在户外耐力运动中,功率输出是测量运动强度最准确的方法之一,因为它记录了肌肉在一段时间内完成的工作的实际效果。然而,功率计是昂贵的,并且仅限于活动形式,在这些活动形式中可以将传感器嵌入推进系统,例如在自行车中。我们研究使用呼吸来估计运动过程中的能量输出,以便创建一种便携式方法来跟踪身体的努力,这是普遍适用于许多活动形式。呼吸可以通过呼吸感应容积描记术(RIP)来量化,它需要记录由呼吸引起的胸腔和腹部的运动,它使我们有一个便携式的,非侵入性的测量呼吸的设备。在一项N-of-1的研究中,研究人员记录了一个人在固定自行车上进行一系列锻炼时的RIP信号、心率和能量输出。记录的数据通过深度学习算法建立预测模型。卷积神经网络(CNN)对来自RIP信号和心率的特征进行训练,得到的平均绝对百分比误差(MAPE)为0.20(即平均误差为20%)。该模型在正确估计功率水平和对输出功率变化的反应性方面表现出良好的能力,但精度明显低于循环功率表。
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