Faculty of Information Technology and Communication Sciences, Tampere University, Tampere, Finland.
Faculty of Medicine and Health Sciences, Tampere University, Tampere, Finland.
PLoS One. 2024 Sep 27;19(9):e0303317. doi: 10.1371/journal.pone.0303317. eCollection 2024.
Oxygen consumption ([Formula: see text]) is an important measure for exercise test, such as walking and running, that can be measured outdoors using portable spirometers or metabolic analyzers. However, these devices are not feasible for regular use by consumers as they intervene with the user's physical integrity, and are expensive and difficult to operate. To circumvent these drawbacks, indirect estimation of [Formula: see text] using neural networks combined with motion features and heart rate measurements collected with consumer-grade sensors has been shown to yield reasonably accurate [Formula: see text] for intra-subject estimation. However, estimating [Formula: see text] with neural networks trained with data from other individuals than the user, known as inter-subject estimation, remains an open problem. In this paper, five types of neural network architectures were tested in various configurations for inter-subject [Formula: see text] estimation. To analyse predictive performance, data from 16 participants walking and running at speeds between 1.0 m/s and 3.3 m/s were used. The most promising approach was Xception network, which yielded average estimation errors as low as 2.43 ml×min-1×kg-1, suggesting that it could be used by athletes and running enthusiasts for monitoring their oxygen consumption over time to detect changes in their movement economy.
氧气消耗 ([公式:见文本]) 是运动测试的一个重要指标,例如步行和跑步,可以使用便携式肺活量计或代谢分析仪在户外进行测量。然而,这些设备对于消费者来说并不实用,因为它们会干扰用户的身体完整性,而且昂贵且难以操作。为了规避这些缺点,使用神经网络结合运动特征和心率测量值,从消费级传感器收集的间接估计 [公式:见文本] 已被证明可以为个体内估计产生相当准确的 [公式:见文本]。然而,使用来自用户以外的其他人的数据训练神经网络来进行 [公式:见文本] 估计,即跨个体估计,仍然是一个未解决的问题。在本文中,测试了五种类型的神经网络架构在各种配置下进行跨个体 [公式:见文本] 估计。为了分析预测性能,使用了 16 名参与者以 1.0 m/s 到 3.3 m/s 的速度行走和跑步的数据。最有前途的方法是 Xception 网络,它产生的平均估计误差低至 2.43 ml×min-1×kg-1,这表明它可以被运动员和跑步爱好者用于监测他们的氧气消耗随时间的变化,以检测他们的运动经济性的变化。