Mustafa Manal, Dzewaltowski Alex C, Malcolm Philippe, Moore Keegan J
Department of Mechanical and Materials Engineering, University of Nebraska-Lincoln, Lincoln, NE, United States.
Department of Biomechanics, University of Nebraska Omaha, Omaha, NE, United States.
Front Bioeng Biotechnol. 2025 Jun 20;13:1579085. doi: 10.3389/fbioe.2025.1579085. eCollection 2025.
Biomechanical changes due to aging increase the oxygen consumption of walking by over 30%. When this is coupled with reduced oxygen uptake capacity, the ability to sustain walking becomes compromised. This reduced physical activity and mobility can lead to further physical degeneration and mortality. Unfortunately, the underlying reasons for the increased metabolic cost are still inadequately understood. While motion capture systems can measure signals with high temporal resolution, it is impossible to directly characterize the fluctuation of metabolic cost throughout the gait cycle.
To address this issue, this research focuses on computing the metabolic cost time series from the mean value using two neural-network-based approaches: autoencoders (AEs) and expanders. For the AEs, the encoders are designed to compress the input time series down to their mean value, and the decoder expands those values into the time series. After training, the decoder is extracted and applied to mean metabolic cost values to compute the time series. A second approach leverages an expander to map the mean values to the time series without an encoder. The networks are trained using ten different metabolic cost models generated by a computational walking model that simulates the gait cycle subjected to 35 different robotic perturbations without using experimental input data. The networks are validated using the estimated metabolic costs for the unperturbed gait cycle.
The investigation found that AEs without tied weights and the expanders performed best using nonlinear activation functions, while the AEs with tied weights performed best with linear activation functions. Unexpectedly, the results show that the expanders outperform the AEs.
A limitation of this research is the reliance on time series for the initial training. Future efforts will focus on developing methods that overcome this issue. Improved methods for estimating within-stride fluctuations in metabolic cost have the potential of improving rehabilitation and assistive devices by targeting the gait phases with increased metabolic cost. This research could also be applied to expand sparse measurements to locations or times that were not measured explicitly. This application would reduce the number of measurement points required to capture the response of a system.
衰老导致的生物力学变化使步行的氧气消耗量增加了30%以上。当这与氧气摄取能力下降相结合时,维持步行的能力就会受到损害。这种身体活动和行动能力的降低会导致进一步的身体退化和死亡。不幸的是,代谢成本增加的根本原因仍未得到充分理解。虽然运动捕捉系统可以以高时间分辨率测量信号,但不可能直接表征整个步态周期中代谢成本的波动。
为了解决这个问题,本研究专注于使用两种基于神经网络的方法从平均值计算代谢成本时间序列:自动编码器(AE)和扩展器。对于自动编码器,编码器被设计为将输入时间序列压缩到其平均值,解码器将这些值扩展回时间序列。训练后,提取解码器并将其应用于平均代谢成本值以计算时间序列。第二种方法利用扩展器在没有编码器的情况下将平均值映射到时间序列。使用由计算步行模型生成的十种不同代谢成本模型对网络进行训练,该模型在不使用实验输入数据的情况下模拟受到35种不同机器人扰动的步态周期。使用未受扰动步态周期的估计代谢成本对网络进行验证。
研究发现,没有权重绑定的自动编码器和扩展器在使用非线性激活函数时表现最佳,而有权重绑定的自动编码器在使用线性激活函数时表现最佳。出乎意料的是,结果表明扩展器的性能优于自动编码器。
本研究的一个局限性是初始训练依赖于时间序列。未来的工作将集中在开发克服这个问题的方法上。改进的估计步幅内代谢成本波动的方法有可能通过针对代谢成本增加的步态阶段来改进康复和辅助设备。这项研究还可以应用于将稀疏测量扩展到未明确测量的位置或时间。这种应用将减少捕获系统响应所需的测量点数量。