使用压力鞋垫对中风后患者的基于个性化学习的地面反作用力估计。

Gregoire Bergamo, Krithika Swaminathan, Daekyum Kim, Andrew Chin, Christopher Siviy, Ignacio Novillo, Teresa C Baker, Nicholas Wendel, Terry D Ellis, Conor J Walsh
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引用次数: 0

摘要

中风是步态残疾的主要原因,导致丧失独立性和整体生活质量。临床生物力学领域旨在研究如何在个人损伤的情况下最好地提供康复。然而,生物力学分析和临床中使用的评估工具之间仍然存在脱节。特别是,三维地面反作用力(3D GRF)用于量化关键步态特征,但需要基于实验室的设备,如力板。最近的研究表明,压力鞋垫等可穿戴传感器可以估计真实世界环境中的GRF。然而,对这些方法在中风后步态高度异质的人群中的表现了解有限。在这里,我们评估了三种特定于主题的机器学习方法,以评估不同速度的中风后患者使用压力鞋垫的3D GRF。我们发现,基于卷积神经网络的方法对内侧、前后和垂直GRF分量的估计误差最低,分别为0.75±0.24、1.13±0.54和4.79±3.04%。此外,估计的分力与地面实况测量值密切相关()。最后,我们展示了瘫痪肢体上三个临床相关点度量的高估计精度。这些结果表明,个性化机器学习方法有可能转化为现实世界的临床应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Individualized Learning-Based Ground Reaction Force Estimation in People Post-Stroke Using Pressure Insoles.
Stroke is a leading cause of gait disability that leads to a loss of independence and overall quality of life. The field of clinical biomechanics aims to study how best to provide rehabilitation given an individual's impairments. However, there remains a disconnect between assessment tools used in biomechanical analysis and in clinics. In particular, 3-dimensional ground reaction forces (3D GRFs) are used to quantify key gait characteristics, but require lab-based equipment, such as force plates. Recent efforts have shown that wearable sensors, such as pressure insoles, can estimate GRFs in real-world environments. However, there is limited understanding of how these methods perform in people post-stroke, where gait is highly heterogeneous. Here, we evaluate three subject-specific machine learning approaches to estimate 3D GRFs with pressure insoles in people post-stroke across varying speeds. We find that a Convolutional Neural Network-based approach achieves the lowest estimation errors of 0.75 ± 0.24, 1.13 ± 0.54, and 4.79 ± 3.04 % bodyweight for the medio-lateral, antero-posterior, and vertical GRF components, respectively. Estimated force components were additionally strongly correlated with the ground truth measurements ($R^{2}> 0.85$). Finally, we show high estimation accuracy for three clinically relevant point metrics on the paretic limb. These results suggest the potential for an individualized machine learning approach to translate to real-world clinical applications.
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