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多地形行走时关节扭矩连续估计的超声肌电传感性能。

Performance of Sonomyographic and Electromyographic Sensing for Continuous Estimation of Joint Torque During Ambulation on Multiple Terrains.

出版信息

IEEE Trans Neural Syst Rehabil Eng. 2021;29:2635-2644. doi: 10.1109/TNSRE.2021.3134189. Epub 2021 Dec 23.

DOI:10.1109/TNSRE.2021.3134189
PMID:34878978
Abstract

Advances in powered assistive device technology, including the ability to provide net mechanical power to multiple joints within a single device, have the potential to dramatically improve the mobility and restore independence to their users. However, these devices rely on the ability of their users to continuously control multiple powered lower-limb joints simultaneously. Success of such approaches rely on robust sensing of user intent and accurate mapping to device control parameters. Here, we compare two non-invasive sensing modalities: surface electromyography and sonomyography, (i.e., ultrasound imaging of skeletal muscle), as inputs to Gaussian process regression models trained to estimate hip, knee and ankle joint moments during varying forms of ambulation. Experiments were performed with ten non-disabled individuals instrumented with surface electromyography and sonomyography sensors while completing trials of level, incline (10°) and decline (10°) walking. Results suggest sonomyography of muscles on the anterior and posterior thigh can be used to estimate hip, knee and ankle joint moments more accurately than surface electromyography. Furthermore, these results can be achieved by training Gaussian process regression models in a task-independent manner; i.e., incorporating features of level and ramp walking within the same predictive framework. These findings support the integration of sonomyographic and electromyographic sensing within powered assistive devices to continuously control joint torque.

摘要

动力辅助设备技术的进步,包括在单个设备内为多个关节提供净机械功率的能力,有可能极大地提高其使用者的移动能力并恢复其独立性。然而,这些设备依赖于其使用者持续控制多个动力下肢关节的能力。此类方法的成功依赖于对用户意图的稳健感测和对设备控制参数的准确映射。在这里,我们比较了两种非侵入性感测模式:表面肌电图和超声肌描记术(即骨骼肌肉的超声成像),作为高斯过程回归模型的输入,这些模型经过训练可在不同形式的步行中估计髋关节、膝关节和踝关节的力矩。实验在十个非残疾个体上进行,这些个体被仪器化,配备有表面肌电图和超声肌描记术传感器,同时完成水平、倾斜(10°)和下降(10°)行走的试验。结果表明,大腿前侧和后侧的超声肌描记术可以比表面肌电图更准确地估计髋关节、膝关节和踝关节的力矩。此外,这些结果可以通过以任务独立的方式训练高斯过程回归模型来实现;即,在同一预测框架中包含水平和斜坡行走的特征。这些发现支持在动力辅助设备中整合超声肌电图和肌电图感测,以连续控制关节扭矩。

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Performance of Sonomyographic and Electromyographic Sensing for Continuous Estimation of Joint Torque During Ambulation on Multiple Terrains.多地形行走时关节扭矩连续估计的超声肌电传感性能。
IEEE Trans Neural Syst Rehabil Eng. 2021;29:2635-2644. doi: 10.1109/TNSRE.2021.3134189. Epub 2021 Dec 23.
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