IEEE Trans Biomed Eng. 2024 Jan;71(1):56-67. doi: 10.1109/TBME.2023.3292032. Epub 2023 Dec 22.
Volitional control systems for powered prostheses require the detection of user intent to operate in real life scenarios. Ambulation mode classification has been proposed to address this issue. However, these approaches introduce discrete labels to the otherwise continuous task that is ambulation. An alternative approach is to provide users with direct, voluntary control of the powered prosthesis motion. Surface electromyography (EMG) sensors have been proposed for this task, but poor signal-to-noise ratios and crosstalk from neighboring muscles limit performance. B-mode ultrasound can address some of these issues at the cost of reduced clinical viability due to the substantial increase in size, weight, and cost. Thus, there is an unmet need for a lightweight, portable neural system that can effectively detect the movement intention of individuals with lower-limb amputation.
In this study, we show that a small and lightweight A-mode ultrasound system can continuously predict prosthesis joint kinematics in seven individuals with transfemoral amputation across different ambulation tasks. Features from the A-mode ultrasound signals were mapped to the user's prosthesis kinematics via an artificial neural network.
Predictions on testing ambulation circuit trials resulted in a mean normalized RMSE across different ambulation modes of 8.7 ± 3.1%, 4.6 ± 2.5%, 7.2 ± 1.8%, and 4.6 ± 2.4% for knee position, knee velocity, ankle position, and ankle velocity, respectively.
This study lays the foundation for future applications of A-mode ultrasound for volitional control of powered prostheses during a variety of daily ambulation tasks.
动力假肢的意志控制系统需要检测用户在实际生活场景中操作的意图。已经提出了助行模式分类来解决这个问题。然而,这些方法为原本连续的助行任务引入了离散的标签。另一种方法是为用户提供对动力假肢运动的直接、自愿控制。表面肌电图(EMG)传感器已被提出用于此任务,但由于来自相邻肌肉的信噪比和串扰较差,限制了其性能。B 模式超声可以解决其中的一些问题,但由于尺寸、重量和成本的大幅增加,其临床可行性降低。因此,需要一种轻量级、便携式的神经系统,能够有效地检测下肢截肢者的运动意图。
在这项研究中,我们展示了一个小型、轻量级的 A 模式超声系统可以在 7 名股骨截肢者的不同助行任务中连续预测假肢关节运动学。通过人工神经网络,将 A 模式超声信号的特征映射到用户的假肢运动学。
在测试助行电路试验时,不同助行模式下的预测结果分别为膝关节位置、膝关节速度、踝关节位置和踝关节速度的平均归一化 RMSE 为 8.7±3.1%、4.6±2.5%、7.2±1.8%和 4.6±2.4%。
这项研究为未来在各种日常助行任务中使用 A 模式超声进行动力假肢的自主控制应用奠定了基础。