Hwang Han-Jeong, Hahne Janne Mathias, Müller Klaus-Robert
Machine Learning Group, Berlin Institute of Technology (TU Berlin), Marchstrasse 23, 10587 Berlin, Germany.
J Neural Eng. 2014 Oct;11(5):056008. doi: 10.1088/1741-2560/11/5/056008. Epub 2014 Aug 1.
Recent studies have shown the possibility of simultaneous and proportional control of electrically powered upper-limb prostheses, but there has been little investigation on optimal channel selection. The objective of this study is to find a robust channel selection method and the channel subsets most suitable for simultaneous and proportional myoelectric prosthesis control of multiple degrees-of-freedom (DoFs).
Ten able-bodied subjects and one person with congenital upper-limb deficiency took part in this study, and performed wrist movements with various combinations of two DoFs (flexion/extension and radial/ulnar deviation). During the experiment, high density electromyographic (EMG) signals and the actual wrist angles were recorded with an 8 × 24 electrode array and a motion tracking system, respectively. The wrist angles were estimated from EMG features with ridge regression using the subsets of channels chosen by three different channel selection methods: (1) least absolute shrinkage and selection operator (LASSO), (2) sequential feature selection (SFS), and (3) uniform selection (UNI).
SFS generally showed higher estimation accuracy than LASSO and UNI, but LASSO always outperformed SFS in terms of robustness, such as noise addition, channel shift and training data reduction. It was also confirmed that about 95% of the original performance obtained using all channels can be retained with only 12 bipolar channels individually selected by LASSO and SFS.
From the analysis results, it can be concluded that LASSO is a promising channel selection method for accurate simultaneous and proportional prosthesis control. We expect that our results will provide a useful guideline to select optimal channel subsets when developing clinical myoelectric prosthesis control systems based on continuous movements with multiple DoFs.
近期研究表明,电动上肢假肢具备同时进行比例控制的可能性,但对于最佳通道选择的研究较少。本研究的目的是找到一种稳健的通道选择方法以及最适合多自由度(DoF)同步和比例肌电假肢控制的通道子集。
十名身体健全的受试者和一名先天性上肢缺失者参与了本研究,他们通过两个自由度(屈伸和桡尺偏)的各种组合进行手腕运动。实验过程中,分别使用8×24电极阵列和运动跟踪系统记录高密度肌电图(EMG)信号和实际手腕角度。利用三种不同通道选择方法(1)最小绝对收缩和选择算子(LASSO)、(2)顺序特征选择(SFS)和(3)均匀选择(UNI)所选择的通道子集,通过岭回归从EMG特征估计手腕角度。
SFS通常比LASSO和UNI表现出更高的估计精度,但在鲁棒性方面,如添加噪声、通道偏移和训练数据减少,LASSO始终优于SFS。还证实,仅使用LASSO和SFS单独选择的12个双极通道,就可以保留使用所有通道获得的约95%的原始性能。
从分析结果可以得出结论,LASSO是一种有前景的通道选择方法,可用于精确的同步和比例假肢控制。我们期望我们的结果将为开发基于多自由度连续运动的临床肌电假肢控制系统时选择最佳通道子集提供有用的指导。