Borish Cassie N, Feinman Adam, Bertucco Matteo, Ramsy Natalie G, Sanger Terence D
Department of Biomedical Engineering, University of Southern California , Los Angeles, California.
Department of Neurology, University of Southern California , Los Angeles, California.
J Neurophysiol. 2018 Jun 1;119(6):2030-2035. doi: 10.1152/jn.00188.2017. Epub 2018 Jan 31.
Nonlinear Bayesian filtering of surface electromyography (EMG) can provide a stable output signal with little delay and the ability to change rapidly, making it a potential control input for prosthetic or communication devices. We hypothesized that myocontrol follows Fitts' Law, and that Bayesian filtered EMG would improve movement times and success rates when compared with linearly filtered EMG. We tested the two filters using a Fitts' Law speed-accuracy paradigm in a one-muscle myocontrol task with EMG captured from the dominant first dorsal interosseous muscle. Cursor position in one dimension was proportional to EMG. Six indices of difficulty were tested, varying the target size and distance. We examined two performance measures: movement time (MT) and success rate. The filter had a significant effect on both MT and success. MT followed Fitts' Law and the speed-accuracy relationship exhibited a significantly higher channel capacity when using the Bayesian filter. Subjects seemed to be less cautious using the Bayesian filter due to its lower error rate and smoother control. These findings suggest that Bayesian filtering may be a useful component for myoelectrically controlled prosthetics or communication devices. NEW & NOTEWORTHY Whereas previous work has focused on assessing the Bayesian algorithm as a signal processing algorithm for EMG, this study assesses the use of the Bayesian algorithm for online EMG control. In other words, the subjects see the output of the filter and can adapt their own behavior to use the filter optimally as a tool. This study compares how subjects adapt EMG behavior using the Bayesian algorithm vs. a linear algorithm.
表面肌电图(EMG)的非线性贝叶斯滤波能够提供延迟小且变化迅速的稳定输出信号,使其成为假肢或通信设备潜在的控制输入。我们假设肌电控制遵循菲茨定律,并且与线性滤波的肌电图相比,贝叶斯滤波的肌电图将改善运动时间和成功率。我们在一项单肌肉肌电控制任务中,使用菲茨定律速度 - 准确性范式,对从优势手第一背侧骨间肌采集的肌电图测试了这两种滤波器。一维光标位置与肌电图成正比。测试了六个难度指标,改变了目标大小和距离。我们检查了两项性能指标:运动时间(MT)和成功率。滤波器对MT和成功率均有显著影响。MT遵循菲茨定律,并且在使用贝叶斯滤波器时,速度 - 准确性关系表现出显著更高的通道容量。由于贝叶斯滤波器的错误率较低且控制更平滑,受试者使用它时似乎不那么谨慎。这些发现表明,贝叶斯滤波可能是肌电控制假肢或通信设备的一个有用组件。
以往的工作主要集中于评估贝叶斯算法作为肌电图的信号处理算法,而本研究评估了贝叶斯算法用于在线肌电控制的情况。换句话说,受试者看到滤波器的输出,并可以调整自己的行为以最佳地使用该滤波器作为一种工具。本研究比较了受试者如何使用贝叶斯算法与线性算法来调整肌电行为。