Learning Algorithms and Systems Laboratory (LASA), School of Engineering, École Polytechnique Fédérale de Lausanne (EPFL), Route Cantonale, Lausanne, CH-1015, Switzerland.
Center for Bionic Medicine, Shirley Ryan AbilityLab, E Erie St., Chicago, 60611, IL, USA.
J Neuroeng Rehabil. 2018 Jun 26;15(1):57. doi: 10.1186/s12984-018-0396-5.
Active upper-limb prostheses are used to restore important hand functionalities, such as grasping. In conventional approaches, a pattern recognition system is trained over a number of static grasping gestures. However, training a classifier in a static position results in lower classification accuracy when performing dynamic motions, such as reach-to-grasp. We propose an electromyography-based learning approach that decodes the grasping intention during the reaching motion, leading to a faster and more natural response of the prosthesis.
Eight able-bodied subjects and four individuals with transradial amputation gave informed consent and participated in our study. All the subjects performed reach-to-grasp motions for five grasp types, while the elecromyographic (EMG) activity and the extension of the arm were recorded. We separated the reach-to-grasp motion into three phases, with respect to the extension of the arm. A multivariate analysis of variance (MANOVA) on the muscular activity revealed significant differences among the motion phases. Additionally, we examined the classification performance on these phases. We compared the performance of three different pattern recognition methods; Linear Discriminant Analysis (LDA), Support Vector Machines (SVM) with linear and non-linear kernels, and an Echo State Network (ESN) approach. Our off-line analysis shows that it is possible to have high classification performance above 80% before the end of the motion when with three-grasp types. An on-line evaluation with an upper-limb prosthesis shows that the inclusion of the reaching motion in the training of the classifier importantly improves classification accuracy and enables the detection of grasp intention early in the reaching motion.
This method offers a more natural and intuitive control of prosthetic devices, as it will enable controlling grasp closure in synergy with the reaching motion. This work contributes to the decrease of delays between the user's intention and the device response and improves the coordination of the device with the motion of the arm.
主动式上肢假肢用于恢复重要的手部功能,例如抓握。在传统方法中,模式识别系统通过对许多静态抓握手势进行训练来实现。然而,在静态位置训练分类器会导致在执行动态运动(例如伸手抓握)时分类准确性降低。我们提出了一种基于肌电信号的学习方法,该方法可以在伸手运动过程中解码抓握意图,从而使假肢更快、更自然地做出反应。
八名健全的受试者和四名桡骨截肢的受试者均知情同意并参与了我们的研究。所有受试者均进行了五种抓握类型的伸手抓握运动,同时记录了肌电图(EMG)活动和手臂的伸展情况。我们根据手臂的伸展情况将伸手抓握运动分为三个阶段。对肌肉活动进行多元方差分析(MANOVA)发现,运动阶段之间存在显著差异。此外,我们还检查了这些阶段的分类性能。我们比较了三种不同模式识别方法的性能;线性判别分析(LDA)、带有线性和非线性核的支持向量机(SVM)以及回声状态网络(ESN)方法。我们的离线分析表明,在运动结束前,对于三种抓握类型,有可能实现 80%以上的高分类性能。在上肢假肢上进行在线评估表明,在分类器的训练中包含伸手运动可以显著提高分类准确性,并能在伸手运动早期检测到抓握意图。
这种方法为假肢设备提供了一种更自然、更直观的控制方式,因为它将能够与伸手运动协同控制抓握闭合。这项工作有助于减少用户意图和设备响应之间的延迟,并提高设备与手臂运动的协调性。