Akhlaghi Nima, Baker Clayton A, Lahlou Mohamed, Zafar Hozaifah, Murthy Karthik G, Rangwala Huzefa S, Kosecka Jana, Joiner Wilsaan M, Pancrazio Joseph J, Sikdar Siddhartha
IEEE Trans Biomed Eng. 2016 Aug;63(8):1687-98. doi: 10.1109/TBME.2015.2498124. Epub 2015 Nov 5.
Surface electromyography (sEMG) has been the predominant method for sensing electrical activity for a number of applications involving muscle-computer interfaces, including myoelectric control of prostheses and rehabilitation robots. Ultrasound imaging for sensing mechanical deformation of functional muscle compartments can overcome several limitations of sEMG, including the inability to differentiate between deep contiguous muscle compartments, low signal-to-noise ratio, and lack of a robust graded signal. The objective of this study was to evaluate the feasibility of real-time graded control using a computationally efficient method to differentiate between complex hand motions based on ultrasound imaging of forearm muscles. Dynamic ultrasound images of the forearm muscles were obtained from six able-bodied volunteers and analyzed to map muscle activity based on the deformation of the contracting muscles during different hand motions. Each participant performed 15 different hand motions, including digit flexion, different grips (i.e., power grasp and pinch grip), and grips in combination with wrist pronation. During the training phase, we generated a database of activity patterns corresponding to different hand motions for each participant. During the testing phase, novel activity patterns were classified using a nearest neighbor classification algorithm based on that database. The average classification accuracy was 91%. Real-time image-based control of a virtual hand showed an average classification accuracy of 92%. Our results demonstrate the feasibility of using ultrasound imaging as a robust muscle-computer interface. Potential clinical applications include control of multiarticulated prosthetic hands, stroke rehabilitation, and fundamental investigations of motor control and biomechanics.
表面肌电图(sEMG)一直是许多涉及肌肉-计算机接口应用中检测电活动的主要方法,包括假肢和康复机器人的肌电控制。用于检测功能性肌肉区域机械变形的超声成像可以克服sEMG的一些局限性,包括无法区分深部相邻肌肉区域、低信噪比以及缺乏强大的分级信号。本研究的目的是评估使用一种计算效率高的方法基于前臂肌肉超声成像来区分复杂手部动作进行实时分级控制的可行性。从六名身体健全的志愿者获取前臂肌肉的动态超声图像,并基于不同手部动作期间收缩肌肉的变形进行分析以绘制肌肉活动图。每位参与者执行15种不同的手部动作,包括手指屈曲、不同抓握方式(即强力抓握和捏握)以及与手腕旋前相结合的抓握。在训练阶段,我们为每位参与者生成了对应不同手部动作的活动模式数据库。在测试阶段,基于该数据库使用最近邻分类算法对新的活动模式进行分类。平均分类准确率为91%。对虚拟手进行基于图像的实时控制显示平均分类准确率为92%。我们的结果证明了使用超声成像作为强大的肌肉-计算机接口的可行性。潜在的临床应用包括多关节假手的控制、中风康复以及运动控制和生物力学的基础研究。