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EMG Pattern Recognition for Persons with Cervical Spinal Cord Injury

机译:颈脊髓损伤患者的肌电图模式识别

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Pattern recognition based myoelectric control has been widely explored in the field of prosthetics, but little work has extended to other patient groups. Individuals with neurological injuries such as spinal cord injury may also benefit from more intuitive control that may facilitate more interactive treatments or improved control of functional electrical stimulation (FES) systems or assistive technologies. This work presents a pilot study with 10 individuals with cervical spinal cord injury between A and C on the American Spinal Injury Association Impairment Scale. Subjects attempted to elicit 10 classes of forearm and hand movements while their electromyogram (EMG) was recorded using a cuff of eight electrodes. Various well-known EMG features were evaluated using a linear discriminant analysis classifier, yielding classification error rates as low as 4.3% ± 3.9 across the 10 classes. Reducing the number of classes to five, those required to control a commercial therapeutic FES device, further reduced the error rates to (2.2% ± 4.4). Results from this study provide evidence supporting continued exploration of EMG pattern recognition techniques for use by high-level spinal cord injured populations as a method of intuitive control over interactive FES systems or assistive devices.
机译:在假肢领域,基于模式识别的肌电控制已经得到了广泛的探索,但是几乎没有工作扩展到其他患者群体。患有神经损伤(例如脊髓损伤)的个人也可能会受益于更直观的控制,这可能有助于进行更多的交互治疗或改善对功能性电刺激(FES)系统或辅助技术的控制。这项工作以美国脊髓损伤协会损伤量表对10名A和C之间的颈脊髓损伤患者进行了一项初步研究。在尝试使用八个电极的袖带记录其肌电图(EMG)时,受试者试图引发10类前臂和手部运动。使用线性判别分析分类器评估了各种众所周知的EMG功能,在10个类别中产生的分类错误率低至4.3%±3.9。将控制商用治疗性FES设备所需的类别数量减少到五种,可以进一步将错误率降低到(2.2%±4.4)。这项研究的结果提供了证据,支持继续探索肌电图模式识别技术,供高水平脊髓损伤人群使用,作为对交互式FES系统或辅助设备进行直观控制的方法。

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