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Differences in EMG Feature Space between Able-Bodied and Amputee Subjects for Myoelectric Control

机译:肌电控制对象与肢体健康对象之间的肌电特征空间差异

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Difficulties accessing amputee populations has resulted in the widespread adoption of able-bodied subjects in virtual environments for the development of myoelectric prostheses. Factors such as scar tissue, different physiologies or surgical outcomes, and reduced visual and proprioceptive feedback, however, may contribute to differences in electromyogram (EMG) patterns between these groups. As such, studies have consistently found worse results when comparing the performance of amputee subjects to that of their able-bodied counterparts under the same conditions. To identify the source of this performance degradation, a topology-based data analysis method, called Mapper, was employed to visualize the "shape" of EMG feature spaces derived from amputee and able-bodied subjects. The information content of amputee EMG features was found to differ from those of non-amputee subject in three ways: 1) the loss of nonlinear complexity and frequency information, 2) the loss of time-series modeling information, and 3) the segmentation of unique information. The empirical effects of these differences were visualized by classifying motion classes using consistent and migratory features from functional feature groups. In summary, this work characterized inconsistencies in EMG features between amputee and able-bodied populations by theoretical means, highlighted the empirical effects when these are ignored, and proposed a solution for future studies with able-bodied subjects.
机译:难以接近截肢者人群导致身体健壮的受试者在虚拟环境中被广泛采用以开发肌电假体。但是,诸如疤痕组织,不同的生理学或手术结果以及视觉和本体感受反馈减少等因素可能会导致这些组之间的肌电图(EMG)模式有所不同。因此,在相同条件下,将被截肢者的身体状况与其健全的身体状况进行比较时,研究始终发现较差的结果。为了确定这种性能下降的根源,采用了一种称为Mapper的基于拓扑的数据分析方法,以可视化从截肢者和身体强壮的受试者衍生的EMG特征空间的“形状”。发现截肢者的肌电图特征的信息内容与非截肢者的信息在三个方面有所不同:1)非线性复杂性和频率信息的损失; 2)时间序列建模信息的损失; 3)细分。独特的信息。通过使用功能要素组中一致的和迁移的要素对运动类别进行分类,可以直观地看到这些差异的经验效果。总之,这项工作通过理论手段表征了截肢者和健全人群之间的肌电图特征不一致,强调了忽略这些因素时的经验效应,并提出了针对健全主体的未来研究的解决方案。

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