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Characterization of Human Motor Units From Surface EMG Decomposition

机译:从表面肌电图分解表征人体电机

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Motor units are the smallest functional units of our movements. The study of their activation provides a window into the mechanisms of neural control of movement in humans. The classic methods for motor unit investigations date to several decades ago. They are based on invasive recordings with selective needle or wire electrodes. Conversely, the noninvasive (surface) EMG has been commonly processed as an interference signal, with the extraction of its global characteristics, e.g., amplitude. These characteristics, however, are only crudely associated to the underlying motor unit activities. In the last decade, methods have been proposed for reliably extracting individual motor unit activities from the interference surface EMG signal. We describe these methods in this review, with a focus on blind source separation (BSS) and techniques used on decomposed EMG signals. For example, from the motor unit discharge timings, information can be extracted regarding the synaptic input received by the corresponding motor neurons. In reviewing these methods, we also provide examples of applications in representative conditions, such as pathological tremor. In conclusion, we provide an overview of processing methods of the surface EMG signal that allow a reliable characterization of individual motor units in humans.
机译:电机单元是我们机芯中最小的功能单元。对它们激活的研究为了解人类运动的神经控制机制提供了一个窗口。运动单位研究的经典方法可以追溯到几十年前。它们基于具有选择性针或线电极的侵入式记录。相反,非侵入性(表面)EMG通常被处理为干扰信号,并提取其整体特征,例如幅度。但是,这些特性仅与基础的电机单元活动粗略相关。在过去的十年中,已经提出了从干涉表面EMG信号中可靠地提取单个电机单元活动的方法。我们在这篇综述中描述了这些方法,重点是盲源分离(BSS)和用于分解的EMG信号的技术。例如,从运动单元放电定时,可以提取关于由相应运动神经元接收的突触输入的信息。在回顾这些方法时,我们还提供了在典型条件下(例如病理性震颤)的应用示例。总之,我们概述了表面肌电信号的处理方法,这些方法可以可靠地表征人体中各个运动单元。

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