Laboratory for Engineering of the Neuromuscular System, Politecnico di Torino, Torino, Italy.
J Biomech. 2010 Aug 10;43(11):2149-58. doi: 10.1016/j.jbiomech.2010.03.049. Epub 2010 May 4.
Surface electromyograms (EMGs) recorded with a couple of electrodes are meant to comprise representative information of the whole muscle activation. Nonetheless, regional variations in neuromuscular activity seem to occur in numerous conditions, from standing to passive muscle stretching. In this study, we show how local activation of skeletal muscles can be automatically tracked from EMGs acquired with a bi-dimensional grid of surface electrodes (a grid of 8 rows and 15 columns was used). Grayscale images were created from simulated and experimental EMGs, filtered and segmented into clusters of activity with the watershed algorithm. The number of electrodes on each cluster and the mean level of neuromuscular activity were used to assess the accuracy of the segmentation of simulated signals. Regardless of the noise level, thickness of fat tissue and acquisition configuration (monopolar or single differential), the segmentation accuracy was above 60%. Accuracy values peaked close to 95% when pixels with intensity below approximately 70% of maximal EMG amplitude in each segmented cluster were excluded. When simulating opposite variations in the activity of two adjacent muscles, watershed segmentation produced clusters of activity consistently centered on each simulated portion of active muscle and with mean amplitude close to the simulated value. Finally, the segmentation algorithm was used to track spatial variations in the activity, within and between medial and lateral gastrocnemius muscles, during isometric plantar flexion contraction and in quiet standing position. In both cases, the regionalization of neuromuscular activity occurred and was consistently identified with the segmentation method.
表面肌电图(EMG)通过几个电极记录,旨在包含整个肌肉激活的代表性信息。然而,在许多情况下,从站立到被动肌肉拉伸,神经肌肉活动的区域变化似乎都会发生。在这项研究中,我们展示了如何从二维表面电极网格(使用 8 行 15 列的网格)获取的 EMG 自动跟踪骨骼肌的局部激活。从模拟和实验 EMG 创建灰度图像,使用分水岭算法对活动进行滤波和分割成簇。每个簇的电极数量和神经肌肉活动的平均水平用于评估模拟信号分割的准确性。无论噪声水平、脂肪组织的厚度和采集配置(单极或单差分)如何,分割准确性均高于 60%。当排除每个分割簇中强度低于最大 EMG 幅度约 70%的像素时,准确性值接近 95%。当模拟两个相邻肌肉的活动相反变化时,分水岭分割产生的活动簇始终集中在每个模拟活动肌肉部分上,平均幅度接近模拟值。最后,该分割算法用于跟踪等长跖屈收缩和安静站立期间内侧和外侧比目鱼肌内和之间的活动空间变化。在这两种情况下,神经肌肉活动的区域化都发生了,并通过分割方法一致地识别出来。