Petersen Eike, Buchner Herbert, Eger Marcus, Rostalski Philipp
Institute for Electrical Engineering in Medicine, University of Lübeck.
University of Cambridge, Department of Engineering, Cambridge.
Biomed Tech (Berl). 2017 Apr 1;62(2):171-181. doi: 10.1515/bmt-2016-0092.
Electromyography (EMG) has long been used for the assessment of muscle function and activity and has recently been applied to the control of medical ventilation. For this application, the EMG signal is usually recorded invasively by means of electrodes on a nasogastric tube which is placed inside the esophagus in order to minimize noise and crosstalk from other muscles. Replacing these invasive measurements with an EMG signal obtained non-invasively on the body surface is difficult and requires techniques for signal separation in order to reconstruct the contributions of the individual respiratory muscles. In the case of muscles with small cross-sectional areas, or with muscles at large distances from the recording site, solutions to this problem have been proposed previously. The respiratory muscles, however, are large and distributed widely over the upper body volume. In this article, we describe an algorithm for convolutive blind source separation (BSS) that performs well even for large, distributed muscles such as the respiratory muscles, while using only a small number of electrodes. The algorithm is derived as a special case of the TRINICON general framework for BSS. To provide evidence that it shows potential for separating inspiratory, expiratory, and cardiac activities in practical applications, a joint numerical simulation of EMG and ECG activities was performed, and separation success was evaluated in a variety of noise settings. The results are promising.
肌电图(EMG)长期以来一直用于评估肌肉功能和活动,最近已应用于医疗通气控制。对于此应用,EMG信号通常通过放置在食管内的鼻胃管上的电极进行侵入性记录,以尽量减少来自其他肌肉的噪声和串扰。用在身体表面非侵入性获得的EMG信号取代这些侵入性测量是困难的,并且需要信号分离技术来重建各个呼吸肌的贡献。对于横截面积小的肌肉或距离记录部位较远的肌肉,此前已经提出了解决这个问题的方法。然而,呼吸肌体积大且广泛分布在上半身。在本文中,我们描述了一种用于卷积盲源分离(BSS)的算法,即使对于像呼吸肌这样大的、分布广泛的肌肉,该算法也能很好地运行,同时仅使用少量电极。该算法是作为BSS的TRINICON通用框架的一个特例推导出来的。为了证明它在实际应用中具有分离吸气、呼气和心脏活动的潜力,进行了EMG和ECG活动的联合数值模拟,并在各种噪声设置下评估了分离成功率。结果很有前景。