摘要

Locomotion can be investigated by factorization of electromyographic (EMG) signals, e.g., with non-negative matrix factorization (NMF). This approach is a convenient concise representation of muscle activities as distributed in motor modules, activated in specific gait phases. For applying NMF, the EMG signals are analyzed either as single trials, or as averaged EMG, or as concatenated EMG (data structure). The aim of this study is to investigate the influence of the data structure on the extracted motor modules. Twelve healthy men walked at their preferred speed on a treadmill while surface EMG signals were recorded for 60 s from 10 lower limb muscles. Motor modules representing relative weightings of synergistic muscle activations were extracted by NMF from 40 step cycles separately (EMG(SNG)), from averaging 2, 3, 5, 10, 20, and 40 consecutive cycles (EMG(AVR)), and from the concatenation of the same sets of consecutive cycles (EMG(CNC)). Five motor modules were sufficient to reconstruct the original EMG datasets (reconstruction quality %26gt;90%), regardless of the type of data structure used. However, EMG(CNC) was associated with a slightly reduced reconstruction quality with respect to EMG(AVR). Most motor modules were similar when extracted from different data structures (similarity %26gt;0.85). However, the quality of the reconstructed 40-step EMG(CNC) datasets when using the muscle weightings from EMG(AVR) was low (reconstruction quality similar to 40%). On the other hand, the use of weightings from EMG(CNC) for reconstructing this long period of locomotion provided higher quality, especially using 20 concatenated steps (reconstruction quality similar to 80%). Although EMG(SNG) and EMG(AVR) showed a higher reconstruction quality for short signal intervals, these data structures did not account for step-to-step variability. The results of this study provide practical guidelines on the methodological aspects of synergistic muscle activation extraction from EMG during locomotion.

  • 出版日期2014-5-23