Rosa Igor da Guia, Garcia Marco Antonio Cavalcanti, Souza Marcio Nogueira de
Biomedical Engineering Program - COPPE, Federal University of Rio de Janeiro, Brazil.
Comput Methods Programs Biomed. 2008 Mar;89(3):269-74. doi: 10.1016/j.cmpb.2007.10.009. Epub 2007 Dec 27.
Mathematical simulation has been widely used in biomedical and biological sciences. In the case of the surface electromyographic (SEMG) activity, some models have been proposed aiming to study muscle contraction strategies that are used during different tasks and conditions. Most of SEMG simulators are based on energy modulation of a Gaussian noise. This work proposes a novel simulator in which the user-defined parameters are associated with the motor units (MUs) recruitment and their firing rate. Comparison between the mean spectrum of real SEMG signals collected in isometric contraction of the muscle biceps brachii and the mean spectrum obtained from simulated SEMG signals showed a good agreement, pointing the proposed simulator seems to be capable to generate consistent electromyographic signals in time and frequency domains and that can be used in many studies, in particular in the evaluation of automatic methods aimed to detect muscular contraction.
数学模拟已在生物医学和生物科学中广泛应用。就表面肌电图(SEMG)活动而言,已提出一些模型,旨在研究在不同任务和条件下使用的肌肉收缩策略。大多数SEMG模拟器基于高斯噪声的能量调制。这项工作提出了一种新颖的模拟器,其中用户定义的参数与运动单位(MU)的募集及其放电率相关联。在肱二头肌等长收缩中采集的真实SEMG信号的平均频谱与模拟SEMG信号获得的平均频谱之间的比较显示出良好的一致性,表明所提出的模拟器似乎能够在时域和频域中生成一致的肌电信号,并且可用于许多研究,特别是在评估旨在检测肌肉收缩的自动方法方面。