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An EMG-driven musculoskeletal model to predict muscle forces during performing a weight training exercise with a dumbbell

机译:一种EMG驱动的肌肉骨骼模型,以预测哑铃进行体重训练运动期间肌肉力量

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Musculoskeletal system of human body is a redundant system and as a result, employing only inverse dynamics techniques to obtain muscle forces would lead to a dead end. Using EMG signals in order to obtain muscle forces, has been used extensively. In this study, in order to predict muscle forces of elbow flexors (Biceps brachii, brachioradialis, and brachialis) and extensors (Triceps brachii) during flexion/extension weight training with a dumbbell, a hybrid EMG-driven method has been implemented. 6 subjects (4 women and 2 men) were volunteered for the experiments. During performing the action, using a high speed camera and a muscle tester device, kinematic information and EMG signals were obtained, respectively. Besides, exploiting manual muscle testing method, maximum voluntary contraction of all of the mentioned muscles for each subject has been measured. The EMG-driven method, incorporated a forward and an inverse dynamics approach, and by comparing the joint moments obtained from these two routines, the unknown variables of the model (electromechanical delay, shape factor, excitation filter coefficients) were obtained. Finally, in order to compare the virtue of the muscle forces, these results were compared with the same results obtained from a static optimization method (objective function: sum of squared muscle forces). Conducting a two-way ANOVA for comparing the results, a significant difference between the two results, has been observed (P < 0.005).
机译:人体的肌肉骨骼系统是一种冗余系统,结果只采用逆动力学技术来获得肌肉力会导致死胡同。使用EMG信号以获得肌肉力,已广泛使用。在这项研究中,为了预测弯头屈肌(二头肌Brachii,Brachioradialis和Brachialis)和延伸器(三头肌肉Brachii)的肌肉力,并利用哑铃训练,已经实现了一种混合的EMG驱动方法。实验自愿为6项受试者(4名女性和2名男子)。在执行动作期间,使用高速相机和肌肉测试器设备,获得运动信息和EMG信号。此外,利用手动肌肉测试方法,已经测量了每个受试者所有提到的肌肉的最大自愿收缩。 EMG驱动方法,并入前向和逆动力学方法,并通过比较从这两个例程中获得的联合矩,获得模型的未知变量(机电延迟,形状因子,激发滤波器系数)。最后,为了比较肌肉力的德形,将这些结果与从静态优化方法获得的相同结果进行比较(目标函数:平方肌力的总和)。进行双向ANOVA以比较结果,已经观察到两种结果之间的显着差异(P <0.005)。

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