Shirzadi Mehdi, Marateb Hamid Reza, Rojas-Martínez Mónica, Mansourian Marjan, Botter Alberto, Vieira Dos Anjos Fabio, Martins Vieira Taian, Mañanas Miguel Angel
Automatic Control Department (ESAII), Biomedical Engineering Research Centre (CREB), Universitat Politècnica de Catalunya-Barcelona Tech (UPC), Barcelona, Spain.
Biomedical Engineering Department, Engineering Faculty, University of Isfahan, Isfahan, Iran.
Front Physiol. 2023 Feb 27;14:1098225. doi: 10.3389/fphys.2023.1098225. eCollection 2023.
Surface electromyography (sEMG) is a signal consisting of different motor unit action potential trains and records from the surface of the muscles. One of the applications of sEMG is the estimation of muscle force. We proposed a new real-time convex and interpretable model for solving the sEMG-force estimation. We validated it on the upper limb during isometric voluntary flexions-extensions at 30%, 50%, and 70% Maximum Voluntary Contraction in five subjects, and lower limbs during standing tasks in thirty-three volunteers, without a history of neuromuscular disorders. Moreover, the performance of the proposed method was statistically compared with that of the state-of-the-art (13 methods, including linear-in-the-parameter models, Artificial Neural Networks and Supported Vector Machines, and non-linear models). The envelope of the sEMG signals was estimated, and the representative envelope of each muscle was used in our analysis. The convex form of an exponential EMG-force model was derived, and each muscle's coefficient was estimated using the Least Square method. The goodness-of-fit indices, the residual signal analysis (bias and Bland-Altman plot), and the running time analysis were provided. For the entire model, 30% of the data was used for estimation, while the remaining 20% and 50% were used for validation and testing, respectively. The average R-square (%) of the proposed method was 96.77 ± 1.67 [94.38, 98.06] for the test sets of the upper limb and 91.08 ± 6.84 [62.22, 96.62] for the lower-limb dataset (MEAN ± SD [min, max]). The proposed method was not significantly different from the recorded force signal (-value = 0.610); that was not the case for the other tested models. The proposed method significantly outperformed the other methods (-value < 0.05). The average running time of each 250 ms signal of the training and testing of the proposed method was 25.7 ± 4.0 [22.3, 40.8] and 11.0 ± 2.9 [4.7, 17.8] in microseconds for the entire dataset. The proposed convex model is thus a promising method for estimating the force from the joints of the upper and lower limbs, with applications in load sharing, robotics, rehabilitation, and prosthesis control for the upper and lower limbs.
表面肌电图(sEMG)是一种由不同运动单位动作电位序列组成的信号,从肌肉表面记录得到。sEMG的应用之一是肌肉力量估计。我们提出了一种新的实时凸性且可解释的模型来解决sEMG-力量估计问题。我们在五名受试者进行30%、50%和70%最大自主收缩的等长自愿屈伸上肢运动时,以及在33名无神经肌肉疾病病史的志愿者进行站立任务时的下肢运动中对其进行了验证。此外,将所提方法的性能与当前最先进的方法(13种方法,包括参数线性模型、人工神经网络和支持向量机以及非线性模型)进行了统计学比较。估计了sEMG信号的包络,并在分析中使用了每块肌肉的代表性包络。推导了指数型肌电图-力量模型的凸形式,并使用最小二乘法估计了每块肌肉的系数。提供了拟合优度指标、残差信号分析(偏差和布兰德-奥特曼图)以及运行时间分析。对于整个模型,30%的数据用于估计,而其余的20%和50%分别用于验证和测试。对于上肢测试集,所提方法的平均决定系数(%)为96.77±1.67 [94.38, 98.06],对于下肢数据集为91.08±6.84 [62.22, 96.62](均值±标准差[最小值, 最大值])。所提方法与记录的力量信号无显著差异(p值 = 0.610);其他测试模型则不然。所提方法显著优于其他方法(p值 < 0.05)。对于整个数据集,所提方法训练和测试的每250毫秒信号的平均运行时间分别为25.7±4.0 [22.3, 40.8]和11.0±2.9 [4.7, 17.8]微秒。因此,所提凸模型是一种用于估计上肢和下肢关节力量的有前景的方法,可应用于负荷分担、机器人技术、康复以及上肢和下肢的假肢控制。