通过协同外推(Synx)和肌电驱动建模预测上肢肌肉激活模式。

IF 1.7 4区 医学 Q4 BIOPHYSICS Journal of Biomechanical Engineering-Transactions of the Asme Pub Date : 2024-01-01 DOI:10.1115/1.4063899
Shadman Tahmid, Josep M Font-Llagunes, James Yang
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引用次数: 0

摘要

神经肌肉疾病患者无法产生必要的肌肉力量,难以维持日常生活所需的关节力矩。测量神经肌肉疾病患者的肌肉力量很重要,但具有挑战性。EMG可以用于获得肌肉激活值。单独使用表面电极的EMG驱动建模可能会低估净扭矩。在这项研究中,我们提出了一种从上肢深部肌肉预测肌肉激活的方法。该方法通过结合EMG驱动的肌肉骨骼模型和肌肉协同作用,一次发现一块缺失的肌肉激活。该方法跟踪反向动力学关节力矩,以确定协同向量权重,并预测健康受试者选定肩部和肘部肌肉的肌肉激活。此外,肌腱参数值(最佳纤维长度、肌腱松弛长度和最大等长力)已针对实验对象进行了个性化设置。该方法被测试用于健康受试者的上肢的广泛康复任务。结果表明,对于一个自由度(DoF)任务,它可以确定肘部和肩部肌肉的单个未测量肌肉激活,Pearson相关系数(R)分别为0.99(均方根误差,RMSE=0.001)和0.92(RMSE=0.13)。对于更复杂的五个DoF任务,激活预测精度可以达到R=0.71(RMSE=0.29)。
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Upper Extremity Muscle Activation Pattern Prediction Through Synergy Extrapolation and Electromyography-Driven Modeling.

Patients with neuromuscular disease fail to produce necessary muscle force and have trouble maintaining joint moment required to perform activities of daily living. Measuring muscle force values in patients with neuromuscular disease is important but challenging. Electromyography (EMG) can be used to obtain muscle activation values, which can be converted to muscle forces and joint torques. Surface electrodes can measure activations of superficial muscles, but fine-wire electrodes are needed for deep muscles, although it is invasive and require skilled personnel and preparation time. EMG-driven modeling with surface electrodes alone could underestimate the net torque. In this research, authors propose a methodology to predict muscle activations from deeper muscles of the upper extremity. This method finds missing muscle activation one at a time by combining an EMG-driven musculoskeletal model and muscle synergies. This method tracks inverse dynamics joint moments to determine synergy vector weights and predict muscle activation of selected shoulder and elbow muscles of a healthy subject. In addition, muscle-tendon parameter values (optimal fiber length, tendon slack length, and maximum isometric force) have been personalized to the experimental subject. The methodology is tested for a wide range of rehabilitation tasks of the upper extremity across multiple healthy subjects. Results show this methodology can determine single unmeasured muscle activation up to Pearson's correlation coefficient (R) of 0.99 (root mean squared error, RMSE = 0.001) and 0.92 (RMSE = 0.13) for the elbow and shoulder muscles, respectively, for one degree-of-freedom (DoF) tasks. For more complicated five DoF tasks, activation prediction accuracy can reach up to R = 0.71 (RMSE = 0.29).

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来源期刊
CiteScore
3.40
自引率
5.90%
发文量
169
审稿时长
4-8 weeks
期刊介绍: Artificial Organs and Prostheses; Bioinstrumentation and Measurements; Bioheat Transfer; Biomaterials; Biomechanics; Bioprocess Engineering; Cellular Mechanics; Design and Control of Biological Systems; Physiological Systems.
期刊最新文献
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