Kinematic-Muscular Synergies Describe Human Locomotion with a Set of Functional Synergies.

IF 3.4 3区 医学 Q1 ENGINEERING, MULTIDISCIPLINARY Biomimetics Pub Date : 2024-10-13 DOI:10.3390/biomimetics9100619
Valentina Lanzani, Cristina Brambilla, Alessandro Scano
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Abstract

Kinematics, kinetics and biomechanics of human gait are widely investigated fields of research. The biomechanics of locomotion have been described as characterizing muscle activations and synergistic control, i.e., spatial and temporal patterns of coordinated muscle groups and joints. Both kinematic synergies and muscle synergies have been extracted from locomotion data, showing that in healthy people four-five synergies underlie human locomotion; such synergies are, in general, robust across subjects and might be altered by pathological gait, depending on the severity of the impairment. In this work, for the first time, we apply the mixed matrix factorization algorithm to the locomotion data of 15 healthy participants to extract hybrid kinematic-muscle synergies and show that they allow us to directly link task space variables (i.e., kinematics) to the neural structure of muscle synergies. We show that kinematic-muscle synergies can describe the biomechanics of motion to a better extent than muscle synergies or kinematic synergies alone. Moreover, this study shows that at a functional level, modular control of the lower limb during locomotion is based on an increased number of functional synergies with respect to standard muscle synergies and accounts for different biomechanical roles that each synergy may have within the movement. Kinematic-muscular synergies may have impact in future work for a deeper understanding of modular control and neuro-motor recovery in the medical and rehabilitation fields, as they associate neural and task space variables in the same factorization. Applications include the evaluation of post-stroke, Parkinson's disease and cerebral palsy patients, and for the design and development of robotic devices and exoskeletons during walking.

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运动-肌肉协同用一组功能协同来描述人类的运动。
人类步态的运动学、动力学和生物力学是广泛研究的领域。运动生物力学被描述为肌肉激活和协同控制的特征,即肌肉群和关节协调的空间和时间模式。运动学协同作用和肌肉协同作用都是从运动数据中提取出来的,结果表明,在健康人身上,四到五种协同作用是人类运动的基础;一般来说,这种协同作用在不同的受试者身上都是稳健的,病理步态可能会改变这种协同作用,这取决于损伤的严重程度。在这项研究中,我们首次将混合矩阵因式分解算法应用于 15 名健康参与者的运动数据,以提取混合运动学-肌肉协同作用,并证明它们允许我们将任务空间变量(即运动学)与肌肉协同作用的神经结构直接联系起来。我们的研究表明,运动学-肌肉协同作用能比单独的肌肉协同作用或运动学协同作用更好地描述运动的生物力学。此外,这项研究还表明,在功能层面上,与标准肌肉协同作用相比,运动过程中对下肢的模块化控制是以更多的功能协同作用为基础的,并且考虑到了每种协同作用在运动中可能发挥的不同生物力学作用。由于运动肌肉协同作用将神经和任务空间变量关联在同一因数分解中,因此可能会对未来工作产生影响,从而加深医疗和康复领域对模块化控制和神经运动恢复的理解。其应用包括评估中风后遗症、帕金森病和脑瘫患者,以及设计和开发行走过程中的机器人设备和外骨骼。
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来源期刊
Biomimetics
Biomimetics Biochemistry, Genetics and Molecular Biology-Biotechnology
CiteScore
3.50
自引率
11.10%
发文量
189
审稿时长
11 weeks
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