Modeling Human Suboptimal Control: A Review.

IF 1.1 4区 医学 Q4 ENGINEERING, BIOMEDICAL Journal of Applied Biomechanics Pub Date : 2023-08-16 Print Date: 2023-10-01 DOI:10.1123/jab.2023-0015
Alex Bersani, Giorgio Davico, Marco Viceconti
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引用次数: 1

Abstract

This review paper provides an overview of the approaches to model neuromuscular control, focusing on methods to identify nonoptimal control strategies typical of populations with neuromuscular disorders or children. Where possible, the authors tightened the description of the methods to the mechanisms behind the underlying biomechanical and physiological rationale. They start by describing the first and most simplified approach, the reductionist approach, which splits the role of the nervous and musculoskeletal systems. Static optimization and dynamic optimization methods and electromyography-based approaches are summarized to highlight their limitations and understand (the need for) their developments over time. Then, the authors look at the more recent stochastic approach, introduced to explore the space of plausible neural solutions, thus implementing the uncontrolled manifold theory, according to which the central nervous system only controls specific motions and tasks to limit energy consumption while allowing for some degree of adaptability to perturbations. Finally, they explore the literature covering the explicit modeling of the coupling between the nervous system (acting as controller) and the musculoskeletal system (the actuator), which may be employed to overcome the split characterizing the reductionist approach.

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人类次优控制建模:综述。
这篇综述综述了神经肌肉控制建模的方法,重点是确定神经肌肉疾病或儿童群体典型的非最佳控制策略的方法。在可能的情况下,作者将方法的描述收紧到潜在生物力学和生理学原理背后的机制。他们首先描述了第一种也是最简化的方法,即还原论方法,该方法将神经和肌肉骨骼系统的作用分开。总结了静态优化和动态优化方法以及基于肌电图的方法,以强调它们的局限性,并了解(需要)它们随着时间的推移而发展。然后,作者研究了最近的随机方法,该方法被引入来探索看似合理的神经解决方案的空间,从而实现了不受控制的流形理论,根据该理论,中枢神经系统只控制特定的运动和任务来限制能量消耗,同时允许对扰动有一定程度的适应性。最后,他们探索了涵盖神经系统(充当控制器)和肌肉骨骼系统(致动器)之间耦合的显式建模的文献,这些文献可用于克服还原论方法的分裂特征。
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来源期刊
Journal of Applied Biomechanics
Journal of Applied Biomechanics 医学-工程:生物医学
CiteScore
2.00
自引率
0.00%
发文量
47
审稿时长
6-12 weeks
期刊介绍: The mission of the Journal of Applied Biomechanics (JAB) is to disseminate the highest quality peer-reviewed studies that utilize biomechanical strategies to advance the study of human movement. Areas of interest include clinical biomechanics, gait and posture mechanics, musculoskeletal and neuromuscular biomechanics, sport mechanics, and biomechanical modeling. Studies of sport performance that explicitly generalize to broader activities, contribute substantially to fundamental understanding of human motion, or are in a sport that enjoys wide participation, are welcome. Also within the scope of JAB are studies using biomechanical strategies to investigate the structure, control, function, and state (health and disease) of animals.
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