Department of Neurology and Brain Imaging Center, Goethe University Frankfurt, Frankfurt, Germany.
Univ. Grenoble Alpes, CNRS, Grenoble INP, GIPSA-lab, Grenoble, France.
Nat Rev Neurosci. 2023 May;24(5):313-329. doi: 10.1038/s41583-023-00691-z. Epub 2023 Mar 30.
Wilful movement requires neural control. Commonly, neural computations are thought to generate motor commands that bring the musculoskeletal system - that is, the plant - from its current physical state into a desired physical state. The current state can be estimated from past motor commands and from sensory information. Modelling movement on the basis of this concept of plant control strives to explain behaviour by identifying the computational principles for control signals that can reproduce the observed features of movements. From an alternative perspective, movements emerge in a dynamically coupled agent-environment system from the pursuit of subjective perceptual goals. Modelling movement on the basis of this concept of perceptual control aims to identify the controlled percepts and their coupling rules that can give rise to the observed characteristics of behaviour. In this Perspective, we discuss a broad spectrum of approaches to modelling human motor control and their notions of control signals, internal models, handling of sensory feedback delays and learning. We focus on the influence that the plant control and the perceptual control perspective may have on decisions when modelling empirical data, which may in turn shape our understanding of actions.
自主运动需要神经控制。通常认为,神经计算生成运动指令,将骨骼肌肉系统(即植物)从当前物理状态转变为期望的物理状态。当前状态可以根据过去的运动指令和感觉信息进行估计。基于植物控制的这一概念来建模运动,旨在通过识别控制信号的计算原则来解释行为,这些控制信号可以再现运动的观察特征。从另一个角度来看,运动是从追求主观感知目标的动态耦合代理-环境系统中涌现出来的。基于感知控制的概念来建模运动,旨在确定可以产生观察到的行为特征的受控感知及其耦合规则。在本观点中,我们讨论了广泛的建模人类运动控制的方法及其控制信号、内部模型、处理感觉反馈延迟和学习的概念。我们重点讨论了在对经验数据进行建模时,植物控制和感知控制观点可能对决策产生的影响,这反过来可能会影响我们对动作的理解。