Department of Neurobiology, Duke University, Durham, United States.
Department of Organismal Biology and Anatomy, University of Chicago, Chicago, United States.
Elife. 2023 May 11;12:e77690. doi: 10.7554/eLife.77690.
The primary motor cortex has been shown to coordinate movement preparation and execution through computations in approximately orthogonal subspaces. The underlying network mechanisms, and the roles played by external and recurrent connectivity, are central open questions that need to be answered to understand the neural substrates of motor control. We develop a recurrent neural network model that recapitulates the temporal evolution of neuronal activity recorded from the primary motor cortex of a macaque monkey during an instructed delayed-reach task. In particular, it reproduces the observed dynamic patterns of covariation between neural activity and the direction of motion. We explore the hypothesis that the observed dynamics emerges from a synaptic connectivity structure that depends on the preferred directions of neurons in both preparatory and movement-related epochs, and we constrain the strength of both synaptic connectivity and external input parameters from data. While the model can reproduce neural activity for multiple combinations of the feedforward and recurrent connections, the solution that requires minimum external inputs is one where the observed patterns of covariance are shaped by external inputs during movement preparation, while they are dominated by strong direction-specific recurrent connectivity during movement execution. Our model also demonstrates that the way in which single-neuron tuning properties change over time can explain the level of orthogonality of preparatory and movement-related subspaces.
初级运动皮层通过在大约正交的子空间中的计算来协调运动准备和执行。理解运动控制的神经基础,需要回答潜在的网络机制以及外部和递归连接所扮演的角色这两个核心开放性问题。我们开发了一个递归神经网络模型,该模型再现了猕猴初级运动皮层在指示性延迟到达任务期间记录的神经元活动的时间演化。具体来说,它再现了观察到的神经元活动与运动方向之间的协变的动态模式。我们探索了这样一种假设,即观察到的动力学是从依赖于准备和运动相关时期神经元的首选方向的突触连接结构中产生的,并且我们从数据中约束了突触连接和外部输入参数的强度。虽然该模型可以再现具有多种前馈和递归连接组合的神经活动,但需要最小外部输入的解决方案是,在运动准备期间,外部输入塑造了观察到的协方差模式,而在运动执行期间,它们则由强的方向特异性递归连接主导。我们的模型还表明,随时间变化的单个神经元调谐特性的变化方式可以解释准备和运动相关子空间的正交程度。