Department of Organismal Biology and Anatomy, The University of Chicago, Chicago, IL, 60637, USA.
Neuroscience Institute, The University of Chicago, Chicago, IL, 60637, USA.
Nat Commun. 2024 Aug 15;15(1):7007. doi: 10.1038/s41467-024-51308-7.
During reaching, neurons in motor cortex exhibit complex, time-varying activity patterns. Though single-neuron activity correlates with movement parameters, movement correlations explain neural activity only partially. Neural responses also reflect population-level dynamics thought to generate outputs. These dynamics have previously been described as "rotational," such that activity orbits in neural state space. Here, we reanalyze reaching datasets from male Rhesus macaques and find two essential features that cannot be accounted for with standard dynamics models. First, the planes in which rotations occur differ for different reaches. Second, this variation in planes reflects the overall location of activity in neural state space. Our "location-dependent rotations" model fits nearly all motor cortex activity during reaching, and high-quality decoding of reach kinematics reveals a quasilinear relationship with spiking. Varying rotational planes allows motor cortex to produce richer outputs than possible under previous models. Finally, our model links representational and dynamical ideas: representation is present in the state space location, which dynamics then convert into time-varying command signals.
在伸手过程中,运动皮层中的神经元表现出复杂的、时变的活动模式。尽管单个神经元的活动与运动参数相关,但运动相关性仅能部分解释神经活动。神经反应还反映了被认为产生输出的群体水平动态。这些动态以前被描述为“旋转”,即活动在神经状态空间中旋转。在这里,我们重新分析了雄性恒河猴的伸手数据集,发现了两个不能用标准动力学模型解释的基本特征。首先,不同的伸手动作发生旋转的平面不同。其次,这种平面的变化反映了神经状态空间中活动的整体位置。我们的“位置相关旋转”模型几乎可以拟合伸手过程中运动皮层的所有活动,并且对运动学的高质量解码揭示了与尖峰的准线性关系。旋转平面的变化使得运动皮层能够产生比以前的模型更丰富的输出。最后,我们的模型将表示和动力学的思想联系起来:表示存在于状态空间的位置,而动力学则将其转化为时变的命令信号。