Zuckerman Mind Brain Behavior Institute, Departments of Neuroscience and Neurology, Columbia University, New York, NY 10027, USA.
Department of Neurology, University of California, San Francisco, San Francisco, CA 94158, USA.
Curr Biol. 2023 Jul 24;33(14):2962-2976.e15. doi: 10.1016/j.cub.2023.06.027. Epub 2023 Jul 3.
It has been proposed that the nervous system has the capacity to generate a wide variety of movements because it reuses some invariant code. Previous work has identified that dynamics of neural population activity are similar during different movements, where dynamics refer to how the instantaneous spatial pattern of population activity changes in time. Here, we test whether invariant dynamics of neural populations are actually used to issue the commands that direct movement. Using a brain-machine interface (BMI) that transforms rhesus macaques' motor-cortex activity into commands for a neuroprosthetic cursor, we discovered that the same command is issued with different neural-activity patterns in different movements. However, these different patterns were predictable, as we found that the transitions between activity patterns are governed by the same dynamics across movements. These invariant dynamics are low dimensional, and critically, they align with the BMI, so that they predict the specific component of neural activity that actually issues the next command. We introduce a model of optimal feedback control (OFC) that shows that invariant dynamics can help transform movement feedback into commands, reducing the input that the neural population needs to control movement. Altogether our results demonstrate that invariant dynamics drive commands to control a variety of movements and show how feedback can be integrated with invariant dynamics to issue generalizable commands.
有人提出,神经系统有能力产生各种各样的运动,因为它重复使用一些不变的代码。先前的工作已经确定,在不同的运动中,神经群体活动的动力学是相似的,动力学是指群体活动的瞬时空间模式随时间的变化。在这里,我们测试不变的神经群体动力学是否实际上被用来发出指挥运动的命令。我们使用一种脑机接口(BMI),将恒河猴运动皮层的活动转化为神经假体光标控制的命令,发现相同的命令在不同的运动中会伴随着不同的神经活动模式发出。然而,这些不同的模式是可以预测的,因为我们发现,在不同的运动中,活动模式之间的转换是由相同的动力学控制的。这些不变的动力学是低维的,而且关键的是,它们与 BMI 一致,因此它们可以预测发出下一个命令的神经活动的具体成分。我们引入了一个最优反馈控制(OFC)模型,该模型表明不变的动力学可以帮助将运动反馈转化为命令,从而减少神经群体控制运动所需的输入。总之,我们的研究结果表明,不变的动力学可以驱动命令来控制各种运动,并展示了反馈是如何与不变的动力学相结合来发出通用的命令的。