Sanger Terence D
Faculty of Biomedical Engineering at the University of Southern California, Los Angeles, CA 90089, USA.
Annu Int Conf IEEE Eng Med Biol Soc. 2010;2010:4494-7. doi: 10.1109/IEMBS.2010.5626029.
In order to understand how populations of neurons control movement, several phenomena beyond the realm of classical control theory must be addressed. These include the effect of variability in control due to stochastic firing, the effect of large partially unlabeled cooperative controllers, the effect of bandlimited control due to finite neural resources, and the effect of variation in the number of available neurons. I propose to use differential stochastic operators to model the time-varying effect of multiple stochastic controllers. Integration of these operators yields the time evolution of the probability density of the state. The main result is that since these operators are linear, the combined dynamic effect of populations of neurons can be described by linear combinations of the operators for individual neurons. This permits prediction of the effect of changes in the firing pattern of neurons, and control can be achieved by changing the firing rates of different neurons in a population. The mathematical formulation permits prediction of uncertainty and variability in control, and it also permits prediction of the effect of increase (growth) or decrease (injury) in the number of neurons on the accuracy and stability of control. The theory provides a strong mathematical link between the behavior of individual neurons and populations of neurons, and the dynamic behavior of neuro-mechanical systems.
为了理解神经元群体如何控制运动,必须解决一些超出经典控制理论范畴的现象。这些现象包括由于随机发放导致的控制变异性的影响、大量部分未标记的协同控制器的影响、由于有限神经资源导致的带限控制的影响以及可用神经元数量变化的影响。我提议使用微分随机算子来对多个随机控制器的时变效应进行建模。这些算子的积分产生状态概率密度的时间演化。主要结果是,由于这些算子是线性的,神经元群体的组合动态效应可以通过单个神经元算子的线性组合来描述。这允许预测神经元发放模式变化的影响,并且可以通过改变群体中不同神经元的发放率来实现控制。该数学公式允许预测控制中的不确定性和变异性,还允许预测神经元数量增加(生长)或减少(损伤)对控制精度和稳定性的影响。该理论在单个神经元和神经元群体的行为与神经机械系统的动态行为之间提供了强有力的数学联系。