Banerjee Arunava, Seriès Peggy, Pouget Alexandre
Computer and Information Science and Engineering, University of Florida, Gainesville, FL 32611, U.S.A.
Neural Comput. 2008 Apr;20(4):974-93. doi: 10.1162/neco.2008.05-06-206.
Several recent models have proposed the use of precise timing of spikes for cortical computation. Such models rely on growing experimental evidence that neurons in the thalamus as well as many primary sensory cortical areas respond to stimuli with remarkable temporal precision. Models of computation based on spike timing, where the output of the network is a function not only of the input but also of an independently initializable internal state of the network, must, however, satisfy a critical constraint: the dynamics of the network should not be sensitive to initial conditions. We have previously developed an abstract dynamical system for networks of spiking neurons that has allowed us to identify the criterion for the stationary dynamics of a network to be sensitive to initial conditions. Guided by this criterion, we analyzed the dynamics of several recurrent cortical architectures, including one from the orientation selectivity literature. Based on the results, we conclude that under conditions of sustained, Poisson-like, weakly correlated, low to moderate levels of internal activity as found in the cortex, it is unlikely that recurrent cortical networks can robustly generate precise spike trajectories, that is, spatiotemporal patterns of spikes precise to the millisecond timescale.
最近的几个模型提出利用尖峰的精确时间进行皮层计算。这类模型依赖于越来越多的实验证据,即丘脑以及许多初级感觉皮层区域的神经元对刺激的反应具有显著的时间精度。然而,基于尖峰时间的计算模型,其网络输出不仅是输入的函数,也是网络可独立初始化的内部状态的函数,必须满足一个关键约束:网络动态不应对初始条件敏感。我们之前为脉冲神经元网络开发了一个抽象动力系统,这使我们能够确定网络稳态动态对初始条件敏感的标准。在此标准的指导下,我们分析了几种循环皮层结构的动态,包括来自方向选择性文献中的一种结构。基于这些结果,我们得出结论,在皮层中发现的持续、泊松样、弱相关、低到中等水平的内部活动条件下,循环皮层网络不太可能稳健地生成精确的尖峰轨迹,即精确到毫秒时间尺度的尖峰时空模式。