Helias Moritz, Tetzlaff Tom, Diesmann Markus
Institute of Neuroscience and Medicine (INM-6) and Institute for Advanced Simulation (IAS-6), Jülich Research Centre and JARA, Jülich, Germany.
Institute of Neuroscience and Medicine (INM-6) and Institute for Advanced Simulation (IAS-6), Jülich Research Centre and JARA, Jülich, Germany ; Medical Faculty, RWTH Aachen University, Aachen, Germany.
PLoS Comput Biol. 2014 Jan;10(1):e1003428. doi: 10.1371/journal.pcbi.1003428. Epub 2014 Jan 16.
Correlated neuronal activity is a natural consequence of network connectivity and shared inputs to pairs of neurons, but the task-dependent modulation of correlations in relation to behavior also hints at a functional role. Correlations influence the gain of postsynaptic neurons, the amount of information encoded in the population activity and decoded by readout neurons, and synaptic plasticity. Further, it affects the power and spatial reach of extracellular signals like the local-field potential. A theory of correlated neuronal activity accounting for recurrent connectivity as well as fluctuating external sources is currently lacking. In particular, it is unclear how the recently found mechanism of active decorrelation by negative feedback on the population level affects the network response to externally applied correlated stimuli. Here, we present such an extension of the theory of correlations in stochastic binary networks. We show that (1) for homogeneous external input, the structure of correlations is mainly determined by the local recurrent connectivity, (2) homogeneous external inputs provide an additive, unspecific contribution to the correlations, (3) inhibitory feedback effectively decorrelates neuronal activity, even if neurons receive identical external inputs, and (4) identical synaptic input statistics to excitatory and to inhibitory cells increases intrinsically generated fluctuations and pairwise correlations. We further demonstrate how the accuracy of mean-field predictions can be improved by self-consistently including correlations. As a byproduct, we show that the cancellation of correlations between the summed inputs to pairs of neurons does not originate from the fast tracking of external input, but from the suppression of fluctuations on the population level by the local network. This suppression is a necessary constraint, but not sufficient to determine the structure of correlations; specifically, the structure observed at finite network size differs from the prediction based on perfect tracking, even though perfect tracking implies suppression of population fluctuations.
相关神经元活动是网络连通性以及神经元对共享输入的自然结果,但与行为相关的任务依赖性相关性调制也暗示了其功能作用。相关性会影响突触后神经元的增益、群体活动中编码并由读出神经元解码的信息量以及突触可塑性。此外,它还会影响诸如局部场电位等细胞外信号的功率和空间范围。目前缺乏一种能够解释循环连通性以及波动外部源的相关神经元活动理论。特别是,尚不清楚最近在群体水平上发现的通过负反馈实现主动去相关的机制如何影响网络对外部施加的相关刺激的响应。在此,我们提出了一种随机二元网络中相关性理论的扩展。我们表明:(1)对于均匀外部输入,相关性结构主要由局部循环连通性决定;(2)均匀外部输入对相关性提供了一种相加的、非特异性的贡献;(3)抑制性反馈有效地使神经元活动去相关,即使神经元接收相同的外部输入;(4)对兴奋性和抑制性细胞相同的突触输入统计会增加内在产生的波动和成对相关性。我们还进一步证明了通过自洽地纳入相关性可以提高平均场预测的准确性。作为一个副产品,我们表明神经元对总和输入之间相关性的抵消并非源于对外部输入的快速跟踪,而是源于局部网络对群体水平波动的抑制。这种抑制是一个必要条件,但不足以确定相关性结构;具体而言,在有限网络规模下观察到的结构与基于完美跟踪的预测不同,尽管完美跟踪意味着抑制群体波动。