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皮质回路模型中的混沌平衡状态

Chaotic balanced state in a model of cortical circuits.

作者信息

van Vreeswijk C, Sompolinsky H

机构信息

Racah Institute of Physics, Hebrew University, Jerusalem, Israel.

出版信息

Neural Comput. 1998 Aug 15;10(6):1321-71. doi: 10.1162/089976698300017214.

Abstract

The nature and origin of the temporal irregularity in the electrical activity of cortical neurons in vivo are not well understood. We consider the hypothesis that this irregularity is due to a balance of excitatory and inhibitory currents into the cortical cells. We study a network model with excitatory and inhibitory populations of simple binary units. The internal feedback is mediated by relatively large synaptic strengths, so that the magnitude of the total excitatory and inhibitory feedback is much larger than the neuronal threshold. The connectivity is random and sparse. The mean number of connections per unit is large, though small compared to the total number of cells in the network. The network also receives a large, temporally regular input from external sources. We present an analytical solution of the mean-field theory of this model, which is exact in the limit of large network size. This theory reveals a new cooperative stationary state of large networks, which we term a balanced state. In this state, a balance between the excitatory and inhibitory inputs emerges dynamically for a wide range of parameters, resulting in a net input whose temporal fluctuations are of the same order as its mean. The internal synaptic inputs act as a strong negative feedback, which linearizes the population responses to the external drive despite the strong nonlinearity of the individual cells. This feedback also greatly stabilizes the system's state and enables it to track a time-dependent input on time scales much shorter than the time constant of a single cell. The spatiotemporal statistics of the balanced state are calculated. It is shown that the autocorrelations decay on a short time scale, yielding an approximate Poissonian temporal statistics. The activity levels of single cells are broadly distributed, and their distribution exhibits a skewed shape with a long power-law tail. The chaotic nature of the balanced state is revealed by showing that the evolution of the microscopic state of the network is extremely sensitive to small deviations in its initial conditions. The balanced state generated by the sparse, strong connections is an asynchronous chaotic state. It is accompanied by weak spatial cross-correlations, the strength of which vanishes in the limit of large network size. This is in contrast to the synchronized chaotic states exhibited by more conventional network models with high connectivity of weak synapses.

摘要

体内皮质神经元电活动中时间不规则性的本质和起源尚未得到很好的理解。我们考虑这样一种假说,即这种不规则性是由于进入皮质细胞的兴奋性和抑制性电流的平衡所致。我们研究了一个具有简单二元单元兴奋性和抑制性群体的网络模型。内部反馈由相对较大的突触强度介导,因此总兴奋性和抑制性反馈的幅度远大于神经元阈值。连接是随机且稀疏的。每个单元的平均连接数很大,尽管与网络中的细胞总数相比很小。该网络还从外部源接收大量、时间上规则的输入。我们给出了该模型平均场理论的解析解,在大网络规模的极限情况下它是精确的。该理论揭示了大网络的一种新的合作稳态,我们称之为平衡态。在这种状态下,对于广泛的参数范围,兴奋性和抑制性输入之间动态地出现平衡,导致净输入的时间波动与其平均值具有相同的量级。内部突触输入充当强大的负反馈,尽管单个细胞具有很强的非线性,但它使群体对外部驱动的响应线性化。这种反馈还极大地稳定了系统状态,并使其能够在比单个细胞的时间常数短得多的时间尺度上跟踪随时间变化的输入。计算了平衡态的时空统计量。结果表明,自相关在短时间尺度上衰减,产生近似泊松时间统计量。单个细胞的活动水平分布广泛,其分布呈现出具有长幂律尾部的偏态形状。通过表明网络微观状态的演化对其初始条件的小偏差极其敏感,揭示了平衡态的混沌本质。由稀疏、强连接产生的平衡态是一种异步混沌态。它伴随着微弱的空间交叉相关性,在大网络规模的极限情况下其强度消失。这与具有弱突触高连接性的更传统网络模型所表现出的同步混沌态形成对比。

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