Meyer Carsten, van Vreeswijk Carl
Racah Institute of Physics and Center for Neural Computation, Hebrew University, Jerusalem 91904, Israel.
Neural Comput. 2002 Feb;14(2):369-404. doi: 10.1162/08997660252741167.
The determination of temporal and spatial correlations in neuronal activity is one of the most important neurophysiological tools to gain insight into the mechanisms of information processing in the brain. Its interpretation is complicated by the difficulty of disambiguating the effects of architecture, single-neuron properties, and network dynamics. We present a theory that describes the contribution of the network dynamics in a network of "spiking" neurons. For a simple neuron model including refractory properties, we calculate the temporal cross-correlations in a completely homogeneous, excitatory, fully connected network in a stable, stationary state, for stochastic dynamics in both discrete and continuous time. We show that even for this simple network architecture, the cross-correlations exhibit a large variety of qualitatively different properties, strongly dependent on the level of noise, the decay constant of the refractory function, and the network activity. At the critical point, the cross-correlations oscillate with a frequency that depends on the refractory properties or decay exponentially with a diverging damping constant (for "weak" refractory properties). We also investigate the effect of the synaptic time constants. It is shown that these time constants may, apart from their influence on the asymmetric peak arising from the direct synaptic connection, also affect the long-term properties of the cross-correlations.
确定神经元活动中的时空相关性是深入了解大脑信息处理机制的最重要神经生理学工具之一。由于难以区分结构、单个神经元特性和网络动力学的影响,其解释变得复杂。我们提出了一种理论,描述了“脉冲发放”神经元网络中网络动力学的贡献。对于一个包括不应期特性的简单神经元模型,我们计算了在完全均匀、兴奋性、全连接网络处于稳定、静止状态下,离散和连续时间的随机动力学中的时间互相关性。我们表明,即使对于这种简单的网络结构,互相关性也表现出多种性质上不同的特性,强烈依赖于噪声水平、不应期函数的衰减常数和网络活动。在临界点,互相关性以取决于不应期特性的频率振荡,或者以发散的阻尼常数指数衰减(对于“弱”不应期特性)。我们还研究了突触时间常数的影响。结果表明,这些时间常数除了对直接突触连接产生的不对称峰值有影响外,还可能影响互相关性的长期特性。