Center for Neuroscience and Cognitive Systems@UniTn, Istituto Italiano di Tecnologia Rovereto, Italy.
Center for Neuroscience and Cognitive Systems@UniTn, Istituto Italiano di Tecnologia Rovereto, Italy ; Max Planck Institute for Biological Cybernetics Tübingen, Germany.
Front Neural Circuits. 2014 Mar 5;8:12. doi: 10.3389/fncir.2014.00012. eCollection 2014.
Models of networks of Leaky Integrate-and-Fire (LIF) neurons are a widely used tool for theoretical investigations of brain function. These models have been used both with current- and conductance-based synapses. However, the differences in the dynamics expressed by these two approaches have been so far mainly studied at the single neuron level. To investigate how these synaptic models affect network activity, we compared the single neuron and neural population dynamics of conductance-based networks (COBNs) and current-based networks (CUBNs) of LIF neurons. These networks were endowed with sparse excitatory and inhibitory recurrent connections, and were tested in conditions including both low- and high-conductance states. We developed a novel procedure to obtain comparable networks by properly tuning the synaptic parameters not shared by the models. The so defined comparable networks displayed an excellent and robust match of first order statistics (average single neuron firing rates and average frequency spectrum of network activity). However, these comparable networks showed profound differences in the second order statistics of neural population interactions and in the modulation of these properties by external inputs. The correlation between inhibitory and excitatory synaptic currents and the cross-neuron correlation between synaptic inputs, membrane potentials and spike trains were stronger and more stimulus-modulated in the COBN. Because of these properties, the spike train correlation carried more information about the strength of the input in the COBN, although the firing rates were equally informative in both network models. Moreover, the network activity of COBN showed stronger synchronization in the gamma band, and spectral information about the input higher and spread over a broader range of frequencies. These results suggest that the second order statistics of network dynamics depend strongly on the choice of synaptic model.
神经元的漏电积分和放电(LIF)网络模型是理论研究大脑功能的一种广泛使用的工具。这些模型已经被用于电流和电导突触。然而,到目前为止,这两种方法所表达的动力学差异主要在单个神经元水平上进行了研究。为了研究这些突触模型如何影响网络活动,我们比较了基于电导(COBN)和基于电流(CUBN)的 LIF 神经元网络的单个神经元和神经元群体动力学。这些网络具有稀疏的兴奋性和抑制性的反馈连接,并且在包括低电导和高电导状态的条件下进行了测试。我们开发了一种新的方法来获得具有可比网络,通过适当调整模型之间不共享的突触参数。如此定义的可比网络表现出出色且稳健的一阶统计(平均单个神经元放电率和网络活动的平均频谱)匹配。然而,这些可比网络在神经元群体相互作用的二阶统计和这些特性被外部输入调制方面表现出深刻的差异。在 COBN 中,抑制性和兴奋性突触电流之间的相关性以及突触输入、膜电位和尖峰序列之间的跨神经元相关性更强且更受刺激调制。由于这些特性,在 COBN 中,尖峰序列相关性携带了更多关于输入强度的信息,尽管在两个网络模型中,放电率都同样具有信息性。此外,COBN 的网络活动在伽马波段显示出更强的同步性,并且关于输入的频谱信息更高,分布在更广泛的频率范围内。这些结果表明,网络动力学的二阶统计强烈依赖于突触模型的选择。