Brain Mind Institute, Ecole Polytechnique Fédérale de Lausanne Lausanne, Switzerland.
Front Comput Neurosci. 2011 Jan 7;5:4. doi: 10.3389/fncom.2011.00004. eCollection 2011.
The simultaneous recording of the activity of many neurons poses challenges for multivariate data analysis. Here, we propose a general scheme of reconstruction of the functional network from spike train recordings. Effective, causal interactions are estimated by fitting generalized linear models on the neural responses, incorporating effects of the neurons' self-history, of input from other neurons in the recorded network and of modulation by an external stimulus. The coupling terms arising from synaptic input can be transformed by thresholding into a binary connectivity matrix which is directed. Each link between two neurons represents a causal influence from one neuron to the other, given the observation of all other neurons from the population. The resulting graph is analyzed with respect to small-world and scale-free properties using quantitative measures for directed networks. Such graph-theoretic analyses have been performed on many complex dynamic networks, including the connectivity structure between different brain areas. Only few studies have attempted to look at the structure of cortical neural networks on the level of individual neurons. Here, using multi-electrode recordings from the visual system of the awake monkey, we find that cortical networks lack scale-free behavior, but show a small, but significant small-world structure. Assuming a simple distance-dependent probabilistic wiring between neurons, we find that this connectivity structure can account for all of the networks' observed small-world ness. Moreover, for multi-electrode recordings the sampling of neurons is not uniform across the population. We show that the small-world-ness obtained by such a localized sub-sampling overestimates the strength of the true small-world structure of the network. This bias is likely to be present in all previous experiments based on multi-electrode recordings.
同时记录许多神经元的活动对多元数据分析提出了挑战。在这里,我们提出了一种从尖峰记录重建功能网络的一般方案。通过在神经响应上拟合广义线性模型,同时考虑神经元自身历史、记录网络中其他神经元的输入以及外部刺激的调制的影响,来估计有效的因果相互作用。来自突触输入的耦合项可以通过阈值处理转换为有向的二进制连接矩阵。在观察到群体中的所有其他神经元的情况下,两个神经元之间的每个链接代表一个神经元到另一个神经元的因果影响。然后,使用针对有向网络的定量度量来分析所得的图的小世界和无标度性质。这种图论分析已经在许多复杂的动态网络上进行,包括不同大脑区域之间的连接结构。只有少数研究试图在单个神经元的水平上研究皮质神经网络的结构。在这里,我们使用清醒猴子视觉系统的多电极记录,发现皮质网络缺乏无标度行为,但显示出较小但显著的小世界结构。假设神经元之间存在简单的距离相关概率布线,我们发现这种连接结构可以解释网络观察到的所有小世界特性。此外,对于多电极记录,神经元的采样在群体中不是均匀的。我们表明,通过这种局部子采样获得的小世界度高估了网络真实小世界结构的强度。这种偏差可能存在于所有以前基于多电极记录的实验中。