Department of Mathematics, University of Connecticut, Storrs, Connecticut, United States of America.
PLoS One. 2012;7(10):e40483. doi: 10.1371/journal.pone.0040483. Epub 2012 Oct 5.
The brain is one of the most studied and highly complex systems in the biological world. While much research has concentrated on studying the brain directly, our focus is the structure of the brain itself: at its core an interconnected network of nodes (neurons). A better understanding of the structural connectivity of the brain should elucidate some of its functional properties. In this paper we analyze the connectome of the nematode Caenorhabditis elegans. Consisting of only 302 neurons, it is one of the better-understood neural networks. Using a Laplacian Matrix of the 279-neuron "giant component" of the network, we use an eigenvalue counting function to look for fractal-like self similarity. This matrix representation is also used to plot visualizations of the neural network in eigenfunction coordinates. Small-world properties of the system are examined, including average path length and clustering coefficient. We test for localization of eigenfunctions, using graph energy and spacial variance on these functions. To better understand results, all calculations are also performed on random networks, branching trees, and known fractals, as well as fractals which have been "rewired" to have small-world properties. We propose algorithms for generating Laplacian matrices of each of these graphs.
大脑是生物界中研究最多且高度复杂的系统之一。虽然许多研究都集中在直接研究大脑,但我们的重点是大脑本身的结构:它的核心是一个由节点(神经元)组成的相互连接的网络。更好地理解大脑的结构连接性应该阐明其一些功能特性。在本文中,我们分析了线虫秀丽隐杆线虫的连接组。它由仅 302 个神经元组成,是神经网络中被更好理解的网络之一。我们使用网络的 279 个神经元“巨型组件”的拉普拉斯矩阵,使用特征值计数函数来寻找分形样的自相似性。这个矩阵表示也用于在特征函数坐标中绘制神经网络的可视化。还检查了系统的小世界性质,包括平均路径长度和聚类系数。我们使用这些函数的图能量和空间方差来测试特征函数的定位。为了更好地理解结果,所有计算也在随机网络、分支树和已知分形以及具有小世界性质的“重布线”分形上进行。我们提出了生成这些图的拉普拉斯矩阵的算法。