Bernstein Group for Computational Neuroscience Jena, Institute of Medical Statistics, Computer Sciences and Documentation, Jena University Hospital, Friedrich Schiller University Jena, Jena, Germany.
PLoS One. 2013 Aug 12;8(8):e70497. doi: 10.1371/journal.pone.0070497. eCollection 2013.
An advanced graph theoretical approach is introduced that enables a higher level of functional interpretation of samples of directed networks with identical fixed pairwise different vertex labels that are drawn from a particular population. Compared to the analysis of single networks, their investigation promises to yield more detailed information about the represented system. Often patterns of directed edges in sample element networks are too intractable for a direct evaluation and interpretation. The new approach addresses the problem of simplifying topological information and characterizes such a sample of networks by finding its locatable characteristic topological patterns. These patterns, essentially sample-specific network motifs with vertex labeling, might represent the essence of the intricate topological information contained in all sample element networks and provides as well a means of differentiating network samples. Central to the accurateness of this approach is the null model and its properties, which is needed to assign significance to topological patterns. As a proof of principle the proposed approach has been applied to the analysis of networks that represent brain connectivity before and during painful stimulation in patients with major depression and in healthy subjects. The accomplished reduction of topological information enables a cautious functional interpretation of the altered neuronal processing of pain in both groups.
引入了一种先进的图论方法,该方法能够对从特定群体中抽取的具有相同固定成对不同顶点标签的有向网络样本进行更高层次的功能解释。与单个网络的分析相比,对它们的研究有望提供有关所表示系统的更详细信息。通常,样本元素网络中定向边的模式过于复杂,无法直接进行评估和解释。新方法解决了简化拓扑信息的问题,并通过找到可定位的特征拓扑模式来描述此类网络样本。这些模式本质上是具有顶点标签的样本特定网络基元,可能代表所有样本元素网络中复杂拓扑信息的本质,并提供了区分网络样本的方法。该方法的准确性的关键在于零模型及其性质,这是为拓扑模式赋予意义所必需的。作为原理验证,该方法已应用于分析代表抑郁症患者和健康受试者在疼痛刺激前后大脑连接的网络。拓扑信息的完成减少使我们可以谨慎地解释两组中疼痛的神经元处理的改变。