Dimitriadis Stavros I, Salis Christos, Tarnanas Ioannis, Linden David E
Institute of Psychological Medicine and Clinical Neurosciences, School of Medicine, Cardiff UniversityCardiff, UK.
Cardiff University Brain Research Imaging Center (CUBRIC), School of Psychology, Cardiff UniversityCardiff, UK.
Front Neuroinform. 2017 Apr 26;11:28. doi: 10.3389/fninf.2017.00028. eCollection 2017.
The human brain is a large-scale system of functionally connected brain regions. This system can be modeled as a network, or graph, by dividing the brain into a set of regions, or "nodes," and quantifying the strength of the connections between nodes, or "edges," as the temporal correlation in their patterns of activity. Network analysis, a part of graph theory, provides a set of summary statistics that can be used to describe complex brain networks in a meaningful way. The large-scale organization of the brain has features of complex networks that can be quantified using network measures from graph theory. The adaptation of both bivariate (mutual information) and multivariate (Granger causality) connectivity estimators to quantify the synchronization between multichannel recordings yields a fully connected, weighted, (a)symmetric functional connectivity graph (FCG), representing the associations among all brain areas. The aforementioned procedure leads to an extremely dense network of tens up to a few hundreds of weights. Therefore, this FCG must be filtered out so that the "true" connectivity pattern can emerge. Here, we compared a large number of well-known topological thresholding techniques with the novel proposed data-driven scheme based on orthogonal minimal spanning trees (OMSTs). OMSTs filter brain connectivity networks based on the optimization between the global efficiency of the network and the cost preserving its wiring. We demonstrated the proposed method in a large EEG database ( = 101 subjects) with eyes-open (EO) and eyes-closed (EC) tasks by adopting a time-varying approach with the main goal to extract features that can totally distinguish each subject from the rest of the set. Additionally, the reliability of the proposed scheme was estimated in a second case study of fMRI resting-state activity with multiple scans. Our results demonstrated clearly that the proposed thresholding scheme outperformed a large list of thresholding schemes based on the recognition accuracy of each subject compared to the rest of the cohort (EEG). Additionally, the reliability of the network metrics based on the fMRI static networks was improved based on the proposed topological filtering scheme. Overall, the proposed algorithm could be used across neuroimaging and multimodal studies as a common computationally efficient standardized tool for a great number of neuroscientists and physicists working on numerous of projects.
人类大脑是一个由功能相连的脑区组成的大规模系统。通过将大脑划分为一组区域(即“节点”),并将节点之间连接的强度(即“边”)量化为其活动模式中的时间相关性,这个系统可以被建模为一个网络或图。网络分析作为图论的一部分,提供了一组汇总统计量,可用于以有意义的方式描述复杂的脑网络。大脑的大规模组织具有复杂网络的特征,可使用图论中的网络度量进行量化。双变量(互信息)和多变量(格兰杰因果关系)连通性估计器的适配,用于量化多通道记录之间的同步,产生了一个完全连通、加权、(非)对称的功能连通性图(FCG),代表了所有脑区之间的关联。上述过程导致了一个由数十到数百个权重组成的极其密集的网络。因此,必须对这个FCG进行滤波,以便“真实”的连通性模式能够显现出来。在这里,我们将大量著名的拓扑阈值技术与基于正交最小生成树(OMST)提出的新型数据驱动方案进行了比较。OMST基于网络的全局效率和保持其布线成本之间的优化来过滤脑连通性网络。我们通过采用时变方法,在一个大型脑电图数据库( = 101名受试者)中,对睁眼(EO)和闭眼(EC)任务演示了所提出的方法,主要目标是提取能够将每个受试者与其余受试者完全区分开来的特征。此外,在第二个功能磁共振成像静息态活动的多扫描案例研究中,评估了所提出方案的可靠性。我们的结果清楚地表明,与其他受试者(脑电图)相比,基于每个受试者的识别准确率,所提出的阈值方案优于大量的阈值方案。此外基于所提出的拓扑滤波方案,基于功能磁共振成像静态网络的网络指标的可靠性得到了提高。总体而言,所提出的算法可以作为一种通用的计算高效的标准化工具,供众多从事大量项目的神经科学家和物理学家在神经成像和多模态研究中使用。