Mahyari Arash Golibagh, Zoltowski David M, Bernat Edward M, Aviyente Selin
IEEE Trans Biomed Eng. 2017 Jan;64(1):225-237. doi: 10.1109/TBME.2016.2553960. Epub 2016 Apr 13.
Functional connectivity (FC), defined as the statistical dependency between distinct brain regions, has been an important tool in understanding cognitive brain processes. Most of the current works in FC have focused on the assumption of temporally stationary networks. However, recent empirical work indicates that FC is dynamic due to cognitive functions.
The purpose of this paper is to understand the dynamics of FC for understanding the formation and dissolution of networks of the brain.
In this paper, we introduce a two-step approach to characterize the dynamics of functional connectivity networks (FCNs) by first identifying change points at which the network connectivity across subjects shows significant changes and then summarizing the FCNs between consecutive change points. The proposed approach is based on a tensor representation of FCNs across time and subjects yielding a four-mode tensor. The change points are identified using a subspace distance measure on low-rank approximations to the tensor at each time point. The network summarization is then obtained through tensor-matrix projections across the subject and time modes.
The proposed framework is applied to electroencephalogram (EEG) data collected during a cognitive control task. The detected change-points are consistent with a priori known ERN interval. The results show significant connectivities in medial-frontal regions which are consistent with widely observed ERN amplitude measures.
The tensor-based method outperforms conventional matrix-based methods such as singular value decomposition in terms of both change-point detection and state summarization.
The proposed tensor-based method captures the topological structure of FCNs which provides more accurate change-point-detection and state summarization.
功能连接性(FC)被定义为不同脑区之间的统计依赖性,一直是理解大脑认知过程的重要工具。目前FC领域的大多数工作都集中在时间平稳网络的假设上。然而,最近的实证研究表明,由于认知功能,FC是动态的。
本文的目的是理解FC的动态性,以了解大脑网络的形成和解散。
在本文中,我们引入了一种两步法来表征功能连接性网络(FCN)的动态性,首先识别跨受试者的网络连接性出现显著变化的变化点,然后总结连续变化点之间的FCN。所提出的方法基于FCN随时间和受试者的张量表示,产生一个四阶张量。使用每个时间点张量的低秩近似上的子空间距离度量来识别变化点。然后通过跨受试者和时间模式的张量 - 矩阵投影获得网络总结。
所提出的框架应用于在认知控制任务期间收集的脑电图(EEG)数据。检测到的变化点与先验已知的ERN间隔一致。结果显示内侧额叶区域有显著的连接性,这与广泛观察到的ERN振幅测量结果一致。
在变化点检测和状态总结方面,基于张量的方法优于传统的基于矩阵的方法,如奇异值分解。
所提出的基于张量的方法捕捉了FCN的拓扑结构,这提供了更准确的变化点检测和状态总结。