Xu Yuting, Lindquist Martin A
Department of Biostatistics, Johns Hopkins University Baltimore, MD, USA.
Front Neurosci. 2015 Sep 4;9:285. doi: 10.3389/fnins.2015.00285. eCollection 2015.
Recently there has been an increased interest in using fMRI data to study the dynamic nature of brain connectivity. In this setting, the activity in a set of regions of interest (ROIs) is often modeled using a multivariate Gaussian distribution, with a mean vector and covariance matrix that are allowed to vary as the experiment progresses, representing changing brain states. In this work, we introduce the Dynamic Connectivity Detection (DCD) algorithm, which is a data-driven technique to detect temporal change points in functional connectivity, and estimate a graph between ROIs for data within each segment defined by the change points. DCD builds upon the framework of the recently developed Dynamic Connectivity Regression (DCR) algorithm, which has proven efficient at detecting changes in connectivity for problems consisting of a small to medium (< 50) number of regions, but which runs into computational problems as the number of regions becomes large (>100). The newly proposed DCD method is faster, requires less user input, and is better able to handle high-dimensional data. It overcomes the shortcomings of DCR by adopting a simplified sparse matrix estimation approach and a different hypothesis testing procedure to determine change points. The application of DCD to simulated data, as well as fMRI data, illustrates the efficacy of the proposed method.
最近,利用功能磁共振成像(fMRI)数据来研究大脑连接的动态特性受到了越来越多的关注。在这种情况下,一组感兴趣区域(ROI)中的活动通常使用多元高斯分布进行建模,其均值向量和协方差矩阵会随着实验的进行而变化,代表着不断变化的大脑状态。在这项工作中,我们引入了动态连接检测(DCD)算法,这是一种数据驱动的技术,用于检测功能连接中的时间变化点,并为变化点定义的每个段内的数据估计ROI之间的图。DCD建立在最近开发的动态连接回归(DCR)算法的框架之上,DCR已被证明在检测由少量到中等数量(<50)区域组成的问题的连接变化方面是有效的,但随着区域数量变大(>100),它会遇到计算问题。新提出的DCD方法更快,需要的用户输入更少,并且能够更好地处理高维数据。它通过采用简化的稀疏矩阵估计方法和不同的假设检验程序来确定变化点,克服了DCR的缺点。DCD在模拟数据以及fMRI数据上的应用说明了所提出方法的有效性。