Long Zhiying, Chen Kewei, Wu Xia, Reiman Eric, Peng Danling, Yao Li
State Key Lab of Cognitive Neuroscience and Learning, Beijing Normal University, Beijing, China.
Hum Brain Mapp. 2009 Feb;30(2):417-31. doi: 10.1002/hbm.20515.
Spatial Independent component analysis (sICA) has been widely used to analyze functional magnetic resonance imaging (fMRI) data. The well accepted implicit assumption is the spatially statistical independency of intrinsic sources identified by sICA, making the sICA applications difficult for data in which there exist interdependent sources and confounding factors. This interdependency can arise, for instance, from fMRI studies investigating two tasks in a single session. In this study, we introduced a linear projection approach and considered its utilization as a tool to separate task-related components from two-task fMRI data. The robustness and feasibility of the method are substantiated through simulation on computer data and fMRI real rest data. Both simulated and real two-task fMRI experiments demonstrated that sICA in combination with the projection method succeeded in separating spatially dependent components and had better detection power than pure model-based method when estimating activation induced by each task as well as both tasks.
空间独立成分分析(sICA)已被广泛用于分析功能磁共振成像(fMRI)数据。一个被广泛接受的隐含假设是,sICA识别出的内在源在空间上具有统计独立性,这使得sICA在存在相互依赖源和混杂因素的数据中的应用变得困难。例如,这种相互依赖性可能出现在单一会话中研究两项任务的fMRI研究中。在本研究中,我们引入了一种线性投影方法,并考虑将其用作从双任务fMRI数据中分离任务相关成分的工具。通过对计算机数据和fMRI真实静息数据的模拟,证实了该方法的稳健性和可行性。模拟和真实的双任务fMRI实验均表明,sICA与投影方法相结合成功地分离了空间相关成分,并且在估计每项任务以及两项任务诱发的激活时,比纯基于模型的方法具有更好的检测能力。