Brain Korea 21 Project for Medical Science, Yonsei University College of Medicine, Seoul, Republic of Korea ; Department of Nuclear Medicine and Severance Biomedical Science Institute, Yonsei University College of Medicine, Seoul, Republic of Korea.
Department of Electrical Engineering, Korea Advanced Institute of Science and Technology, Daejeon, Republic of Korea.
PLoS One. 2014 Jan 7;9(1):e82873. doi: 10.1371/journal.pone.0082873. eCollection 2014.
Does each cognitive task elicit a new cognitive network each time in the brain? Recent data suggest that pre-existing repertoires of a much smaller number of canonical network components are selectively and dynamically used to compute new cognitive tasks. To this end, we propose a novel method (graph-ICA) that seeks to extract these canonical network components from a limited number of resting state spontaneous networks. Graph-ICA decomposes a weighted mixture of source edge-sharing subnetworks with different weighted edges by applying an independent component analysis on cross-sectional brain networks represented as graphs. We evaluated the plausibility in our simulation study and identified 49 intrinsic subnetworks by applying it in the resting state fMRI data. Using the derived subnetwork repertories, we decomposed brain networks during specific tasks including motor activity, working memory exercises, and verb generation, and identified subnetworks associated with performance on these tasks. We also analyzed sex differences in utilization of subnetworks, which was useful in characterizing group networks. These results suggest that this method can effectively be utilized to identify task-specific as well as sex-specific functional subnetworks. Moreover, graph-ICA can provide more direct information on the edge weights among brain regions working together as a network, which cannot be directly obtained through voxel-level spatial ICA.
每种认知任务是否都会在大脑中引发新的认知网络?最近的数据表明,预先存在的、数量较少的规范网络组件的组合可以有选择地和动态地用于计算新的认知任务。为此,我们提出了一种新的方法(图独立成分分析),试图从有限数量的静息状态自发网络中提取这些规范网络组件。图独立成分分析通过对加权边缘共享子网的加权混合物进行独立成分分析,应用于表示为图的横截面脑网络。我们在模拟研究中评估了其合理性,并通过将其应用于静息态 fMRI 数据,确定了 49 个内在子网。利用所得的子网组合,我们在特定任务(包括运动活动、工作记忆练习和动词生成)期间分解大脑网络,并确定与这些任务表现相关的子网。我们还分析了子网利用的性别差异,这对于表征组网络很有用。这些结果表明,该方法可以有效地用于识别特定于任务和特定于性别的功能子网。此外,图独立成分分析可以提供关于作为网络一起工作的大脑区域之间的边缘权重的更直接信息,而这不能通过体素级空间独立成分分析直接获得。