Jiang Xi, Li Xiang, Lv Jinglei, Zhang Tuo, Zhang Shu, Guo Lei, Liu Tianming
Department of Computer Science and Bioimaging Research Center, Cortical Architecture Imaging and Discovery Lab, The University of Georgia, Athens, Georgia.
School of Automation, Northwestern Polytechnical University, Xi'an, People's Republic of China.
Hum Brain Mapp. 2015 Dec;36(12):5301-19. doi: 10.1002/hbm.23013. Epub 2015 Oct 14.
The recently publicly released Human Connectome Project (HCP) grayordinate-based fMRI data not only has high spatial and temporal resolution, but also offers group-corresponding fMRI signals across a large population for the first time in the brain imaging field, thus significantly facilitating mapping the functional brain architecture with much higher resolution and in a group-wise fashion. In this article, we adopt the HCP grayordinate task-based fMRI (tfMRI) data to systematically identify and characterize task-based heterogeneous functional regions (THFRs) on cortical surface, i.e., the regions that are activated during multiple tasks conditions and contribute to multiple task-evoked systems during a specific task performance, and to assess the spatial patterns of identified THFRs on cortical gyri and sulci by applying a computational framework of sparse representations of grayordinate brain tfMRI signals. Experimental results demonstrate that both consistent task-evoked networks and intrinsic connectivity networks across all subjects and tasks in HCP grayordinate data are effectively and robustly reconstructed via the proposed sparse representation framework. Moreover, it is found that there are relatively consistent THFRs locating at bilateral parietal lobe, frontal lobe, and visual association cortices across all subjects and tasks. Particularly, those identified THFRs locate significantly more on gyral regions than on sulcal regions. These results based on sparse representation of HCP grayordinate data reveal novel functional architecture of cortical gyri and sulci, and might provide a foundation to better understand functional mechanisms of the human cerebral cortex in the future.
最近公开发布的人类连接组计划(HCP)基于脑区坐标点的功能磁共振成像(fMRI)数据不仅具有高空间和时间分辨率,而且在脑成像领域首次提供了大量人群的组对应fMRI信号,从而显著有助于以更高分辨率和分组方式绘制功能性脑结构。在本文中,我们采用HCP基于脑区坐标点的任务态fMRI(tfMRI)数据,系统地识别和表征皮质表面基于任务的异质性功能区域(THFRs),即在多种任务条件下被激活并在特定任务执行期间对多个任务诱发系统有贡献的区域,并通过应用脑区坐标点脑tfMRI信号的稀疏表示计算框架来评估所识别的THFRs在脑回和脑沟上的空间模式。实验结果表明,通过所提出的稀疏表示框架,可以有效且稳健地重建HCP脑区坐标点数据中所有受试者和任务的一致任务诱发网络和内在连接网络。此外,发现在所有受试者和任务中,相对一致的THFRs位于双侧顶叶、额叶和视觉联合皮层。特别地,那些识别出的THFRs在脑回区域的定位明显多于脑沟区域。这些基于HCP脑区坐标点数据稀疏表示的结果揭示了脑回和脑沟的新型功能结构,并可能为未来更好地理解人类大脑皮层的功能机制提供基础。