Di Xin, Biswal Bharat B
Department of Biomedical Engineering, New Jersey Institute of Technology, Newark, New Jersey.
Department of Biomedical Engineering, New Jersey Institute of Technology, Newark, New Jersey
J Neurophysiol. 2015 Nov;114(5):2785-96. doi: 10.1152/jn.00893.2014. Epub 2015 Sep 2.
Functional connectivity between two brain regions, measured using functional MRI (fMRI), has been shown to be modulated by other regions even in a resting state, i.e., without performing specific tasks. We aimed to characterize large-scale modulatory interactions by performing region-of-interest (ROI)-based physiophysiological interaction analysis on resting-state fMRI data. Modulatory interactions were calculated for every possible combination of three ROIs among 160 ROIs sampling the whole brain. Firstly, among all of the significant modulatory interactions, there were considerably more negative than positive effects; i.e., in more cases, an increase of activity in one region was associated with decreased functional connectivity between two other regions. Next, modulatory interactions were categorized as to whether the three ROIs were from one single network module, two modules, or three different modules (defined by a modularity analysis on their functional connectivity). Positive modulatory interactions were more represented than expected in cases in which the three ROIs were from a single module, suggesting an increase within module processing efficiency through positive modulatory interactions. In contrast, negative modulatory interactions were more represented than expected in cases in which the three ROIs were from two modules, suggesting a tendency of between-module segregation through negative modulatory interactions. Regions that were more likely to have modulatory interactions were then identified. The numbers of significant modulatory interactions for different regions were correlated with the regions' connectivity strengths and connection degrees. These results demonstrate whole-brain characteristics of modulatory interactions and may provide guidance for future studies of connectivity dynamics in both resting state and task state.
使用功能磁共振成像(fMRI)测量的两个脑区之间的功能连接,已被证明即使在静息状态下,即不执行特定任务时,也会受到其他脑区的调节。我们旨在通过对静息态fMRI数据进行基于感兴趣区域(ROI)的生理生理相互作用分析,来表征大规模的调节性相互作用。对采样全脑的160个ROI中三个ROI的每一种可能组合计算调节性相互作用。首先,在所有显著的调节性相互作用中,负性效应比正性效应多得多;也就是说,在更多情况下,一个区域活动的增加与另外两个区域之间功能连接的减少相关。其次,根据三个ROI是来自一个单一网络模块、两个模块还是三个不同模块(通过对其功能连接的模块化分析定义),对调节性相互作用进行分类。当三个ROI来自单个模块时,正性调节性相互作用的表现比预期更多,表明通过正性调节性相互作用提高了模块内的处理效率。相反,当三个ROI来自两个模块时,负性调节性相互作用的表现比预期更多,表明通过负性调节性相互作用存在模块间分离的趋势。然后确定更可能具有调节性相互作用的区域。不同区域显著调节性相互作用的数量与这些区域的连接强度和连接度相关。这些结果证明了调节性相互作用的全脑特征,并可能为未来静息态和任务态连接动力学的研究提供指导。