Wismüller Axel, Abidin Anas Z, DSouza Adora M, Wang Xixi, Hobbs Susan K, Leistritz Lutz, Nagarajan Mahesh B
Department of Imaging Sciences, University of Rochester Medical Center, NY, USA.
Department of Biomedical Engineering, University of Rochester, NY, USA.
Proc SPIE Int Soc Opt Eng. 2015 Feb;9417. doi: 10.1117/12.2082124. Epub 2015 Mar 17.
We explore a computational framework for functional connectivity analysis in resting-state functional MRI (fMRI) data acquired from the human brain for recovering the underlying network structure and understanding causality between network components. Termed mutual connectivity analysis (MCA), this framework involves two steps, the first of which is to evaluate the pair-wise cross-prediction performance between fMRI pixel time series within the brain. In a second step, the underlying network structure is subsequently recovered from the affinity matrix using non-metric network clustering approaches, such as the so-called Louvain method. Finally, we use convergent cross-mapping (CCM) to study causality between different network components. We demonstrate our MCA framework in the problem of recovering the motor cortex network associated with hand movement from resting state fMRI data. Results are compared with a ground truth of active motor cortex regions as identified by a task-based fMRI sequence involving a finger-tapping stimulation experiment. Our results regarding causation between regions of the motor cortex revealed a significant directional variability and were not readily interpretable in a consistent manner across subjects. However, our results on whole-slice fMRI analysis demonstrate that MCA-based model-free recovery of regions associated with the primary motor cortex and supplementary motor area are in close agreement with localization of similar regions achieved with a task-based fMRI acquisition. Thus, we conclude that our MCA methodology can extract and visualize valuable information concerning the underlying network structure between different regions of the brain in resting state fMRI.
我们探索了一种用于静息态功能磁共振成像(fMRI)数据功能连接分析的计算框架,该数据取自人脑,用于恢复潜在的网络结构并理解网络组件之间的因果关系。这个被称为互连接分析(MCA)的框架包括两个步骤,第一步是评估脑内fMRI像素时间序列之间的成对交叉预测性能。第二步,随后使用非度量网络聚类方法,如所谓的鲁汶方法,从亲和矩阵中恢复潜在的网络结构。最后,我们使用收敛交叉映射(CCM)来研究不同网络组件之间的因果关系。我们在从静息态fMRI数据中恢复与手部运动相关的运动皮层网络的问题中展示了我们的MCA框架。将结果与通过涉及手指敲击刺激实验的基于任务的fMRI序列确定的活跃运动皮层区域的真实情况进行比较。我们关于运动皮层区域之间因果关系的结果显示出显著的方向变异性,并且在不同受试者之间难以以一致的方式进行解释。然而,我们在全切片fMRI分析中的结果表明,基于MCA的与初级运动皮层和辅助运动皮层相关区域的无模型恢复与通过基于任务的fMRI采集实现的相似区域定位密切一致。因此,我们得出结论,我们的MCA方法可以在静息态fMRI中提取并可视化有关脑不同区域之间潜在网络结构的有价值信息。