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Groupwise whole-brain parcellation from resting-state fMRI data for network node identification

机译:静态fMRI数据的分组全脑分割,用于网络节点识别

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摘要

In this paper, we present a groupwise graph-theory-based parcellation approach to define nodes for network analysis. The application of network-theory-based analysis to extend the utility of functional MRI has recently received increased attention. Such analyses require first and foremost a reasonable definition of a set of nodes as input to the network analysis. To date many applications have used existing atlases based on cytoarchitecture, task-based fMRI activations, or anatomic delineations. A potential pitfall in using such atlases is that the mean timecourse of a node may not represent any of the constituent timecourses if different functional areas are included within a single node. The proposed approach involves a groupwise optimization that ensures functional homogeneity within each subunit and that these definitions are consistent at the group level. Parcellation reproducibility of each subunit is computed across multiple groups of healthy volunteers and is demonstrated to be high. Issues related to the selection of appropriate number of nodes in the brain are considered. Within typical parameters of fMRI resolution, parcellation results are shown for a total of 100, 200, and 300 subunits. Such parcellations may ultimately serve as a functional atlas for fMRI and as such three atlases at the 100-, 200- and 300-parcellation levels derived from 79 healthy normal volunteers are made freely available online along with tools to interface this atlas with SPM, BioImage Suite and other analysis packages.
机译:在本文中,我们提出了一种基于分组图理论的分割方法来定义用于网络分析的节点。最近,基于网络理论的分析在扩展功能性MRI实用性方面的应用受到了越来越多的关注。此类分析首先需要对一组节点进行合理定义,作为网络分析的输入。迄今为止,许多应用已经使用了基于细胞结构,基于任务的fMRI激活或解剖学描述的现有图集。使用此类地图集的潜在陷阱是,如果在单个节点中包含不同的功能区域,则节点的平均时程可能不表示任何组成时程。所提出的方法涉及一种分组优化,该优化可确保每个亚基内的功能均一性,并且这些定义在组级别上是一致的。在多个健康志愿者组中计算出每个亚基的细胞分裂可重复性,结果表明该亚克隆性很高。考虑与大脑中适当数量的结节的选择有关的问题。在fMRI分辨率的典型参数内,显示了总共100、200和300个亚基的细胞分裂结果。这样的分类最终可以用作功能性核磁共振成像的功能图谱,因此可以免费在线免费获取来自79名健康正常志愿者的100、200和300个分类水平的三幅图谱以及与该图谱与SPM,BioImage接口的工具套件和其他分析包。

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