白质结构驱动的无图谱连接分析

C. Gomez, Luca Dodero, A. Gozzi, Vittorio Murino, Diego Sona
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引用次数: 0

摘要

弥散张量成像可以从白质中推断出大脑的连通性,然后可以对白质进行研究,以寻找可能的疾病生物标志物。图构造的初始步骤通常是使用预定义的图谱来识别大脑中的节点。然而,地图集通常不考虑白质结构。因此,基于图谱的脑分割和脑图并没有充分考虑到白质的组织。在这项工作中,我们提出了一个无图谱的方案来绘制大脑结构网络。这个想法是利用从数据中推断出的白质结构来识别大脑中的节点。我们首先从DTI提取白质通路,将纤维束分组成束。然后,我们在聚类管道中使用这些路径来识别大脑区域,并将其映射到用于定义大脑连通性的图节点中。我们在一项已知的病例对照研究中对所提出方法的有效性进行了实证检验,获得的结果证实了相关文献的发现。
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Atlas-free connectivity analysis driven by white matter structure
Diffusion tensor imaging allows to infer brain connectivity from white matter, which can then be investigated aiming at finding possible biomarkers of disease. The usual initial step in graph construction is to identify the nodes in the brain using a predefined atlas. However, atlases are usually not considering the white matter structure. As a result, atlas-based brain parcellation and, hence, brain graphs are not fully considering the white matter organization. In this work, we are proposing an atlas-free scheme to map the structural brain networks. The idea is to identify the nodes in the brain exploiting the white matter structure inferred from the data. We first retrieve the white matter pathways from DTI, grouping fiber tracts into bundles. We then use these pathways in a clustering pipeline to identify the brain regions to map into the graph nodes, which are used to define the brain connectivity. We empirically tested the goodness of the proposed approach on a known case-control study obtaining results confirming findings in related literature.
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