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首页> 外文期刊>NeuroImage >Brain tractography using Q-ball imaging and graph theory: Improved connectivities through fibre crossings via a model-based approach.
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Brain tractography using Q-ball imaging and graph theory: Improved connectivities through fibre crossings via a model-based approach.

机译:使用Q球成像和图论的脑束描记术:通过基于模型的方法通过纤维交叉改善了连接性。

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Brain tractography techniques utilize a set of diffusion-weighted magnetic resonance images to reconstruct white matter tracts, non-invasively and in-vivo. Streamline tracking techniques propagate curves from a seed to imply connectivity to distal voxels. Alternative approaches have been developed that attempt to quantify connection strength between all voxels and the seed. Tractography based on graph theory is amongst them. Despite its potential, graph-based tracking through complex fibre configurations has not been extensively studied and existing methods have inherent limitations. Anatomically unlikely connections may be identified in fibre crossing regions, by assigning relatively high connection strengths to all crossing populations. In this study, we discuss these limitations and present a new approach for robustly propagating through fibre crossings, as described by the orientation distribution functions (ODFs) derived from Q-ball imaging. Each image voxel is treated as a graph node and graph arcs connect neighbouring voxels. Weights representative of both structural and diffusivity features are assigned to each arc. To account for the existence of crossing fibre populations within a voxel, complex ODFs are decomposed into components representative of single-fibre populations and an image multigraph is created. The multigraph is searched exhaustively, but efficiently, to find the strongest paths and assign connectivity strengths between a seed and all the other image voxels. A comparison with the existing graph-based tractography as well as Q-ball driven front evolution tractography is performed on simulated data, and on human Q-ball imaging data acquired from five healthy volunteers. The new approach improves the connection strengths through fibre crossing regions, reducing the strengths of paths that are less anatomically plausible.
机译:脑束成像技术利用一组扩散加权磁共振图像以非侵入性和体内方式重建白质束。流线跟踪技术从种子传播曲线,暗示与远端体素的连通性。已经开发出替代方法,试图量化所有体素与种子之间的连接强度。基于图论的牵引机就是其中之一。尽管它有潜力,但对复杂光纤配置的基于图形的跟踪尚未得到广泛研究,并且现有方法具有固有的局限性。通过为所有交叉种群分配相对较高的连接强度,可以在纤维交叉区域识别出解剖学上不太可能的连接。在这项研究中,我们讨论了这些局限性,并提出了一种新的方法来稳健地传播通过纤维交叉,如从Q球成像得出的方向分布函数(ODF)所述。每个图像体素都被视为图节点,并且图弧连接相邻的体素。代表结构和扩散特征的权重分配给每个弧。为了解决体素内交叉纤维种群的存在,将复杂的ODF分解为代表单纤维种群的组件,并创建图像多重图。会对穷人进行全面搜索,但要有效地进行搜索,以找到最强的路径,并指定种子和所有其他图像体素之间的连接强度。与现有的基于图形的人体解剖学图像以及Q球驱动的前向发展图像进行了比较,这些数据来自于模拟数据以及从五名健康志愿者那里获得的人类Q球成像数据。新方法提高了纤维交叉区域的连接强度,降低了在解剖学上似乎不太合理的路径的强度。

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