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Tractography density and network measures in Alzheimer'S disease

机译:阿尔茨海默氏病的术式密度和网络测量

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Brain connectivity declines in Alzheimer's disease (AD), both functionally and structurally. Connectivity maps and networks derived from diffusion-based tractography offer new ways to track disease progression and to understand how AD affects the brain. Here we set out to identify (1) which fiber network measures show greatest differences between AD patients and controls, and (2) how these effects depend on the density of fibers extracted by the tractography algorithm. We computed brain networks from diffusion-weighted images (DWI) of the brain, in 110 subjects (28 normal elderly, 56 with early and 11 with late mild cognitive impairment, and 15 with AD). We derived connectivity matrices and network topology measures, for each subject, from whole-brain tractography and cortical parcellations. We used an ODF lookup table to speed up fiber extraction, and to exploit the full information in the orientation distribution function (ODF). This made it feasible to compute high density connectivity maps. We used accelerated tractography to compute a large number of fibers to understand what effect fiber density has on network measures and in distinguishing different disease groups in our data. We focused on global efficiency, transitivity, path length, mean degree, density, modularity, small world, and assortativity measures computed from weighted and binary undirected connectivity matrices. Of all these measures, the mean nodal degree best distinguished diagnostic groups. High-density fiber matrices were most helpful for picking up the more subtle clinical differences, e.g. between mild cognitively impaired (MCI) and normals, or for distinguishing subtypes of MCI (early versus late). Care is needed in clinical analyses of brain connectivity, as the density of extracted fibers may affect how well a network measure can pick up differences between patients and controls.
机译:在功能和结构上,阿尔茨海默氏病(AD)的大脑连通性均下降。源自基于扩散的医学影像学的连通性图和网络提供了跟踪疾病进展并了解AD如何影响大脑的新方法。在这里,我们着手确定(1)哪种纤维网络测量方法在AD患者和对照组之间显示出最大的差异,以及(2)这些效果如何取决于由tractography算法提取的纤维密度。我们从110名受试者的大脑扩散加权图像(DWI)中计算出了大脑网络(28名正常老年人,56名早期轻度认知障碍和11名轻度认知障碍晚期患者,以及15名患有AD的老年人)。我们从全脑束线描记术和皮层剥离术中得出了每个主题的连通性矩阵和网络拓扑度量。我们使用ODF查找表来加快光纤提取速度,并充分利用定向分布函数(ODF)中的全部信息。这使得计算高密度连接图成为可能。我们使用加速束摄影术来计算大量纤维,以了解纤维密度对网络测量有何影响,并在我们的数据中区分不同的疾病组。我们专注于根据加权和二进制无向连通性矩阵计算得出的全局效率,可传递性,路径长度,平均度,密度,模块化,小世界和分类性度量。在所有这些措施中,平均节点度是诊断组的最佳区分。高密度纤维基质最有助于弥补更细微的临床差异,例如介于轻度认知障碍(MCI)和正常人之间,或用于区分MCI的亚型(早期与晚期)。在对大脑连通性的临床分析中,需要小心,因为提取纤维的密度可能会影响网络测量方法对患者与对照组之间差异的吸收程度。

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