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Resolving Anatomical and Functional Structure in Human Brain Organization: Identifying Mesoscale Organization in Weighted Network Representations

机译:解决人脑组织的解剖和功能结构:在加权网络表示中识别中尺度组织

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摘要

Human brain anatomy and function display a combination of modular and hierarchical organization, suggesting the importance of both cohesive structures and variable resolutions in the facilitation of healthy cognitive processes. However, tools to simultaneously probe these features of brain architecture require further development. We propose and apply a set of methods to extract cohesive structures in network representations of brain connectivity using multi-resolution techniques. We employ a combination of soft thresholding, windowed thresholding, and resolution in community detection, that enable us to identify and isolate structures associated with different weights. One such mesoscale structure is bipartivity, which quantifies the extent to which the brain is divided into two partitions with high connectivity between partitions and low connectivity within partitions. A second, complementary mesoscale structure is modularity, which quantifies the extent to which the brain is divided into multiple communities with strong connectivity within each community and weak connectivity between communities. Our methods lead to multi-resolution curves of these network diagnostics over a range of spatial, geometric, and structural scales. For statistical comparison, we contrast our results with those obtained for several benchmark null models. Our work demonstrates that multi-resolution diagnostic curves capture complex organizational profiles in weighted graphs. We apply these methods to the identification of resolution-specific characteristics of healthy weighted graph architecture and altered connectivity profiles in psychiatric disease.
机译:人脑的解剖结构和功能显示出模块化和分层组织的组合,这暗示了内聚结构和可变分辨率在促进健康认知过程中的重要性。但是,同时探查大脑结构这些特征的工具需要进一步开发。我们提出并应用了一套方法,以使用多分辨率技术提取大脑连接性的网络表示中的内聚结构。我们在社区检测中采用了软阈值,窗口阈值和分辨率的组合,使我们能够识别和隔离与不同权重相关的结构。一种这样的中尺度结构是双向性,它量化了大脑被划分为两个分区的程度,两个分区之间具有较高的连通性,而分区之间的连通性较低。第二种互补的中尺度结构是模块化,它量化了大脑被划分为多个社区的程度,每个社区内部的连通性很强,而社区之间的连通性很弱。我们的方法可在一系列空间,几何和结构范围内得出这些网络诊断的多分辨率曲线。为了进行统计比较,我们将我们的结果与从多个基准空模型获得的结果进行对比。我们的工作表明,多分辨率诊断曲线可以在加权图中捕获复杂的组织概况。我们将这些方法应用于健康加权图体系结构的特定于分辨率的特征的识别以及精神疾病中已更改的连接配置文件。

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