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Spatio-temporal modeling of connectome-scale brain network interactions via time-evolving graphs

机译:通过时间演化图形的连接级脑网络交互的时空建模

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摘要

Many recent literature studies have revealed interesting dynamics patterns of functional brain networks derived from fMRI data. However, it has been rarely explored how functional networks spatially overlap (or interact) and how such connectome-scale network interactions temporally evolve. To explore these unanswered questions, this paper presents a novel framework for spatio-temporal modeling of connectome-scale functional brain network interactions via two main effective computational methodologies. First, to integrate, pool and compare brain networks across individuals and their cognitive states under task performances, we designed a novel group-wise dictionary learning scheme to derive connectome-scale consistent brain network templates that can be used to define the common reference space of brain network interactions. Second, the temporal dynamics of spatial network interactions is modeled by a weighted time-evolving graph, and then a data-driven unsupervised learning algorithm based on the dynamic behavioral mixed-membership model (DBMM) is adopted to identify behavioral patterns of brain networks during the temporal evolution process of spatial overlaps/interactions. Experimental results on the Human Connectome Project (HCP) task fMRI data showed that our methods can reveal meaningful, diverse behavior patterns of connectome-scale network interactions. In particular, those networks' behavior patterns are distinct across HCP tasks such as motor, working memory, language and social tasks, and their dynamics well correspond to the temporal changes of specific task designs. In general, our framework offers a new approach to characterizing human brain function by quantitative description for the temporal evolution of spatial overlaps/interactions of connectome-scale brain networks in a standard reference space.
机译:许多最近的文献研究揭示了来自FMRI数据的功能性脑网络的有趣动态模式。然而,已经很少探索了功能性网络在空间上重叠(或互动)以及如何在时间上发展的这种连接级网络交互。为了探索这些未答造的问题,本文通过两个主要有效计算方法提出了一种通过两个主要有效计算方法的连接尺度功能脑网络交互的时空建模的新框架。首先,在任务表现下整合,池和比较大脑网络以及他们的认知状态,我们设计了一种新颖的组 - 方面字典学习方案,用于导出可用于定义公共参考空间的连接级规模的一致大脑网络模板大脑网络互动。其次,空间网络交互的时间动态由加权时间不断的图形建模,然后采用基于动态行为混合成员资格模型(DBMM)的数据驱动的无监督学习算法来识别脑网络的行为模式空间重叠/相互作用的时间演化过程。人类连接项目(HCP)任务FMRI数据的实验结果表明,我们的方法可以揭示有意义的,多种行为模式的连接级网络交互。特别是,这些网络的行为模式在诸如电机,工作存储器,语言和社交任务之类的HCP任务中独立,以及它们的动态良好对应于特定任务设计的时间变化。通常,我们的框架提供了一种通过定量描述来表征人脑功能的新方法,用于在标准参考空间中的连接级脑网络中的空间重叠/相互作用的时间演变。

著录项

  • 来源
    《NeuroImage 》 |2018年第2期| 共20页
  • 作者单位

    Nankai Univ Coll Comp &

    Control Engn Tianjin Peoples R China;

    Univ Georgia Dept Comp Sci Cort Architecture Imaging &

    Discovery Lab Athens GA 30602 USA;

    Nankai Univ Coll Comp &

    Control Engn Tianjin Peoples R China;

    Nankai Univ Coll Comp &

    Control Engn Tianjin Peoples R China;

    Univ Georgia Dept Comp Sci Cort Architecture Imaging &

    Discovery Lab Athens GA 30602 USA;

    Univ Georgia Dept Comp Sci Cort Architecture Imaging &

    Discovery Lab Athens GA 30602 USA;

    Univ Georgia Dept Comp Sci Cort Architecture Imaging &

    Discovery Lab Athens GA 30602 USA;

    Univ Georgia Dept Comp Sci Cort Architecture Imaging &

    Discovery Lab Athens GA 30602 USA;

    Univ Georgia Dept Comp Sci Cort Architecture Imaging &

    Discovery Lab Athens GA 30602 USA;

    Univ Georgia Dept Comp Sci Cort Architecture Imaging &

    Discovery Lab Athens GA 30602 USA;

    Univ Georgia Dept Comp Sci Cort Architecture Imaging &

    Discovery Lab Athens GA 30602 USA;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 诊断学 ;
  • 关键词

    Functional brain networks; Spatio-temporal interaction dynamics; Task-based fMRI;

    机译:功能性大脑网络;时空交互动态;基于任务的FMRI;

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