Discovering network-level functional interactions from working memory fMRI data

Xi Jiang, Jinglei Lv, Dajiang Zhu, Tuo Zhang, Xiang Li, Xintao Hu, Lei Guo, Tianming Liu
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引用次数: 1

Abstract

It is widely believed that working memory process involves large-scale functional interactions among multiple brain networks. However, network-level functional interactions across large-scale brain networks in working memory have been rarely explored yet in the literature. In this paper, we propose a novel framework for modeling network-level functional interactions in working memory based on our publicly released 358 DICCCOL landmarks. First, 14 DICCCOLs are detected as group-wise activated ROIs via GLM and compose the `basic network' of working memory. Second, the time-frequency functional interaction patterns of each pair of activated DICCCOL and other DICCCOLs are calculated using cross-wavelet transform. Third, the common functional interaction patterns and corresponding brain networks are learned via effective online dictionary learning and sparse coding methods. Experimental results showed that multiple brain networks are involved in working memory processes. More importantly, each brain network interacts with the `basic network' via a specific functionally meaningful time-frequency interaction pattern.
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从工作记忆fMRI数据中发现网络级功能交互
人们普遍认为,工作记忆过程涉及多个脑网络之间的大规模功能相互作用。然而,在工作记忆中,跨大尺度大脑网络的网络级功能相互作用在文献中很少被探索。在本文中,我们提出了一个基于我们公开发布的358个DICCCOL标志的工作记忆网络级功能交互建模的新框架。首先,通过GLM检测到14个DICCCOLs为分组激活的roi,并组成工作记忆的“基本网络”。其次,利用交叉小波变换计算每对激活的DICCCOL与其他DICCCOL的时频泛函相互作用模式;第三,通过有效的在线字典学习和稀疏编码方法学习常见的功能交互模式和相应的脑网络。实验结果表明,工作记忆过程涉及多个脑网络。更重要的是,每个大脑网络通过特定的有功能意义的时频互动模式与“基本网络”相互作用。
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