Huiwen Luo, W. Dou, Yu Pan, Yueheng Wang, Yujia Mu, Yudu Li, Xiaojie Zhang, Quan Xu, Shuyu Yan, Yuanyuan Tu
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The joint analysis implements feature combination of global and local network attributes to measure or evaluate the brain region characteristics towards reducing uncertainty. The resting-state fMRI data of 37 subjects (22 normal subjects and 15 patients with spinal cord injury (SCI)) have been used to test the proposed method. Three-level functional connectivity networks are jointly analyzed to combine the two-type significant features, the significant differences between normal and patient, and the significant correlations between network features and clinic function scores of patient. The results of the features combination are validated by the specific Brodmann area (BA) regions characterized by the similar and the complementary features, and most of them belong to the dorsolateral prefrontal cortex (DLPFC) and correspond with SCI disease. 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引用次数: 1
摘要
基于功能磁共振成像(fMRI)信号构建脑网络是研究人脑功能连通性的有效方法之一。不同的脑网络构建方法会产生不同的结果。人们不知道哪种方法是可靠的。因此,有必要建立脑网络分析的综合框架来研究功能连通性。提出了一种多层次脑功能网络的联合分析方法。这些网络是基于体素之间和脑解剖区域之间的fMRI信号的不同相关矩阵构建的。它们分别是基于体素和区域的全脑网络和基于体素的脑内局部网络。联合分析实现了全局和局部网络属性的特征组合,以测量或评估大脑区域特征,减少不确定性。37名受试者(22名正常受试者和15名脊髓损伤患者)静息状态fMRI数据被用来验证所提出的方法。联合分析三级功能连接网络,结合两类显著特征、正常人与患者的显著差异、网络特征与患者临床功能评分的显著相关性。特征组合的结果得到了以相似和互补特征为特征的特定Brodmann area (BA)区域的验证,这些特征大部分属于背外侧前额叶皮层(DLPFC),与SCI疾病相对应。与常用的基于体素的全脑网络网络分析相比,本文提出的联合分析方法能够提供更集中、更稳健、更可靠的证据。总的来说,该方法利用了不同功能网络的优势,并通过这些网络的一致性和互补性向我们展示了完整的发现。这将是一种新的人脑网络分析方法。
Joint analysis of multi-level functional brain networks
Building brain networks based on functional Magnetic Resonance Imaging (fMRI) signal is one of the efficient methods to study functional connectivity of human brain. Various methods of constructing brain network will lead to different results. It is wondered which method is reliable. Therefore, it is necessary to set up a synthetical framework of brain network analysis to study the functional connectivity. A joint analysis method of multi-level functional brain networks is proposed in this paper. These networks are constructed based on different correlation matrixes of fMRI signal between voxels and between anatomical areas (regions) of brain. They are called whole brain network of voxel-based and region-based, and local network of voxel-based inside brain regions. The joint analysis implements feature combination of global and local network attributes to measure or evaluate the brain region characteristics towards reducing uncertainty. The resting-state fMRI data of 37 subjects (22 normal subjects and 15 patients with spinal cord injury (SCI)) have been used to test the proposed method. Three-level functional connectivity networks are jointly analyzed to combine the two-type significant features, the significant differences between normal and patient, and the significant correlations between network features and clinic function scores of patient. The results of the features combination are validated by the specific Brodmann area (BA) regions characterized by the similar and the complementary features, and most of them belong to the dorsolateral prefrontal cortex (DLPFC) and correspond with SCI disease. Compared with network analysis of the commonly used voxel-based whole brain network, the proposed joint analysis method can provide more central, more robust and more reliable evidences. Overall, the proposed method takes advantages of different functional networks and shows the complete discovery to us by the consistency and mutual complementation of these kinds of networks. It would be a new network analysis method of human brain.