Miri Ashtiani Seyedeh Naghmeh, Behnam Hamid, Daliri Mohammad Reza, Hossein-Zadeh Gholam-Ali, Mehrpour Masoud
Biomedical Engineering Department, School of Electrical Engineering, Iran University of Science and Technology (IUST), Tehran, Iran.
School of Cognitive Sciences (SCS), Institute for Research in Fundamental Sciences (IPM), Tehran, Iran.
Australas Phys Eng Sci Med. 2019 Dec;42(4):921-938. doi: 10.1007/s13246-019-00790-1. Epub 2019 Aug 26.
Cognitive dysfunction in multiple sclerosis (MS) seems to be the result of neural disconnections, leading to a wide range of brain functional network alterations. It is assumed that the analysis of the topological structure of brain connectivity network can be used to assess cognitive impairments in MS disease. We aimed to identify these brain connectivity pattern alterations and detect the significant features for the distinction of MS patients from healthy controls (HC). In this regard, the importance of functional brain networks construction for better exhibition of changes, inducing the improved reflection of functional organization structure should be precisely considered. In this paper, we strove to introduce a framework for modeling the functional connectivity network by considering the two most important intrinsic sparse and modular structures of brain. For the proposed approach, we first derived group-wise sparse representation via learning a common over-complete dictionary matrix from the aggregated cognitive task-based functional magnetic resonance imaging (fMRI) data of all subjects of the two groups to be able to investigate between-group differences. We then applied the modularity concept on achieved sparse coefficients to compute the connectivity strength between the two brain regions. We examined the changes in network topological properties between relapsing-remitting MS (RRMS) and matched HC groups by considering the pairwise connections of regions of the resulted weighted networks and extracting graph-based measures. We found that the informative brain regions were related to their important connectivity weights, which could distinguish MS patients from the healthy controls. The experimental findings also proved the discrimination ability of the modularity measure among all the global features. In addition, we identified such local feature subsets as eigenvector centrality, eccentricity, node strength, and within-module degree, which significantly differed between the two groups. Moreover, these nodal graph measures have been served as the detectors of brain regions, affected by different cognitive deficits. In general, our findings illustrated that integration of sparse representation, modular structure, and pairwise connectivity strength in combination with the graph properties could help us with the early diagnosis of cognitive alterations in the case of MS.
多发性硬化症(MS)中的认知功能障碍似乎是神经连接中断的结果,导致广泛的脑功能网络改变。据推测,脑连接网络拓扑结构的分析可用于评估MS疾病中的认知障碍。我们旨在识别这些脑连接模式改变,并检测区分MS患者与健康对照(HC)的显著特征。在这方面,应精确考虑构建功能性脑网络对于更好地展现变化、从而改善对功能组织结构反映的重要性。在本文中,我们努力引入一个框架,通过考虑脑的两个最重要的内在稀疏和模块化结构来对功能连接网络进行建模。对于所提出的方法,我们首先通过从两组所有受试者的聚合基于认知任务的功能磁共振成像(fMRI)数据中学习一个公共的超完备字典矩阵来导出组内稀疏表示,以便能够研究组间差异。然后,我们将模块化概念应用于获得的稀疏系数,以计算两个脑区之间的连接强度。我们通过考虑所得加权网络区域的成对连接并提取基于图的度量,检查复发缓解型MS(RRMS)和匹配的HC组之间网络拓扑属性的变化。我们发现信息丰富的脑区与其重要的连接权重相关,这可以区分MS患者和健康对照。实验结果还证明了模块化度量在所有全局特征中的判别能力。此外,我们确定了特征向量中心性、离心率、节点强度和模块内度等局部特征子集,两组之间存在显著差异。此外,这些节点图度量已作为受不同认知缺陷影响的脑区的检测器。总的来说,我们的研究结果表明,将稀疏表示、模块化结构和成对连接强度与图属性相结合,有助于我们在MS病例中早期诊断认知改变。