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Comparing Community Detection Algorithms on Neuroimaging Data from Multiple Subjects

机译:比较来自多个受试者的神经影像数据的社区检测算法

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It is well-known that the brain is a complex network""brain areas dedicated to different functions. As such,""consisting of""it is natural to shift toward brain network from brain mapping for deeper understanding of brain functions. Although graph theoretical network metrics measuring global or local properties of network topology have been used to investigate the brain network, they do no provide any information about intermediate scale of the brain network, which is provided by the community structure analysis.""In this paper, we propose a method to compare different community detection algorithms for multiple subjects data in terms of the agreement of a group-based community structure with individual community structures. As it is crucial to find a single group-based community structure for a group of subjects to discuss about brain areas and connections, a number of algorithms based on different approaches have been proposed. To show the feasibility of the method for comparing different algorithms, two community detection algorithms based on different approaches ("virtual-typical-subject" and "group analysis") were examined. The Normalized Mutual Information was computed to measure similarity between the group-based community structure and individual community structures derived from resting-state fMRI functional network, and was used for comparing the two algorithms. Our method demonstrated that the algorithm based on the group-analysis approach detected a group-based community structure with greater agreement with individual community structures.
机译:众所周知,大脑是专门用于不同功能的复杂网络“大脑区域”。这样,“由...组成”很自然地从脑图向脑网络转移,以更深入地了解脑功能。尽管已使用可测量网络拓扑全局或局部属性的图形理论网络度量来研究大脑网络,但它们并未提供有关社区结构分析所提供的关于大脑网络中间规模的任何信息。“”本文中,我们提出了一种方法,用于比较基于群体的社区结构与单个社区结构之间的一致性,从而针对多个主题数据比较不同的社区检测算法。由于为一组对象找到一个讨论基于大脑区域和连接的单一基于群体的社区结构至关重要,因此提出了许多基于不同方法的算法。为了显示该方法用于比较不同算法的可行性,研究了两种基于不同方法的社区检测算法(“虚拟典型对象”和“组分析”)。计算归一化的互信息以测量基于群体的社区结构与从静止状态fMRI功能网络派生的单个社区结构之间的相似性,并将其用于比较这两种算法。我们的方法表明,基于群体分析方法的算法检测到基于群体的社区结构,与个体社区结构的一致性更高。

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