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Self-Adaptive Skeleton Approaches to Detect Self-Organized Coalitions From Brain Functional Networks Through Probabilistic Mixture Models

机译:通过概率混合模型从脑功能网络中检测自适应骨骼骨骼的方法

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摘要

Detecting self-organized coalitions from functional networks is one of the most important ways to uncover functional mechanisms in the brain. Determining these raises well-known technical challenges in terms of scale imbalance, outliers and hard-examples. In this article, we propose a novel self-adaptive skeleton approach to detect coalitions through an approximation method based on probabilistic mixture models. The nodes in the networks are characterized in terms of robust k-order complete subgraphs (k-clique) as essential substructures. The k-clique enumeration algorithm quickly enumerates all k-cliques in a parallel manner for a given network. Then, the cliques, from max-clique down to min-clique, of each order k, are hierarchically embedded into a probabilistic mixture model. They are self-adapted to the corresponding structure density of coalitions in the brain functional networks through different order k. All the cliques are merged and evolved into robust skeletons to sustain each unbalanced coalition by eliminating outliers and separating overlaps. We call this the k-CLIque Merging Evolution (CLIME) algorithm. The experimental results illustrate that the proposed approaches are robust to density variation and coalition mixture and can enable the effective detection of coalitions from real brain functional networks. There exist potential cognitive functional relations between the regions of interest in the coalitions revealed by our methods, which suggests the approach can be usefully applied in neuroscientific studies.
机译:检测功能网络的自组织联盟是揭示大脑中功能机制的最重要方法之一。在规模不平衡,异常值和硬示例方面,确定这些挑战在众所周知的技术挑战中提出了着名的技术挑战。在本文中,我们提出了一种新颖的自适应骨架方法来通过基于概率混合模型的近似方法来检测联盟。网络中的节点以强大的K-顺序完成子图(K-Clique)为基本子结构的表征。 K-Clique枚举算法以指定的网络并行方式快速枚举所有K-Cliques。然后,从每个订单K的Max-Clique向下到Min-Clique的派系被分级嵌入到概率混合模型中。它们通过不同的顺序k自适应脑功能网络中的相应组织密度。所有的派系都被合并并演变成强大的骨架,以通过消除异常值和分离重叠来维持每个不平衡的联盟。我们称之为K-Clique合并演化(CLIME)算法。实验结果表明,所提出的方法对密度变异和联盟混合物具有鲁棒,能够有效地检测真实脑功能网络的联盟。我们的方法揭示的联盟区域之间存在潜在的认知功能关系,这表明该方法可以在神经科学研究中使用。

著录项

  • 来源
    《ACM transactions on knowledge discovery from data》 |2021年第5期|87.1-87.26|共26页
  • 作者单位

    Dalian Maritime Univ Linghai Rd 1 Dalian 116026 Liaoning Peoples R China;

    Dalian Maritime Univ Linghai Rd 1 Dalian 116026 Liaoning Peoples R China;

    Dublin City Univ Dublin Ireland;

    Georgia Southern Univ Statesboro GA 30460 USA;

    Pingdingshan Univ Pingdingshan 467000 Henan Peoples R China;

    Dalian Maritime Univ Linghai Rd 1 Dalian 116026 Liaoning Peoples R China;

    Mininglamp Acad Sci Shanghai 200232 Peoples R China|Hefei Univ Technol Key Lab Knowledge Engn Big Data Minist Educ Hefei 230009 Peoples R China|Mininglamp Acad Sci Mininglamp Technol Shanghai 200232 Peoples R China;

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

    Brain functional networks; self-organized coalition; probabilistic mixture model;

    机译:脑功能网络;自组织联盟;概率混合模型;
  • 入库时间 2022-08-19 03:10:10

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