Learning Features of Brain Network for Anomaly Detection

Jiaxin Liu, Wei Zhao, Ye Hong, Sheng Gao, Xi Huang, Yingjie Zhou
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引用次数: 3

Abstract

Brain network is a kind of biological networks, which could express complex connectivity among brain functional components. The node in brain network denotes region of interest, which executes specific function in the brain. The edge in brain network represents the connection relationship between nodes. Neuropsychiatric disorders can cause changes in the brain's nerves, which will further change the related characteristics of brain network. The detection for neuropsychiatric disorders with brain network could be treated as an anomaly detection problem. Recent researches have explored using complex networks or graph mining to deal with the detection problem. However, they neither ignore local structural features in critical regions nor fail to comprehensively extract the structural features for brain network. In this paper, we propose a feature learning method to build effective representations for brain network. By treating the closed frequent graph as a node, these representations contain both connection relationships in critical regions and local/global structural features for critical regions, which could benefit the detection with brain network. Experiments using real world data indicate that the proposed method could improve the detection ability of existing machine learning methods in the literatures.
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脑网络异常检测的学习特征
脑网络是一种生物网络,可以表达脑功能组分之间复杂的连通性。脑网络中的节点表示感兴趣的区域,它在大脑中执行特定的功能。脑网络中的边缘表示节点之间的连接关系。神经精神障碍会引起大脑神经的变化,进而改变大脑网络的相关特征。神经精神疾病的脑网络检测可视为异常检测问题。最近的研究探索了使用复杂网络或图挖掘来处理检测问题。然而,它们既没有忽略关键区域的局部结构特征,也没有全面提取脑网络的结构特征。在本文中,我们提出了一种特征学习方法来构建有效的脑网络表征。通过将封闭频繁图视为一个节点,这些表征既包含关键区域的连接关系,又包含关键区域的局部/全局结构特征,有利于脑网络检测。使用真实数据的实验表明,该方法可以提高文献中现有机器学习方法的检测能力。
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