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Min-Cut Max-Flow for Network Abnormality Detection: Application to Preterm Birth

机译:用于网络异常检测的最小剪切最大流量:用于早产的应用

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Neuroimaging studies of structural connectomes typically average the data from many subjects and analyse the average properties of the resulting network. We propose a new framework for individual brain-network structural abnormality detection. The framework uses a graph-based anomaly detection algorithm that allows to detect abnormal structural connectivity on a subject level. The proposed method is generic and can be adapted for a broad range of network abnormality detection problems. In this study, we apply our method to investigate the integrity of white matter tracts of 19-year-old extremely preterm born individuals. We show the feasibility to cast the network abnormality detection problem into a min-cut max-flow problem, and identify consistent abnormal white matter tracts in extremely preterm subjects, including a common network involving the bilateral thalamus and frontal gyri.
机译:结构Conceptomes的神经影像研究通常是来自许多受试者的数据,并分析所得到的网络的平均性质。我们为个人脑网络结构异常检测提出了一种新的框架。该框架使用基于图形的异常检测算法,允许在主题电平上检测异常的结构连接。所提出的方法是通用的,可以适用于广泛的网络异常检测问题。在这项研究中,我们应用了我们的方法来调查19岁的最早产权的白质派的完整性。我们展示了将网络异常检测问题施放到闽切的最大流量问题中的可行性,并在极端预料的主体中鉴定一致的异常白质散,包括涉及双侧丘脑和额相吉尔的常见网络。

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