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Bi-threshold frequent subgraph mining for Alzheimer disease risk assessment

机译:双阈值频繁子图挖掘用于阿尔茨海默病风险评估

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An emerging trend in AD research is brain network development including graphic metrics and graph mining techniques. To construct a brain structural network, Diffusion Tensor Imaging (DTI) in conjunction with T1 weighted Magnetic Resonance Imaging (MRI) can be used to isolate brain regions as nodes, white matter tracts as the edge, and the density of the tracts as the weight to the edge. To study such network, its sub-network is often obtained by excluding unrelated nodes or edges. Existing research has heavily relied on domain knowledge or single-thresholding individual subject based network metrics to identify the sub network. In this research, we develop a bi-threshold frequent subgraph mining method (BT-FSG) to automatically filter out less important edges in responding to the clinical questions. Using this method, we are able to discover a subgraph of human brain network that can significantly reveal the difference between cognitively unimpaired APOE-4 carriers and non-carriers based on the correlations between the age vs. network local metric and age vs. network or global metric. This can potentially become a brain network marker for evaluating the AD risks for preclinical individuals.
机译:AD研究的新兴趋势是大脑网络的发展,包括图形指标和图形挖掘技术。要构建大脑结构网络,可以使用扩散张量成像(DTI)与T1加权磁共振成像(MRI)隔离以脑区域为结点,以白质束为边缘,以束密度作为重量。到边缘。为了研究这样的网络,通常通过排除不相关的节点或边缘来获得其子网。现有研究严重依赖领域知识或基于单个阈值的单个主题的网络指标来识别子网。在这项研究中,我们开发了一种双阈值频繁子图挖掘方法(BT-FSG),可以自动滤除次要的重要边缘,以应对临床问题。使用这种方法,我们能够发现人脑网络的一个子图,该子图可以根据年龄与网络本地指标之间的相关性以及年龄与网络或网络之间的相关性,显着揭示无认知的APOE-4携带者与非携带者之间的差异。全局指标。这有可能成为评估临床前个体AD风险的大脑网络标记。

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