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Insight into Disrupted Spatial Patterns of Human Connectome in Alzheimer's Disease via Subgraph Mining

机译:通过子图挖掘洞察阿尔茨海默氏病中人类连接组中断的空间模式

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Alzheimer's disease (AD) is the most common cause of age-related dementia, which prominently affects the human connectome. In this paper, the authors focus on the question how they can identify disrupted spatial patterns of the human connectome in AD based on a data mining framework Using diffusion tractography, the human connectomes for each individual subject were constructed based on two diffusion derived attributes: fiber density and fractional anisotropy, to represent the structural brain connectivity patterns. After frequent subgraph mining, the abnormal score was finally defined to identify disrupted subgraph patterns in patients. Experiments demonstrated that our data-driven approach, for the first time, allows identifying selective spatial pattern changes of the human connectome in AD that perfectly matched grey matter changes of the disease. Their findings also bring new insights into how AD propagates and disrupts the regional integrity of large-scale structural brain networks in a fiber connectivity-based way.
机译:阿尔茨海默氏病(AD)是与年龄有关的痴呆症的最常见病因,它显着影响人类连接基因组。在本文中,作者关注于一个问题,即他们如何基于数据挖掘框架在AD中识别人类连接组的破坏空间模式。使用扩散束摄影术,基于两个扩散派生的属性为每个受试者构建了人类连接组:纤维密度和分数各向异性,以代表大脑的结构连通性模式。经过频繁的子图挖掘后,最终定义了异常评分,以识别患者中被破坏的子图模式。实验表明,我们的数据驱动方法首次允许识别出与疾病的灰质变化完全匹配的AD人形连接体的选择性空间模式变化。他们的发现还为AD如何以基于光纤连接的方式传播和破坏大规模结构性脑网络的区域完整性带来了新见解。

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