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Potential biomarkers for distinguishing people with Alzheimer's disease from cognitively intact elderly based on the rich-club hierarchical structure of white matter networks

机译:基于白质网络的富人俱乐部层次结构,将患有阿尔茨海默病的潜在生物标志物与阿尔茨海默病的疾病中的患者视而不到

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The aim of this study is to identify potential biomarkers that may distinguish people with Alzheimer's disease (AD) from cognitively intact elderly. We analyzed the features of rich-club hierarchical network between the AD and a control group by diffusion tensor imaging. We detected that the changes between the two groups were located mainly in the feeder and local connections. Then, we calculated the betweenness centrality of the rich nodes and the strength values of all feeder connections, and we chose the nodes and connections that showed the most significant differences as features. We found that 1) Feeder and local connections were changed in the AD group; 2) Rich nodes of the left putamen and precuneus had significant differences in betweenness centrality between the AD and control groups; 3) Three connections showed significant differences. The obtained features were fed into a linear discriminant analysis for classifying AD from cognitively intact elderly. The classification accuracy is superior to that of traditional biomarkers (hippocampal volume and clinical scores). Our results suggested that rich-club hierarchical network analysis is a viable tool for finding potential biomarkers. The obtained features can be applied as potential biomarkers for distinguishing AD patients from cognitively intact elderly. (C) 2018 Published by Elsevier B.V.
机译:本研究的目的是识别潜在的生物标志物,可以将人们与阿尔茨海默病(AD)区分离认知完整的老年人。我们通过扩散张量成像分析了广告和控制组之间的富人俱乐部层次网络的特征。我们检测到两组之间的变化主要位于馈线和局部连接中。然后,我们计算了丰富的节点之间的中心中心和所有馈线连接的强度值,并且我们选择了显示最显着差异的节点和连接。我们发现1)馈线和局部连接在广告组中更改; 2)左侧腐库和前导的富核节点在广告和对照组之间的中心性之间存在显着差异; 3)三个连接显示出显着差异。将所得特征送入用于分类广告的线性判别分析,用于从认知完整的老年人进行分类。分类准确性优于传统生物标志物(海马体积和临床评分)。我们的结果表明,Rich-Club分层网络分析是寻找潜在生物标志物的可行工具。所获得的特征可作为潜在的生物标志物应用,以区分AD患者从认知完整的老年人。 (c)2018由elsevier b.v发布。

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