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Thickness NETwork (ThickNet) Features for the Detection of Prodromal AD

机译:用于检测前驱性AD的厚度网络(ThickNet)功能

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Regional analysis of cortical thickness has been studied extensively in building imaging biomarkers for early detection of Alzheimer's disease (AD), but not its inter-regional covariation. We present novel features based on the inter-regional co-variation of cortical thickness. Initially the cortical labels of each patient is partitioned into small patches (graph nodes) by spatial k-means clustering. A graph is then constructed by establishing a link between two nodes if the difference in thickness between the nodes is below a certain threshold. From this binary graph, thickness network (ThickNet) features are computed using nodal degree, between-ness and clustering coefficient measures. Fusing them with multiple kernel learning, we demonstrate their potential for the detection of prodromal AD.
机译:皮质厚度的区域分析已被广泛用于构建成像生物标记物以早期检测阿尔茨海默氏病(AD),但尚未进行区域间协变的研究。我们提出基于皮质厚度的区域间协变的新颖特征。最初,每个患者的皮质标签通过空间k均值聚类划分为小块(图节点)。如果两个节点之间的厚度差低于某个阈值,则可以通过在两个节点之间建立链接来构造图形。根据该二元图,使用节点度,中间度和聚类系数度量来计算厚度网络(ThickNet)特征。将它们与多核学习融合在一起,我们证明了它们在检测前驱性AD中的潜力。

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