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Network-based classification of ADHD patients using discriminative subnetwork selection and graph kernel PCA

机译:基于判别子网络选择和图核PCA的基于ADHD患者的网络分类

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摘要

Background: Attention Deficit Hyperactivity Disorder (ADHD) is one of the most prevalent behavioral disorders in childhood and adolescence. Recently, network-based diagnosis of ADHD has attracted great attentions due to the fact that ADHD disease is related to not only individual brain regions but also the connections among them, while existing methods are hard to discover disorder patterns related with several brain regions.
机译:背景:注意力缺陷多动障碍(ADHD)是儿童和青少年中最普遍的行为障碍之一。近来,由于ADHD疾病不仅与单个脑区域有关,而且与它们之间的联系有关,因此基于网络的ADHD诊断引起了极大的关注,而现有的方法很难发现与几个脑区域有关的疾病模式。

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