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Matched signal detection on graphs: Theory and application to brain imaging data classification

机译:图中匹配的信号检测:理论和应用于脑成像数据分类

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Motivated by recent progress in signal processing on graphs, we have developed a matched signal detection (MSD) theory for signals with intrinsic structures described by weighted graphs. First, we regard graph Laplacian eigenvalues as frequencies of graph-signals and assume that the signal is in a subspace spanned by the first few graph Laplacian eigenvectors associated with lower eigenvalues. The conventional matched subspace detector can be applied to this case. Furthermore, we study signals that may not merely live in a subspace. Concretely, we consider signals with bounded variation on graphs and more general signals that are randomly drawn from a prior distribution. For bounded variation signals, the test is a weighted energy detector. For the random signals, the test statistic is the difference of signal variations on associated graphs, if a degenerate Gaussian distribution specified by the graph Laplacian is adopted. We evaluate the effectiveness of the MSD on graphs both with simulated and real data sets. Specifically, we apply MSD to the brain imaging data classification problem of Alzheimer's disease (AD) based on two independent data sets: 1) positron emission tomography data with Pittsburgh compound-B tracer of 30 AD and 40 normal control (NC) subjects, and 2) resting-state functional magnetic resonance imaging (R-fMRI) data of 30 early mild cognitive impairment and 20 NC subjects. Our results demonstrate that the MSD approach is able to outperform the traditional methods and help detect AD at an early stage, probably due to the success of exploiting the manifold structure of the data. (C) 2015 Published by Elsevier Inc.
机译:最近在图中的信号处理中的进展中的动机,我们开发了一种匹配的信号检测(MSD)理论,用于用加权图表描述的内在结构的信号。首先,我们将图形拉普拉斯特征值视为图形信号的频率,并且假设信号是由与下部特征值相关联的第一少数图拉普拉斯特征向量跨越的子空间。可以将传统的匹配子空间检测器应用于这种情况。此外,我们研究可能不仅仅是存在于子空间的信号。具体地,我们考虑在图形上的界限变化以及从先前分发中随机绘制的更一般信号的信号。对于界限变化信号,测试是加权能量检测器。对于随机信号,测试统计是在采用图拉普拉斯指定的退化高斯分布时,相关图的信号变化的差异。我们评估MSD在具有模拟和真实数据集的图中的有效性。具体而言,基于两个独立数据集(AD)的脑成像(AD)应用MSD,基于两个独立的数据集:1)与30 ad和40个正常对照(NC)受试者的匹配性断层扫描数据的正电子发射断层扫描数据。 2)静态功能磁共振成像(R-FMRI)30早期轻度认知障碍和20个NC受试者的数据。我们的结果表明,MSD方法能够优于传统方法并在早期阶段检测广告,可能是由于利用数据的歧管结构的成功。 (c)2015年由elsevier公司发布

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