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Multi-resolutional Brain Network Filtering and Analysis via Wavelets on Non-Euclidean Space

机译:多分辨率的脑网络过滤和分析通过非欧空间小波

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摘要

Advances in resting state fMRI and diffusion weighted imaging (DWI) have led to much interest in studies that evaluate hypotheses focused on how brain connectivity networks show variations across clinically disparate groups. However, various sources of error (e.g., tractography errors, magnetic field distortion, and motion artifacts) leak into the data, and make downstream statistical analysis problematic. In small sample size studies, such noise have an unfortunate effect that the differential signal may not be identifiable and so the null hypothesis cannot be rejected. Traditionally, smoothing is often used to filter out noise. But the construction of convolving with a Gaussian kernel is not well understood on arbitrarily connected graphs. Furthermore, there are no direct analogues of scale-space theory for graphs — ones which allow to view the signal at multiple resolutions. We provide rigorous frameworks for performing ‘multi-resolutional’ analysis on brain connectivity graphs. These are based on the recent theory of non-Euclidean wavelets. We provide strong evidence, on brain connectivity data from a network analysis study (structural connectivity differences in adult euthymic bipolar subjects), that the proposed algorithm allows identifying statistically significant network variations, which are clinically meaningful, where classical statistical tests, if applied directly, fail.
机译:静止状态功能磁共振成像和弥散加权成像(DWI)的进步引起了人们对评估假说的研究的兴趣,这些假说的重点是大脑连接网络如何显示不同临床群体之间的差异。然而,各种误差源(例如,束线照相术误差,磁场畸变和运动伪影)泄漏​​到数据中,并使下游统计分析成为问题。在小样本量研究中,此类噪声具有不幸的效果,即可能无法识别差分信号,因此无法拒绝零假设。传统上,平滑通常用于滤除噪声。但是,在任意连接的图上对高斯核卷积的构造还不甚了解。此外,没有用于图形的比例尺空间理论的直接类似物,它们允许以多种分辨率查看信号。我们提供了严格的框架,可对大脑的连通性图进行“多分辨率”分析。这些是基于非欧氏小波的最新理论。对于来自网络分析研究的大脑连接性数据(成人正常人两栖性正常人的结构连接性差异),我们提供了有力的证据,表明所提出的算法可以识别具有统计学意义的重要网络变异,具有临床意义,如果直接应用经典统计检验,失败。

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