Riemannian Variance Filtering: An Independent Filtering Scheme for Statistical Tests on Manifold-valued Data.

Ligang Zheng, Hyunwoo J Kim, Nagesh Adluru, Michael A Newton, Vikas Singh
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Abstract

Performing large scale hypothesis testing on brain imaging data to identify group-wise differences (e.g., between healthy and diseased subjects) typically leads to a large number of tests (one per voxel). Multiple testing adjustment (or correction) is necessary to control false positives, which may lead to lower detection power in detecting true positives. Motivated by the use of so-called "independent filtering" techniques in statistics (for genomics applications), this paper investigates the use of independent filtering for manifold-valued data (e.g., Diffusion Tensor Imaging, Cauchy Deformation Tensors) which are broadly used in neuroimaging studies. Inspired by the concept of variance of a Riemannian Gaussian distribution, a type of non-specific data-dependent Riemannian variance filter is proposed. In practice, the filter will select a subset of the full set of voxels for performing the statistical test, leading to a more appropriate multiple testing correction. Our experiments on synthetic/simulated manifold-valued data show that the detection power is improved when the statistical tests are performed on the voxel locations that "pass" the filter. Given the broadening scope of applications where manifold-valued data are utilized, the scheme can serve as a general feature selection scheme.

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黎曼方差过滤:用于漫值数据统计检验的独立滤波方案。
对大脑成像数据进行大规模假设检验,以确定组间差异(如健康受试者与患病受试者之间的差异),通常需要进行大量测试(每个体素一次)。为了控制假阳性,有必要进行多重测试调整(或校正),这可能会降低检测真阳性的检测能力。受统计学中所谓的 "独立滤波 "技术(用于基因组学应用)的启发,本文研究了独立滤波在流形值数据(如扩散张量成像、考奇形变张量)中的应用,这些数据在神经成像研究中被广泛使用。受黎曼高斯分布方差概念的启发,我们提出了一种非特定数据依赖的黎曼方差滤波器。在实践中,滤波器将从全套体素中选择一个子集进行统计检验,从而获得更合适的多重检验校正。我们在合成/模拟流形值数据上进行的实验表明,在 "通过 "滤波器的体素位置上进行统计检验时,检测能力会得到提高。考虑到利用流形值数据的应用范围不断扩大,该方案可作为一种通用的特征选择方案。
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