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Multi-resolutional shape features via non-Euclidean wavelets: Applications to statistical analysis of cortical thickness

机译:通过非欧几里德小波的多分辨率形状特征:应用于皮质厚度的统计分析

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Statistical analysis on arbitrary surface meshes such as the cortical surface is an important approach to understanding brain diseases such as Alzheimer's disease (AD). Surface analysis may be able to identify specific cortical patterns that relate to certain disease characteristics or exhibit differences between groups. Our goal in this paper is to make group analysis of signals on surfaces more sensitive. To do this, we derive multi-scale shape descriptors that characterize the signal around each mesh vertex, i.e., its local context, at varying levels of resolution. In order to define such a shape descriptor, we make use of recent results from harmonic analysis that extend traditional continuous wavelet theory from the Euclidean to a non-Euclidean setting (i.e., a graph, mesh or network). Using this descriptor, we conduct experiments on two different datasets, the Alzheimer's Disease NeuroImaging Initiative (ADNI) data and images acquired at the Wisconsin Alzheimer's Disease Research Center (W-ADRC), focusing on individuals labeled as having Alzheimer's disease (AD), mild cognitive impairment (MCI) and healthy controls. In particular, we contrast traditional univariate methods with our multi-resolution approach which show increased sensitivity and improved statistical power to detect a group-level effects. We also provide an open source implementation.
机译:诸如皮质表面的任意表面网格的统计分析是了解脑疾病(如Alzheimer疾病(AD)的重要方法。表面分析可能能够识别与某些疾病特征相关的特定皮质模式或在组之间表现出差异。我们本文的目标是使曲面上的信号分析更敏感。为此,我们推出了多尺度形状描述符,该描述符在不同级别的分辨率范围内围绕每个网格顶点的信号,即其本地背景。为了定义这种形状描述符,我们利用谐波分析的结果,从欧几里德将传统的连续小波理论扩展到非欧几里德设置(即图形,网格或网络)。使用这种描述符,我们对两种不同的数据集进行实验,Alzheimer的神经影像学倡议(ADNI)在威斯康星州阿尔茨海默病的疾病研究中心(W-ADRC)中获得的数据和图像,重点是标有阿尔茨海默病(AD),轻度的个体认知障碍(MCI)和健康控制。特别是,我们用我们的多分辨率方法对比传统的单变量方法,其多分析方法显示出增加的灵敏度和改进的统计功率来检测组级效应。我们还提供开源实现。

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