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Multi-resolution statistical analysis of brain connectivity graphs in preclinical Alzheimer's disease

机译:临床前阿尔茨海默氏病脑连接图的多分辨率统计分析

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There is significant interest, both from basic and applied research perspectives, in understanding how structural/functional connectivity changes can explain behavioral symptoms and predict decline in neurodegenerative diseases such as Alzheimer's disease (AD). The first step in most such analyses is to encode the connectivity information as a graph; then, one may perform statistical inference on various 'global' graph theoretic summary measures (e.g., modularity, graph diameter) and/or at the level of individual edges (or connections). For AD in particular, clear differences in connectivity at the dementia stage of the disease (relative to healthy controls) have been identified. Despite such findings, AD-related connectivity changes in preclinical disease remain poorly characterized. Such preclinical datasets are typically smaller and group differences are weaker. In this paper, we propose a new multi-resolution method for performing statistical analysis of connectivity networks/graphs derived from neuroimaging data. At the high level, the method occupies the middle ground between the two contrasts - that is, to analyze global graph summary measures (global) or connectivity strengths or correlations for individual edges similar to voxel based analysis (local). Instead, our strategy derives a Wavelet representation at each primitive (connection edge) which captures the graph context at multiple resolutions. We provide extensive empirical evidence of how this framework offers improved statistical power by analyzing two distinct AD datasets. Here, connectivity is derived from diffusion tensor magnetic resonance images by running a tractography routine. We first present results showing significant connectivity differences between AD patients and controls that were not evident using standard approaches. Later, we show results on populations that are not diagnosed with AD but have a positive family history risk of AD where our algorithm helps in identifying potentially subtle differences between patient groups. We also give an easy to deploy open source implementation of the algorithm for use within studies of connectivity in AD and other neurodegenerative disorders. (C) 2015 Elsevier Inc. All rights reserved.
机译:无论是基础研究还是应用研究,都对理解结构/功能连接性变化如何解释行为症状并预测神经退行性疾病(例如阿尔茨海默氏病(AD))的下降具有极大的兴趣。大多数此类分析的第一步是将连通性信息编码为图形。然后,可以对各种“全局”图形理论总结度量(例如,模块化,图形直径)和/或在各个边沿(或连接)的位置执行统计推断。特别是对于AD,已经确定了在疾病痴呆阶段(相对于健康对照)的连通性方面存在明显差异。尽管有这样的发现,但临床前疾病中与AD相关的连接性变化仍然缺乏明确的特征。这样的临床前数据集通常较小,群体差异较弱。在本文中,我们提出了一种新的多分辨率方法,用于对从神经影像数据得出的连接网络/图形进行统计分析。在较高的层次上,该方法占据了两个对比之间的中间点-也就是说,类似于基于体素的分析(局部),分析全局图摘要度量(全局)或各个边缘的连接强度或相关性。取而代之的是,我们的策略在每个图元(连接边)上获取小波表示形式,从而以多种分辨率捕获图形上下文。我们通过分析两个不同的AD数据集,提供了广泛的经验证据,说明此框架如何提供改进的统计能力。在此,通过运行束线照相术例程从扩散张量磁共振图像得出连通性。我们首先提出的结果显示,AD患者与对照组之间的连通性差异很明显,而使用标准方法并不明显。后来,我们显示了未诊断为AD但具有正家族史AD风险的人群的结果,其中我们的算法有助于识别患者组之间潜在的细微差异。我们还提供了一种易于部署的算法的开放源代码实现,可用于研究AD和其他神经退行性疾病的连通性。 (C)2015 Elsevier Inc.保留所有权利。

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