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Multi-resolution statistical analysis on graph structured data in neuroimaging

机译:神经影像中图结构数据的多分辨率统计分析

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Statistical data analysis plays a major role in discovering structural and functional imaging phenotypes for mental disorders such as Alzheimer's disease (AD). The goal here is to identify, ideally early on, which regions in the brain show abnormal variations with a disorder. To make the method more sensitive, we rely on a multi-resolutional perspective of the given data. Since the underlying imaging data (such as cortical surfaces and connectomes) are naturally represented in the form of weighted graphs which lie in a non-Euclidean space, we introduce recent work from the harmonics literature to derive an effective multi-scale descriptor using wavelets on graphs that characterize the local context at each data point. Using this descriptor, we demonstrate experiments where we identify significant differences between AD and control populations using cortical surface data and tractography derived graphsetworks.
机译:统计数据分析在发现精神疾病(例如阿尔茨海默氏病(AD))的结构和功能成像表型中起着重要作用。目的是在理想的情况下尽早识别大脑中哪些区域显示出异常的异常变化。为了使该方法更加灵敏,我们依赖于给定数据的多分辨率视角。由于基本的成像数据(例如皮质表面和连接体)自然以非欧几里得空间中的加权图的形式表示,因此,我们从谐波文献中介绍了最近的工作,以利用小波对有效的多尺度描述符进行推导。表示每个数据点本地上下文的图形。使用此描述符,我们演示了实验,在这些实验中,我们使用皮层表面数据和束线图得出的图/网络来确定AD和对照人群之间的显着差异。

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