扩散张量成像中统计假设的交互形成

Amin Abbasloo, Vitalis Wiens, T. Schmidt-Wilcke, P. Sundgren, R. Klein, T. Schultz
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引用次数: 4

摘要

当弥散张量成像(Diffusion Tensor Imaging, DTI)用于临床研究时,统计假设检验是确定组间(如患者和健康对照组)显著差异的标准方法。然而,扩散张量包含六个自由度,最常用的单变量测试将它们简化为单个标量,例如分数各向异性。考虑到全张量信息的多变量测试已经被开发出来,但在实践中并没有被广泛采用。在分析现有单变量和多变量检验的局限性的基础上,我们认为使用更灵活的、可指导的检验是有益的。因此,我们引入了一个可以定制的测试,以包含与手头的分析任务相关的张量属性的任何子集。我们还提供了一个可视化分析系统,该系统支持针对特定场景进行定制的探索性任务。我们的系统紧密结合定量分析与适当的可视化。它将空间和抽象视图联系起来,以揭示强烈差异的集群,将它们与受影响的解剖结构联系起来,并在视觉上比较不同测试的结果。在一个用例中,我们的系统导致了关于系统性红斑狼疮对大脑中水扩散影响的几个新假设的形成。(少)
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Interactive Formation of Statistical Hypotheses in Diffusion Tensor Imaging
When Diffusion Tensor Imaging (DTI) is used in clinical studies, statistical hypothesis testing is the standard approach to establish significant differences between groups, such as patients and healthy controls. However, diffusion tensors contain six degrees of freedom, and the most commonly used univariate tests reduce them to a single scalar, such as Fractional Anisotropy. Multivariate tests that account for the full tensor information have been developed, but have not been widely adopted in practice. Based on analyzing the limitations of existing univariate and multivariate tests, we argue that it is beneficial to use a more flexible, steerable test. Therefore, we introduce a test that can be customized to include any subset of tensor attributes that are relevant to the analysis task at hand. We also present a visual analytics system that supports the exploratory task of customizing it to a specific scenario. Our system closely integrates quantitative analysis with suitable visualizations. It links spatial and abstract views to reveal clusters of strong differences, to relate them to the affected anatomical structures, and to visually compare the results of different tests. A use case is presented in which our system leads to the formation of several new hypotheses about the effects of systemic lupus erythematosus on water diffusion in the brain. (Less)
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