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Diffusion-Based Population Statistics Using Tract Probability Maps

机译:使用领域概率图的基于扩散的人口统计

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We present a novel technique for the tract-based statistical analysis of diffusion imaging data. In our technique, we represent each white matter (WM) tract as a tract probability map (TPM): a function mapping a point to its probability of belonging to the tract. We start by automatically clustering the tracts identified in the brain via tractography into TPMs using a novel Gaussian process framework. Then, each tract is modeled by the skeleton of its TPM, a medial representation with a tubular or sheet-like geometry. The appropriate geometry for each tract is implicitly inferred from the data instead of being selected a priori, as is done by current tract-specific approaches. The TPM representation makes it possible to average diffusion imaging based features along directions locally perpendicular to the skeleton of each WM tract, increasing the sensitivity and specificity of statistical analyses on the WM. Our framework therefore facilitates the automated analysis of WM tract bundles, and enables the quantification and visualization of tract-based statistical differences between groups. We have demonstrated the applicability of our framework by studying WM differences between 34 schizophrenia patients and 24 healthy controls.
机译:我们提出了一种基于扩散统计数据的基于管道的统计分析的新技术。在我们的技术中,我们将每个白质(WM)区域表示为区域概率图(TPM):一种将点映射到其属于该区域的概率的函数。我们首先使用新颖的高斯过程框架,将通过束线描记术将在大脑中识别出的束线自动聚类到TPM中。然后,通过其TPM的骨架(具有管状或片状几何形状的内侧表示)来对每个区域进行建模。从数据中隐含地推断出每个区域的适当几何形状,而不是像当前区域特定方法那样先验地选择它们。 TPM表示使得可以沿着局部垂直于每个WM通道的骨骼的方向对基于扩散成像的特征求平均,从而提高了WM上统计分析的敏感性和特异性。因此,我们的框架有助于对WM道束进行自动分析,并能够量化和可视化各组之间基于道的统计差异。通过研究34位精神分裂症患者和24位健康对照之间的WM差异,我们已经证明了我们框架的适用性。

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