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Multivariate Statistics of the Jacobian Matrices in Tensor Based Morphometry and Their Application to HIV/AIDS

机译:基于卷的形态学中的雅各族矩阵的多元统计及其对艾滋病毒/艾滋病的应用

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Tensor-based morphometry (TBM) is widely used in computational anatomy as a means to understand shape variation between structural brain images. A 3D nonlinear registration technique is typically used to align all brain images to a common neuroanatomical template, and the deformation fields are analyzed statistically to identify group differences in anatomy. However, the differences are usually computed solely from the determinants of the Jacobian matrices that are associated with the deformation fields computed by the registration procedure. Thus, much of the information contained within those matrices gets thrown out in the process. Only the magnitude of the expansions or contractions is examined, while the anisotropy and directional components of the changes are ignored. Here we remedy this problem by computing multivariate shape change statistics using the strain matrices. As the latter do not form a vector space, means and covariances are computed on the manifold of positive-definite matrices to which they belong. We study the brain morphology of 26 HIV/AIDS patients and 14 matched healthy control subjects using our method. The images are registered using a high-dimensional 3D fluid registration algorithm, which optimizes the Jensen-Rényi divergence, an information-theoretic measure of image correspondence. The anisotropy of the deformation is then computed. We apply a manifold version of Hotelling’s T2 test to the strain matrices. Our results complement those found from the determinants of the Jacobians alone and provide greater power in detecting group differences in brain structure.
机译:基于张量的形态格术(TBM)广泛用于计算解剖学中,作为理解结构脑图像之间的形状变化的手段。 3D非线性登记技术通常用于将所有脑图像对齐至共同的神经杀菌模板,并且统计分析变形场以识别解剖学的群体差异。然而,差异通常仅仅是从与通过登记过程计算的变形字段相关联的雅各比矩阵的决定因素。因此,在这些矩阵中包含的大部分信息被抛出在该过程中。仅检查扩展或收缩的幅度,而变化的各向异性和定向组件被忽略。在这里,我们通过使用应变矩阵计算多变量形状变化统计来解决这个问题。由于后者不形成矢量空间,计算它们所属的正面矩阵的歧管的方法和协方差。我们使用我们的方法研究26例HIV /艾滋病患者的脑形态和14例匹配的健康对照受试者。使用高维3D流体登记算法登记图像,该算法优化了Jensen-RγYi发散,是图像对应的信息定理测量。然后计算变形的各向异性。我们将歧管的T2测试应用于应变矩阵。我们的结果补充了雅可比人的决定因素,并在脑结构中检测组差异方面提供了更大的力量。

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