处理高角分辨率扩散图像的非参数黎曼框架

A. Goh, C. Lenglet, P. Thompson, R. Vidal
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引用次数: 36

摘要

高角分辨率扩散成像已成为磁共振体内成像的重要技术。目前该领域的研究主要集中在开发方向分布函数(ODF)的计算方法,方向分布函数是水分子沿球体上任意角度扩散的概率分布函数。在本文中,我们提出了一个黎曼框架来对ODF域进行计算。所提出的框架不要求odf用任何固定的参数化表示,例如von Mises-Fisher分布的混合或球谐展开。相反,我们使用ODF的非参数表示,并利用在平方根重新参数化下,ODF的空间形成黎曼流形,即单位希尔伯特球。具体来说,我们使用黎曼运算来执行各种几何数据处理算法,如插值,卷积以及线性和非线性滤波。我们用合成数据集和真实数据集的数值实验来说明这些概念。
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A nonparametric Riemannian framework for processing high angular resolution diffusion images (HARDI)
High angular resolution diffusion imaging has become an important magnetic resonance technique for in vivo imaging. Most current research in this field focuses on developing methods for computing the orientation distribution function (ODF), which is the probability distribution function of water molecule diffusion along any angle on the sphere. In this paper, we present a Riemannian framework to carry out computations on an ODF field. The proposed framework does not require that the ODFs be represented by any fixed parameterization, such as a mixture of von Mises-Fisher distributions or a spherical harmonic expansion. Instead, we use a non-parametric representation of the ODF, and exploit the fact that under the square-root re-parameterization, the space of ODFs forms a Riemannian manifold, namely the unit Hilbert sphere. Specifically, we use Riemannian operations to perform various geometric data processing algorithms, such as interpolation, convolution and linear and nonlinear filtering. We illustrate these concepts with numerical experiments on synthetic and real datasets.
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