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Shape Classification Using Wasserstein Distance for Brain Morphometry Analysis

机译:使用Wasserstein距离的形状分类用于脑形态计量学分析

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Brain morphometry study plays a fundamental role in medical imaging analysis and diagnosis. This work proposes a novel framework for brain cortical surface classification using Wasserstein distance, based on uniformization theory and Riemannian optimal mass transport theory. By Poincare uniformization theorem, all shapes can be conformally deformed to one of the three canonical spaces: the unit sphere, the Euclidean plane or the hyperbolic plane. The uniformization map will distort the surface area elements. The area-distortion factor gives a probability measure on the canonical uniformization space. All the probability measures on a Riemannian manifold form the Wasserstein space. Given any 2 probability measures, there is a unique optimal mass transport map between them, the transportation cost defines the Wasserstein distance between them. Wasserstein distance gives a Riemannian metric for the Wasserstein space. It intrinsically measures the dissimilarities between shapes and thus has the potential for shape classification. To the best of our knowledge, this is the first work to introduce the optimal mass transport map to general Riemannian manifolds. The method is based on geodesic power Voronoi diagram. Comparing to the conventional methods, our approach solely depends on Riemannian metrics and is invariant under rigid motions and scalings, thus it intrinsically measures shape distance. Experimental results on classifying brain cortical surfaces with different intelligence quotients demonstrated the efficiency and efficacy of our method.
机译:脑形态计量学研究在医学影像分析和诊断中起着基本作用。这项工作提出了一个基于Wasserstein距离的大脑皮质表面分类的新框架,该框架基于均匀化理论和黎曼最优质量传输理论。通过庞加莱均匀化定理,所有形状都可以保形变形为三个规范空间之一:单位球面,欧几里德平面或双曲线平面。均匀化贴图将使表面积元素变形。面积失真因子给出了规范均一化空间上的概率度量。黎曼流形上的所有概率测度都形成了Wasserstein空间。给定任意两个概率度量,它们之间存在唯一的最佳质量运输图,运输成本定义了它们之间的Wasserstein距离。 Wasserstein距离给出Wasserstein空间的黎曼度量。它从本质上测量形状之间的差异,因此具有进行形状分类的潜力。据我们所知,这是将最佳质量传输图引入一般黎曼流形的第一项工作。该方法基于测地功率Voronoi图。与常规方法相比,我们的方法仅取决于黎曼度量,并且在刚性运动和缩放比例下不变,因此它本质上测量形状距离。用不同的智商对大脑皮层表面进行分类的实验结果证明了我们方法的有效性和有效性。

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