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首页> 外文期刊>NeuroImage >A multi-resolution scheme for distortion-minimizing mapping between human subcortical structures based on geodesic construction on Riemannian manifolds.
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A multi-resolution scheme for distortion-minimizing mapping between human subcortical structures based on geodesic construction on Riemannian manifolds.

机译:一种基于黎曼流形上测地线构造的人类皮层下结构之间最小化失真的多分辨率方案。

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In this paper, we deal with a subcortical surface registration problem. Subcortical structures including hippocampi and caudates have a small number of salient features such as heads and tails unlike cortical surfaces. Therefore, it is hard, if not impossible, to perform subcortical surface registration with only such features. It is also non-trivial for neuroanatomical experts to select landmarks consistently for subcortical surfaces of different subjects. We therefore present a landmark-free approach for subcortical surface registration by measuring the amount of mesh distortion between subcortical surfaces assuming that the surfaces are represented by meshes. The input meshes can be constructed using any surface modeling tool available in the public domain since our registration method is independent of a surface modeling process. Given the source and target surfaces together with their representing meshes, the vertex positions of the source mesh are iteratively displaced while preserving the underlying surface shape in order to minimize the distortion to the target mesh. By representing each surface mesh as a point on a high-dimensional Riemannian manifold, we define a distance metric on the manifold that measures the amount of distortion from a given source mesh to the target mesh, based on the notion of isometry while penalizing triangle flipping. Under this metric, we reduce the distortion minimization problem to the problem of constructing a geodesic curve from the moving source point to the fixed target point on the manifold while satisfying the shape-preserving constraint. We adopt a multi-resolution framework to solve the problem for distortion-minimizing mapping between the source and target meshes. We validate our registration scheme through several experiments: distance metric comparison, visual validation using real data, robustness test to mesh variations, feature alignment using anatomic landmarks, consistency with previous clinical findings, and comparison with a surface-based registration method, LDDMM-surface.
机译:在本文中,我们处理了皮下表面配准问题。包括海马体和尾状体的皮质下结构具有少量显着特征,例如与皮质表面不同的头部和尾部。因此,即使不是不可能,也很难仅利用这些特征来进行皮下表面对准。对于神经解剖学专家来说,一致地为不同受试者的皮层下表面选择界标也是很重要的。因此,我们通过测量皮质下表面之间的网格变形量(假设表面由网格表示),提出了皮质下表面配准的无地标方法。输入网格可以使用公共领域中可用的任何表面建模工具来构建,因为我们的注册方法与表面建模过程无关。给定源曲面和目标曲面及其代表的网格,在保留基础曲面形状的同时,迭代迭代源网格的顶点位置,以最小化目标网格的变形。通过将每个曲面网格表示为高维黎曼流形上的一个点,我们在等距的概念上对流线形进行了定义,同时基于等距的概念,定义了流形上的距离度量,该距离度量用于测量从给定源网格到目标网格的变形量。在此度量标准下,我们将失真最小化问题简化为在满足形状保持约束的同时在流形上构造从移动源点到固定目标点的测地曲线的问题。我们采用多分辨率框架来解决源网格和目标网格之间最小化失真的映射问题。我们通过几个实验来验证我们的配准方案:距离度量比较,使用实际数据的视觉验证,对网格变化的鲁棒性测试,使用解剖学界标的特征对齐,与以前的临床发现的一致性以及与基于表面的配准方法(LDDMM-surface)的比较。

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