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Diffeomorphic Metric Landmark Mapping Using Stationary Velocity Field Parameterization

机译:使用平稳速度场参数化的二形度量度量地标映射

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Large deformation diffeomorphic metric mapping (LDDMM) has been shown as an effective computational paradigm to measure anatomical variability. However, its time-varying vector field parameterization of diffeomorphism flow leads to computationally expensive implementation, as well as some theoretical issues in metric based shape analysis, e.g. high order metric approximation via Baker-Campbell-Hausdorff (BCH) formula. To address these problems, we study the role of stationary vector field parameterization in context of LDDMM. Under this setting registration is formulated as finding the Lie group exponential path with minimal energy in Riemannian manifold of diffeomorphisms bringing two shapes together. Accurate derivation of Euler-Lagrange equation shows that optimal vector field for landmark matching is associated with singular momenta at landmark trajectories in whole time domain, and a new momentum optimization scheme is proposed to solve the variational problem. Length of group exponential path is also proposed as an alternative shape metric to geodesic distance, and pair-wise metrics among a population are computed through an approximation method via BCH formula which only needs registrations to a template. The proposed methods have been tested on both synthesized data and real database. Compared to non-stationary parameterization, this method can achieve comparable registration accuracy in significantly reduced time. Second order metric approximation by this method also improves significantly over first order, which can not be achieved by non-stationary parameterization. Correlation between the two shape metrics is also investigated, and their statistical power in clinical study compared.
机译:大变形微变形度量映射(LDDMM)已显示为一种有效的计算范例,可用于测量解剖变异。但是,其对亚纯流的时变矢量场参数化导致计算量大的实现,以及基于度量的形状分析中的一些理论问题,例如通过Baker-Campbell-Hausdorff(BCH)公式进行高阶度量逼近。为了解决这些问题,我们研究了在LDDMM背景下平稳矢量场参数化的作用。在这种情况下,配准被公式化为在微分的黎曼流形的流形中找到具有最小能量的李群指数路径,从而将两个形状组合在一起。 Euler-Lagrange方程的精确推导表明,在整个时域中,用于地标匹配的最佳矢量场与地标轨迹上的奇异动量相关联,并提出了一种新的动量优化方案来解决该变分问题。还建议使用组指数路径的长度作为测地距离的替代形状度量,并通过仅需向模板注册的BCH公式通过近似方法计算总体中的成对度量。所提出的方法已经在合成数据和真实数据库上进行了测试。与非平稳参数化相比,此方法可以在大大减少的时间内获得相当的配准精度。通过这种方法进行的二阶度量逼近也比一阶有显着提高,这是非平稳参数化无法实现的。还研究了两个形状指标之间的相关性,并比较了它们在临床研究中的统计能力。

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