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Single- and Multiple-Shell Uniform Sampling Schemes for Diffusion MRI Using Spherical Codes

机译:使用球面码的扩散MRI的单壳和多壳均匀采样方案

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摘要

In diffusion MRI (dMRI), a good sampling scheme is important for efficient acquisition and robust reconstruction. Diffusion weighted signal is normally acquired on single or multiple shells in q-space. Signal samples are typically distributed uniformly on different shells to make them invariant to the orientation of structures within tissue, or the laboratory coordinate frame. The Electrostatic Energy Minimization (EEM) method, originally proposed for single shell sampling scheme in dMRI, was recently generalized to multi-shell schemes, called Generalized EEM (GEEM). GEEM has been successfully used in the Human Connectome Project (HCP). However, EEM does not directly address the goal of optimal sampling, i.e., achieving large angular separation between sampling points. In this paper, we propose a more natural formulation, called Spherical Code (SC), to directly maximize the minimal angle between different samples in single or multiple shells. We consider not only continuous problems to design single or multiple shell sampling schemes, but also discrete problems to uniformly extract sub-sampled schemes from an existing single or multiple shell scheme, and to order samples in an existing scheme. We propose five algorithms to solve the above problems, including an incremental SC (ISC), a sophisticated greedy algorithm called Iterative Maximum Overlap Construction (IMOC), an 1-Opt greedy method, a Mixed Integer Linear Programming (MILP) method, and a Constrained Non-Linear Optimization (CNLO) method. To our knowledge, this is the first work to use the SC formulation for single or multiple shell sampling schemes in dMRI. Experimental results indicate that SC methods obtain larger angular separation and better rotational invariance than the state-of-the-art EEM and GEEM. The related codes and a tutorial have been released in DMRITool .
机译:在扩散MRI(dMRI)中,良好的采样方案对于有效采集和强大重建至关重要。通常在q空间中的单个或多个壳上获取扩散加权信号。信号样本通常均匀地分布在不同的外壳上,以使它们不变于组织内结构的方向或实验室坐标系。最初为dMRI中的单壳采样方案提出的静电能量最小化(EEM)方法最近被推广为称为通用EEM(GEEM)的多壳方案。 GEEM已成功用于人类Connectome项目(HCP)。然而,EEM没有直接解决最佳采样的目的,即,实现采样点之间的大角度间隔。在本文中,我们提出了一种更自然的公式,称为“球形代码(SC)”,以直接最大化单个或多个壳体中不同样本之间的最小角度。我们不仅考虑设计单个或多个外壳采样方案的连续问题,而且考虑离散问题以从现有的单个或多个外壳方案中均匀提取子采样方案,并对现有方案中的样本进行排序。我们提出了五种算法来解决上述问题,包括增量SC(ISC),称为迭代最大重叠构造(IMOC)的复杂贪婪算法,1-Opt贪婪方法,混合整数线性规划(MILP)方法以及约束非线性优化(CNLO)方法。据我们所知,这是将SC公式用于dMRI中单壳或多壳采样方案的第一项工作。实验结果表明,与最新的EEM和GEEM相比,SC方法可获得更大的角度间隔和更好的旋转不变性。相关代码和教程已在DMRITool 中发布。

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