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K-Optimal Gradient Encoding Scheme for Fourth-Order Tensor-Based Diffusion Profile Imaging

机译:基于第四阶张量的扩散剖面成像的K-最优梯度编码方案

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摘要

The design of an optimal gradient encoding scheme (GES) is a fundamental problem in diffusion MRI. It is well studied for the case of second-order tensor imaging (Gaussian diffusion). However, it has not been investigated for the wide range of non-Gaussian diffusion models. The optimal GES is the one that minimizes the variance of the estimated parameters. Such a GES can be realized by minimizing the condition number of the design matrix (JC-optimal design). In this paper, we propose a new approach to solve the K-optimal GES design problem for fourth-order tensor-based diffusion profile imaging. The problem is a nonconvex experiment design problem. Using convex relaxation, we reformulate it as a tractable semidefinite programming problem. Solving this problem leads to several theoretical properties of JC-optimal design: (i) the odd moments of the JC-optimal design must be zero; (ii) the even moments of the JC-optimal design are proportional to the total number of measurements; (iii) the iC-optimal design is not unique, in general; and (iv) the proposed method can be used to compute the JC-optimal design for an arbitrary number of measurements. Our Monte Carlo simulations support the theoretical results and show that, in comparison with existing designs, the JC-optimal design leads to the minimum signal deviation.
机译:最佳梯度编码方案(GES)的设计是扩散MRI的基本问题。对于二阶张量成像(高斯扩散)进行了很好的研究。但是,它没有针对广泛的非高斯扩散模型进行调查。最佳GES是最小化估计参数方差的GES。通过最小化设计矩阵的条件数(JC-OPTEL设计),可以实现这样的GES。在本文中,我们提出了一种解决基于第四阶张量的扩散谱成像的K-Optimal GES设计问题的新方法。问题是一个非透露的实验设计问题。使用凸弛豫,我们将其重构为一个贸易的半纤维编程问题。解决这个问题导致JC-Optimal设计的几种理论特性:(i)JC-Optimal设计的奇怪时刻必须为零; (ii)JC-OPTEMAL设计的偶数与测量总数成比例; (iii)IC-Optimal Design并不是独一无二的; (iv)所提出的方法可用于计算用于任意测量的JC最佳设计。我们的蒙特卡罗模拟支持理论结果,并表明与现有设计相比,JC-Optimal设计导致最小信号偏差。

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