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Multi-shell diffusion signal recovery from sparse measurements

机译:稀疏测量中的多壳扩散信号恢复

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摘要

For accurate estimation of the ensemble average diffusion propagator (EAP), traditional multi-shell diffusion imaging (MSDI) approaches require acquisition of diffusion signals for a range of b-values. However, this makes the acquisition time too long for several types of patients, making it difficult to use in a clinical setting. In this work, we propose a new method for the reconstruction of diffusion signals in the entire q-space from highly under-sampled sets of MSDI data, thus reducing the scan time significantly. In particular, to sparsely represent the diffusion signal over multiple q-shells, we propose a novel extension to the framework of spherical ridgelets by accurately modeling the monotonically decreasing radial component of the diffusion signal. Further, we enforce the reconstructed signal to have smooth spatial regularity in the brain, by minimizing the total variation (TV) norm. We combine these requirements into a novel cost function and derive an optimal solution using the Alternating Directions Method of Multipliers (ADMM) algorithm. We use a physical phantom data set with known fiber crossing angle of 45° to determine the optimal number of measurements (gradient directions and b-values) needed for accurate signal recovery. We compare our technique with a state-of-the-art sparse reconstruction method (i.e., the SHORE method of ()) in terms of angular error in estimating the crossing angle, incorrect number of peaks detected, normalized mean squared error in signal recovery as well as error in estimating the return-to-origin probability (RTOP). Finally, we also demonstrate the behavior of the proposed technique on human in-vivo data sets. Based on these experiments, we conclude that using the proposed algorithm, at least 60 measurements (spread over three b-value shells) are needed for proper recovery of MSDI data in the entire q-space.
机译:为了准确估计集合平均扩散传播器(EAP),传统的多壳扩散成像(MSDI)方法要求获取一系列b值的扩散信号。但是,这会使几种类型的患者的采集时间过长,从而使其难以在临床环境中使用。在这项工作中,我们提出了一种新方法,用于从高度欠采样的MSDI数据集中重建整个q空间中的扩散信号,从而显着减少扫描时间。特别地,为了稀疏地表示多个q壳上的扩散信号,我们通过精确地建模扩散信号的单调递减径向分量,提出了对球面脊小波框架的新颖扩展。此外,我们通过使总变异(TV)范数最小化来强制重构信号在大脑中具有平滑的空间规则性。我们将这些需求组合成一个新颖的成本函数,并使用乘数交替方向法(ADMM)算法得出最优解。我们使用已知光纤交叉角为45°的物理幻象数据集来确定准确信号恢复所需的最佳测量次数(梯度方向和b值)。我们将我们的技术与最新的稀疏重建方法(即()的SHORE方法)进行了比较,以估算交叉角时的角度误差,检测到的峰数不正确,信号恢复中的均方误差均一以及估算归还概率(RTOP)的错误。最后,我们还演示了所提出的技术在人体体内数据集上的行为。基于这些实验,我们得出结论,使用提出的算法,至少需要60次测量(分布在三个b值外壳上)才能在整个q空间中正确恢复MSDI数据。

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