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Tensorial Spherical Polar Fourier Diffusion MRI with Optimal Dictionary Learning

机译:姿态球面极性傅里叶扩散MRI与最佳词典学习

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High Angular Resolution Diffusion Imaging (HARDI) can characterize complex white matter micro-structure, avoiding the Gaussian diffusion assumption inherent in Diffusion Tensor Imaging (DTI). However, HARDI methods normally require significantly more signal measurements and a longer scan time than DTI, which limits its clinical utility. By considering sparsity of the diffusion signal, Compressed Sensing (CS) allows robust signal reconstruction from relatively fewer samples, reducing the scanning time. A good dictionary that sparsifies the signal is crucial for CS reconstruction. In this paper, we propose a novel method called Tensorial Spherical Polar Fourier Imaging (TSPFI) to recover continuous diffusion signal and diffusion propagator by representing the diffusion signal using an orthonormal TSPF basis. TSPFI is a generalization of the existing model-based method DTI and the model-free method SPFI. We also propose dictionary learning TSPFI (DL-TSPFI) to learn an even sparser dictionary represented as a linear combination of TSPF basis from continuous mixture of Gaussian signals. The learning process is efficiently performed in a small subspace of SPF coefficients, and the learned dictionary is proved to be sparse for all mixture of Gaussian signals by adaptively setting the tensor in TSPF basis. Then the learned DL-TSPF dictionary is optimally and adaptively applied to different voxels using DTI and a weighted LASSO for CS reconstruction. DL-TSPFI is a generalization of DL-SPFI, by considering general adaptive tensor setting instead of a scale value. The experiments demonstrated that the learned DL-TSPF dictionary has a sparser representation and lower reconstruction Root-Mean-Squared- Error (RMSE) than both the original SPF basis and the DL-SPF dictionary.
机译:高角度分辨率扩散成像(Hardi)可以表征复杂的白质微结构,避免了扩散张量成像(DTI)中固有的高斯扩散假设。然而,Hardi方法通常需要显着的信号测量和比DTI更长的扫描时间,这限制了其临床实用程序。通过考虑扩散信号的稀疏性,压缩检测(CS)允许来自相对较少的样本的鲁棒信号重建,从而减少扫描时间。缩小信号的良好字典对于CS重建至关重要。在本文中,我们提出了一种新颖的方法,称为姿态球形极性傅里叶成像(TSPFI)来恢复连续扩散信号和扩散传播者,通过使用正常的TSPF表示扩散信号。 TSPFI是现有模型的方法DTI和无模型方法SPFI的概括。我们还提出字典学习TSPFI(DL-TSPFI)来学习表示作为TSPF基础的线性组合的偶数稀疏字典从高斯信号的连续混合。在SPF系数的小子空间中有效地执行学习过程,并且通过在TSPF中自适应地设置张量来证明学习的字典对于高斯信号的所有混合,都被证明是稀疏的。然后,学习的DL-TSPF词典最佳地,并使用DTI和加权套索用于CS重建的不同体素。 DL-TSPFI是DL-SPFI的泛化,通过考虑一般自适应张量设置而不是比例值。实验表明,学习的DL-TSPF词典具有稀疏表示和降低的重建根平均分子 - 错误(RMSE),而不是原始SPF基础和DL-SPF字典。

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