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Quantitative Susceptibility Mapping Using Structural Feature Based Collaborative Reconstruction (SFCR) in the Human Brain

机译:在人脑中使用基于结构特征的协同重建(SFCR)进行定量药敏制图

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The reconstruction of MR quantitative susceptibility mapping (QSM) from local phase measurements is an ill posed inverse problem and different regularization strategies incorporating a priori information extracted from magnitude and phase images have been proposed. However, the anatomy observed in magnitude and phase images does not always coincide spatially with that in susceptibility maps, which could give erroneous estimation in the reconstructed susceptibility map. In this paper, we develop a structural feature based collaborative reconstruction (SFCR) method for QSM including both magnitude and susceptibility based information. The SFCR algorithm is composed of two consecutive steps corresponding to complementary reconstruction models, each with a structural feature based l 1 norm constraint and a voxel fidelity based l 2 norm constraint, which allows both the structure edges and tiny features to be recovered, whereas the noise and artifacts could be reduced. In the M-step, the initial susceptibility map is reconstructed by employing a k-space based compressed sensing model incorporating magnitude prior. In the S-step, the susceptibility map is fitted in spatial domain using weighted constraints derived from the initial susceptibility map from the M-step. Simulations and in vivo human experiments at 7T MRI show that the SFCR method provides high quality susceptibility maps with improved RMSE and MSSIM. Finally, the susceptibility values of deep gray matter are analyzed in multiple head positions, with the supine position most approximate to the gold standard COSMOS result.
机译:从局部相位测量值重建MR定量磁化率映射(QSM)是一个不适的逆问题,并且已提出了结合从幅值和相位图像中提取的先验信息的不同规则化策略。但是,在幅值图像和相位图像中观察到的解剖结构在空间上并不总是与药敏图中的解剖一致,这可能会在重建的药敏图中给出错误的估计。在本文中,我们为QSM开发了一种基于结构特征的协同重建(SFCR)方法,其中包括基于量级和磁化率的信息。 SFCR算法由与互补重建模型相对应的两个连续步骤组成,每个步骤都具有基于结构特征的l 1范数约束和基于体素保真度的l 2范数约束,从而可以恢复结构边缘和微小特征。噪音和伪影可以减少。在M步中,通过采用结合了幅度先验的基于k空间的压缩感测模型来重建初始磁化率图。在S步中,使用从M步的初始磁化率图得出的加权约束将磁化率图拟合到空间域中。在7T MRI上的仿真和体内人体实验表明,SFCR方法提供了具有改进的RMSE和MSSIM的高质量磁化率图。最后,在多个头部位置分析深灰质的磁化率值,仰卧位置最接近金标准COSMOS结果。

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