Quantitative Susceptibility Map Reconstruction via a Total Generalized Variation Regularization

F. Yanez, A. Fan, B. Bilgiç, C. Milovic, E. Adalsteinsson, P. Irarrazaval
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引用次数: 7

Abstract

Quantitative susceptibility mapping (QSM) is a last decade new concept which allows to determine the magnetic susceptibility distribution of tissue in-vivo. Nowadays it has several applications such as venous blood oxygenation and iron concentration quantification. To reconstruct high quality maps, a regularized scheme must be used to solve this ill-posed problem, due to the dipole kernel under sampling k-space. A widely used regularization penalty is Total Variation (TV), however, we can find stair casing artifacts in reconstructions due to the assumption that images are piecewise constant, not always true in MRI. In this sense, we propose a less restrictive functional, to avoid this problem and to improve QSM quality. A second order Total Generalized Variation (TGV) does not assume piecewise constancy in the images and is equivalent to TV in terms of edge preservation and noise removal. This work describes how TGV penalty addresses an increase in imaging efficiency in magnetic susceptibility maps from numerical phantom and in-vivo data. Currently, we report higher specificity with the proposed regularization. Moreover, the robustness of TGV suggest that is a possible alternative to tissue susceptibility mapping.
基于全广义变差正则化的定量敏感性图重建
定量磁化率制图(QSM)是近十年来的一个新概念,它可以确定组织在体内的磁化率分布。目前已在静脉血氧合、铁浓度定量等方面得到广泛应用。为了重建高质量的映射,由于偶极子核在采样k空间下存在,必须使用正则化方案来解决这个不适定问题。一种广泛使用的正则化惩罚是总变差(TV),然而,由于假设图像是分段恒定的,我们可以在重建中发现阶梯状伪影,这在MRI中并不总是正确的。从这个意义上说,我们提出了一个限制较少的函数,以避免这个问题并提高QSM的质量。二阶总广义变差(TGV)不假设图像的分段恒定,在边缘保持和去噪方面相当于TV。这项工作描述了TGV惩罚如何解决从数值幻影和体内数据的磁化率图中成像效率的增加。目前,我们报告了建议的正则化具有更高的特异性。此外,TGV的稳健性表明,这是一种可能替代组织易感性制图的方法。
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