Contrast-Optimized Basis Functions for Self-Navigated Motion Correction in Quantitative MRI.

ArXiv Pub Date : 2024-12-27
Elisa Marchetto, Sebastian Flassbeck, Andrew Mao, Jakob Assländer
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Abstract

Purpose: The long scan times of quantitative MRI techniques make motion artifacts more likely. For MR-Fingerprinting-like approaches, this problem can be addressed with self-navigated retrospective motion correction based on reconstructions in a singular value decomposition (SVD) subspace. However, the SVD promotes high signal intensity in all tissues, which limits the contrast between tissue types and ultimately reduces the accuracy of registration. The purpose of this paper is to rotate the subspace for maximum contrast between two types of tissue and improve the accuracy of motion estimates.

Methods: A subspace is derived that promotes contrasts between brain parenchyma and CSF, achieved through the generalized eigendecomposition of mean autocorrelation matrices, followed by a Gram-Schmidt process to maintain orthogonality.We tested our motion correction method on 85 scans with varying motion levels, acquired with a 3D hybrid-state sequence optimized for quantitative magnetization transfer imaging.

Results: A comparative analysis shows that the contrast-optimized basis significantly improve the parenchyma-CSF contrast, leading to smoother motion estimates and reduced artifacts in the quantitative maps.

Conclusion: The proposed contrast-optimized subspace improves the accuracy of the motion estimation.

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定量MRI中自我导航运动校正的对比优化基函数。
目的:定量MRI技术的长扫描时间使运动伪影更容易发生。对于类似核磁共振指纹的方法,这个问题可以通过基于奇异值分解(SVD)子空间重建的自导航回顾性运动校正来解决。然而,SVD在所有组织中促进高信号强度,这限制了组织类型之间的对比,最终降低了配准的准确性。本文的目的是旋转子空间以获得两类组织之间的最大对比度,并提高运动估计的准确性。方法:推导了一个子空间,通过平均自相关矩阵的广义特征分解实现脑实质和脑脊液之间的对比,然后通过Gram-Schmidt过程保持正交性。我们在85个不同运动水平的扫描上测试了我们的运动校正方法,这些扫描是通过优化了定量磁化转移成像的3D混合状态序列获得的。结果:对比分析表明,对比度优化的基础显著提高了脑实质-脑脊液的对比度,使运动估计更平滑,减少了定量图中的伪影。结论:所提出的对比度优化子空间提高了运动估计的精度。
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