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量化组织变形对扩散加权磁共振成像的影响:应用于心脏扩散成像的数学模型和高效模拟框架

Quantifying the effect of tissue deformation on diffusion-weighted MRI: a mathematical model and an efficient simulation framework applied to cardiac diffusion imaging.

作者信息

Mekkaoui Imen, Moulin Kevin, Croisille Pierre, Pousin Jerome, Viallon Magalie

机构信息

Université de Lyon, Institut C. Jordan, CNRS (UMR5208), 20 Av. A. Einstein, Villeurbanne, France.

出版信息

Phys Med Biol. 2016 Aug 7;61(15):5662-86. doi: 10.1088/0031-9155/61/15/5662. Epub 2016 Jul 7.

DOI:10.1088/0031-9155/61/15/5662
PMID:27385441
Abstract

Cardiac motion presents a major challenge in diffusion weighted MRI, often leading to large signal losses that necessitate repeated measurements. The diffusion process in the myocardium is difficult to investigate because of the unqualified sensitivity of diffusion measurements to cardiac motion. A rigorous mathematical formalism is introduced to quantify the effect of tissue motion in diffusion imaging. The presented mathematical model, based on the Bloch-Torrey equations, takes into account deformations according to the laws of continuum mechanics. Approximating this mathematical model by using finite elements method, numerical simulations can predict the sensitivity of the diffusion signal to cardiac motion. Different diffusion encoding schemes are considered and the diffusion weighted MR signals, computed numerically, are compared to available results in literature. Our numerical model can identify the existence of two time points in the cardiac cycle, at which the diffusion is unaffected by myocardial strain and cardiac motion. Of course, these time points depend on the type of diffusion encoding scheme. Our numerical results also show that the motion sensitivity of the diffusion sequence can be reduced by using either spin echo technique with acceleration motion compensation diffusion gradients or stimulated echo acquisition mode with unipolar and bipolar diffusion gradients.

摘要

心脏运动在扩散加权磁共振成像中是一个重大挑战,常常导致大量信号损失,这就需要进行重复测量。由于扩散测量对心脏运动的敏感性不足,心肌中的扩散过程难以研究。引入了一种严格的数学形式来量化组织运动在扩散成像中的影响。所提出的数学模型基于布洛赫 - 托里方程,考虑了根据连续介质力学定律的变形。通过使用有限元方法对该数学模型进行近似,数值模拟可以预测扩散信号对心脏运动的敏感性。考虑了不同的扩散编码方案,并将数值计算得到的扩散加权磁共振信号与文献中的现有结果进行比较。我们的数值模型可以识别心动周期中两个时间点的存在,在这两个时间点扩散不受心肌应变和心脏运动的影响。当然,这些时间点取决于扩散编码方案的类型。我们的数值结果还表明,通过使用具有加速运动补偿扩散梯度的自旋回波技术或具有单极和双极扩散梯度的受激回波采集模式,可以降低扩散序列的运动敏感性。

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Quantifying the effect of tissue deformation on diffusion-weighted MRI: a mathematical model and an efficient simulation framework applied to cardiac diffusion imaging.量化组织变形对扩散加权磁共振成像的影响:应用于心脏扩散成像的数学模型和高效模拟框架
Phys Med Biol. 2016 Aug 7;61(15):5662-86. doi: 10.1088/0031-9155/61/15/5662. Epub 2016 Jul 7.
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An in-vivo comparison of stimulated-echo and motion compensated spin-echo sequences for 3 T diffusion tensor cardiovascular magnetic resonance at multiple cardiac phases.在 3T 扩散张量心血管磁共振的多个心动周期中,使用激发回波和运动补偿自旋回波序列的活体比较。
J Cardiovasc Magn Reson. 2018 Jan 3;20(1):1. doi: 10.1186/s12968-017-0425-8.