用改进的多参数编码梯度对血流湍流异常的MRI估计

D. Kwiat, S. Einav, D. Elad
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引用次数: 0

摘要

提出了一种新的磁共振成像方法,用于大血管流速剖面的湍流成像。一般来说,核磁共振(NMR)图像依赖于r, v, A等参数,这些参数表示运动的确定性参数。此外,自旋经历随机运动,如扩散和湍流,这不能用一组预定的运动参数来描述。湍流和非湍流之间的区别是基于流动作为时间函数的确定性或不确定性性质。本文研究了一种从基本梯度集建立一般梯度的方法。由于自旋的不确定性(如扩散和湍流)导致的图像模糊并没有被这种复合梯度编码场技术所消除。这一事实是确定湍流区域的可能性的关键。由于它的随机性,用确定性方法消除湍流效应是注定要失败的。另一方面,由于这些区域的信号减弱,可以确定湍流区域
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MRI estimation of turbulent abnormalities in blood flow by improved multiparametric encoding gradients
A novel magnetic resonance approach to imaging turbulence in the velocity profiles in major blood vessels is presented. A nuclear magnetic resonance (NMR) image, in general, is dependent on parameters like r, v, a, which represent deterministic parameters of motion. In addition, spins undergo random motion such as diffusion and turbulence, which cannot be described by a predetermined set of parameters of motion. The differentiation between turbulent and nonturbulent flow is based on the deterministic or indeterministic nature of the flow as a function of time. A method of building up a general gradient from a basic set of gradients is investigated here. Image blurring due to the nondeterministic behavior of spins (e.g. diffusion and turbulence) is not removed by this technique of a composite gradient encoding field. This fact is the key to the possibility of identifying regions of turbulent flow. Because of its random nature, elimination of turbulent effects by use of a deterministic method is bound to fail. On the other hand, regions of turbulent flow may be identified owing to signal decrease from those regions.<>
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