网格拟合方法在高场MRI中的脂肪分离

S. Eun, E. Jung, Dong-Kyun Park, T. Whangbo
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引用次数: 0

摘要

在高场磁共振成像(MRI)中,B0场不均匀存在下的水脂分离是一个重要的研究课题。为了实现可靠的水脂分离,已经开发了各种使用三点多回波采集的野外图估计技术。在众多的技术中,基于回声不对称和最小二乘估计的水脂肪迭代分解(IDEAL)作为一种获取高质量水脂肪图像的迭代方法得到了广泛的应用。然而,由于高视场均匀性B0的恶化,IDEAL无法进行有意义的视场图估计,特别是对于大视场。在此之前,为了提高该估计的鲁棒性,开发了一种区域增长(RG)技术,通过目标对象中值设置的种子点来利用二维线性外推过程。这种方法有一些局限性,例如依赖于初始种子点,例如种子点的数量、强度和位置。本文介绍了一种不需要考虑与精度相关参数的改进网格拟合方法。结果表明,该方法可有效应用于高油田,平均残水率比现有方法提高7.2%。
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Fat separation using grid fit method at high-field MRI
In high-field magnetic resonance imaging (MRI), water-fat separation in the presence of B0 field inhomogeneity is important research. Various field map estimation techniques that use three-point multi-echo acquisitions have been developed for reliable water fat separation. Among the numerous techniques, iterative decomposition of water and fat with echo asymmetry and least squares estimation (IDEAL) has gained considerable popularity as an iterative method for acquiring high-quality water and fat images. However, due to the worsened B0 in homogeneity at high-field, IDEAL cannot adjust for meaningful field map estimation, particularly for a large field of view. Previously, to improve the robustness of this estimation, a region-growing (RG) technique was developed to take advantage of the 2D linear extrapolation procedure through the seed point set by the median value in the target object. There are some limitations with this approach, such as the dependence on the initial seed point, such as a number, intensity, and position of the seed point. In this work, we introduce a effective method called the improved Grid-fit method that does not need to consider parameters related with accuracy. As a result of the proposed method, we obtained a effective fat quantification result that can be applied in high-fields, with an average water residual rate of 7.2% higher than the existing method.
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