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WATER-FAT DECOMPOSITION BY IDEAL-MRI WITH PHASE ESTIMATION: A METHOD TO DETERMINE CHEMICAL CONTENTS IN VIVO

机译:通过阶段估计的理想MRI水脂分解:一种测定体内化学含量的方法

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High-resolution Magnetic Resonance Imaging (MRI) of humans and animals in vivo is routine and non-invasive. Identifying and quantifying chemical composition of tissue from acquired images is a challenge. MR spectroscopy (MRS) may be used to identify chemical components accurately over a finite volume in the tissue. However, the temporal and spatial resolutions are limited. Multi-spectral MRI exploits the multiple modes of MR such as T_1, T_2 and proton density maps and classifies voxels into different tissue types, but the chemical identity of the tissue remains unknown. Many fat suppression methods were developed because the unwanted fat signal often compromises image interpretability in clinical MRI, but these techniques are sensitive to MR field inhomogeneity. Multi-point Dixon methods separate MR images into water and fat images and are less sensitive to field inhomogeneity [1] and IDEAL-MRI (iterative decomposition of water and fat with echo asymmetry and least-squares estimation) improved upon the Dixon methods by avoiding the problem of phase unwrapping [2]. However, special care has to be taken when estimating the field map to avoid erroneous solutions to the least-squares estimation problem which lead to artifacts such as swapping of water and fat. The use of region growing schemes (with a reliable seed) mitigates this problem as demonstrated in previous studies [3][4]. However, the seed is not always reliable and growing schemes can be sensitive to phase discontinuities. Moreover, although the technology was successfully demonstrated on many clinical scanners, only limited applications were found in preclinical scanners with high MR field where the field inhomogeneity can be far worse [5]. We developed a robust and accurate algorithm to compute water and fat content on an 11.7T small animal scanner by improving upon existing phase estimation methods through multiple starting pixels and consensus-based region growing. The method, after further validation, has the potential of providing a translatable assay to study disease progression and regression related to fat and water contents in various animal models, such as studying atherosclerotic plaque composition.
机译:体内人和动物的高分辨率磁共振成像(MRI)是常规和非侵入性的。从获取的图像中鉴定和定量组织的化学成分是一项挑战。 MR光谱学(MRS)可用于精确地在组织中精确地鉴定化学成分。但是,时间和空间分辨率有限。多光谱MRI利用MR如T_1,T_2和质子密度图的多种模式,并将体素分类为不同的组织类型,但组织的化学特性仍然未知。开发了许多脂肪抑制方法,因为不需要的脂肪信号经常损害临床MRI中的图像解释性,但这些技术对MR场不均匀性敏感。在所述迪克森方法通过避免改进的多点Dixon方法的MR图像分离成水和脂肪的图像,并且对场非均匀性[1]和IDEAL-MRI(与回波不对称性和最小二乘估计的水和脂肪迭代分解)较不敏感的相位展开的问题[2]。然而,必须在估计场地图时特别注意避免对最小二乘估计问题的错误解决方案导致诸如水和脂肪的交换的伪影。区域生长方案(具有可靠的种子)的使用减轻了此问题,如先前研究中所示[3] [4]。然而,种子并不总是可靠的,并且越来越多的方案对相位不连续性敏感。此外,虽然该技术在许多临床扫描仪上成功展示,但在具有高MR场的临床前扫描仪中只发现了有限的应用,其中场不均匀程度远远较差[5]。通过通过多个起始像素和基于共识的区域生长,通过改善现有相位估计方法,开发了一种强大而准确的算法,以计算11.7T小动物扫描仪上的水和脂肪含量。此后,进一步验证的方法具有提供可翻译的测定,以研究与各种动物模型中的脂肪和水含量相关的疾病进展和回归,例如研究动脉粥样硬化斑块组合物。

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