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首页> 外文期刊>IEEE Transactions on Ultrasonics, Ferroelectrics, and Frequency Control >Fast Randomized Singular Value Decomposition-Based Clutter Filtering for Shear Wave Imaging
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Fast Randomized Singular Value Decomposition-Based Clutter Filtering for Shear Wave Imaging

机译:基于快速的随机奇异值分解的剪切波成像的杂波滤波

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摘要

The mechanical properties of soft tissues can be quantitatively characterized through the estimation of shear wave velocity (SWV) using various motion estimation methods, such as the commonly used block matching (BM) methods. However, such methods suffer from slow computational speed and many tunable parameters. In order to solve these problems, Butterworth filter-based clutter filter wave imaging (BW-CFWI) is recently proposed to detect the mechanical wave propagation by highlighting the tissue velocity induced by mechanical wave, without using any motion estimation methods. In this study, in order to improve the SWV estimation performance of the clutter filter wave imaging (CFWI) method, we propose singular value decomposition (SVD)-based clutter filter for CFWI (SVD-CFWI) and further accelerate it using a randomized SVD (rSVD)-based clutter filter (rSVD-CFWI). Homogeneous phantoms with different Young’s moduli are used to investigate the influences of the cutoff order of singular value and iteration time on the performance of SWV estimation. An elasticity phantom with stepped cylindrical inclusions is tested for comparison of rSVD-CFWI, SVD-CFWI, BW-CFWI, and normalized cross-correlation (NCC)-based BM (NCC-BM). The performances of the proposed methods are also evaluated on data acquired from the bicipital muscle in vivo. The results of phantom experiments show that rSVD-CFWI and SVD-CFWI reconstruct SWV maps with improved shape of the inclusions. For the softest inclusion with a diameter of 10.40 mm, the contrast-to-noise ratios (CNRs) between the inclusions and background obtained with rSVD-CFWI (3.78 dB) and SVD-CFWI (3.71 dB) are higher than those obtained with BW-CFWI (0.55 dB) and NCC-BM (0.70 dB). For the stiffest inclusion with a diameter of 10.40 mm, higher CNRs are also achieved by rSVD-CFWI (5.68 dB) and SVD-CFWI (5.07 dB) than by BW-CFWI (2.92 dB) and NCC-BM (2.36 dB). In the in-vivo experiments, more homogeneous SWV maps and smaller standard deviations of SWVs are obtained with rSVD-CFWI and SVD-CFWI than with BW-CFWI and NCC-BM. Besides, RSVD-CFWI has lower computational complexity than SVD-CFWI and NCC-BM and has lower memory space requirement than SVD-CFWI. The computational speed of rSVD-CFWI is comparable to that of BW-CFWI and over 10 times higher than that of SVD-CFWI. Therefore, RSVD-CFWI is demonstrated to be a competitive tool for fast shear wave imaging.
机译:通过使用各种运动估计方法估计剪切波速度(SWV),例如常用的块匹配(BM)方法,可以通过估计剪切波速度(SWV)来定量表征软组织的机械性能。然而,这种方法遭受慢速计算速度和许多可调参数。为了解决这些问题,最近提出了基于Butterworth滤波器的杂波滤波器波成像(BW-CFWI)以通过突出机械波引起的组织速度来检测机械波传播,而不使用任何运动估计方法。在本研究中,为了提高杂波滤波成像(CFWI)方法的SWV估计性能,我们向CFWI(SVD-CFWI)提出了基于奇异值分解(SVD)的杂波滤波器,并使用随机SVD进一步加速器(RSVD)基于杂波滤波器(RSVD-CFWI)。具有不同杨氏的均匀幽灵用于研究奇异值和迭代时间对SWV估计性能的影响。用于比较RSVD-CFWI,SVD-CFWI,BW-CFWI和标准化的互相关(NCC)的BM(NCC-BM)进行阶梯式圆柱夹杂物的弹性模型。所提出的方法的性能也评估了从BICIPITAL肌肉获得的数据在vivo 中>。 Phantom实验结果表明,RSVD-CFWI和SVD-CFWI重建了具有改进的夹杂物形状的SWV图。对于直径为10.40mm的最柔软的包容性,用RSVD-CFWI(3.78dB)和SVD-CFWI(3.71dB)获得的夹杂物​​和背景之间的对比度噪声比(CNR)高于用BW获得的-CFWI(0.55 dB)和NCC-BM(0.70 dB)。对于直径为10.40mm的最硬夹杂物,RSVD-CFWI(5.68dB)和SVD-CFWI(5.07dB)也可以通过BW-CFWI(2.92dB)和NCC-BM(2.36dB)来实现更高的CNR。在里面 In-Vivo 实验,使用RSVD-CFWI和SVD-CFWI比BW-CFWI和NCC-BM获得更均匀的SWV图和SWV的较小标准偏差。此外,RSVD-CFWI的计算复杂性低于SVD-CFWI和NCC-BM,并且具有比SVD-CFWI更低的存储空间要求。 RSVD-CFWI的计算速度是比得上BW-CFWI的和比SVD-CFWI的高出10倍。因此,RSVD-CFWI被证明是快速剪切波成像的竞争工具。

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