Delayed matrix pencil method for local shear wave viscoelastographic estimation

X. Li, S. Turco, R.M. Aarts, H. Wijkstra, M. Mischi
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引用次数: 0

Abstract

Shear wave (SW) elastography is an ultrasound imaging modality that provides quantitative viscoelastic measurements of tissue. The phase difference method allows for local estimation of viscoelasticity by computing the dispersion curve using phases from two laterally-spaced pixels. However, this method is sensitive to measurement noise in the estimated SW particle velocities. Hence, we propose the delayed matrix pencil method to investigate this problem, and validated its feasibility both in-silico and in-vitro. The performance was compared with the original phase difference method and other two alternative techniques based on lowpass filtering and discrete wavelet transform denoising. The estimated viscoelastic values are summarized in box plots and followed by statistical analysis. Results from both studies show the proposed method to be more robust to noise with the smallest interquartile range in both elasticity and viscosity.

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用于局部剪切波粘弹性估算的延迟矩阵铅笔法
剪切波(SW)弹性成像是一种超声成像模式,可对组织的粘弹性进行定量测量。相位差法利用两个横向间隔像素的相位来计算频散曲线,从而对粘弹性进行局部估计。然而,这种方法对估计的 SW 粒子速度中的测量噪声很敏感。因此,我们提出了延迟矩阵铅笔法来研究这个问题,并在实验室和体外验证了其可行性。我们将其性能与原始相位差法和其他两种基于低通滤波和离散小波变换去噪的替代技术进行了比较。估计的粘弹性值以盒图的形式汇总,然后进行统计分析。这两项研究的结果表明,建议的方法对噪声的鲁棒性更强,弹性和粘度的四分位数间距最小。
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CiteScore
5.90
自引率
0.00%
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0
审稿时长
10 weeks
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