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首页> 外文期刊>IEEE Transactions on Ultrasonics, Ferroelectrics, and Frequency Control >Analytical Minimization-Based Regularized Subpixel Shear-Wave Tracking for Ultrasound Elastography
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Analytical Minimization-Based Regularized Subpixel Shear-Wave Tracking for Ultrasound Elastography

机译:超声弹性成像的基于最小化分析的正则化子像素剪切波跟踪

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摘要

Ultrasound elastography is a convenient and affordable method for imaging mechanical properties of tissue, which are often correlated with pathologies. An emerging novel elastography technique applies an external acoustic radiation force to generate a shear wave in the tissue and uses ultrasound imaging to track the shear wave. Accurate tracking of the small tissue motion is a critical step in shear-wave elastography (SWE), but it is challenging due to various sources of noise in the ultrasound data. We formulate tissue displacement estimation as an optimization problem and propose two computationally efficient approaches to estimate the displacement field. The first algorithm is referred to as dynamic programming analytic minimization (DPAM), which utilizes first-order Taylor series expansion of the highly nonlinear cost function to allow for its efficient optimization, and was previously proposed for quasistatic elastography. The second algorithm is a novel technique that utilizes second-order derivatives of the nonlinear cost function. We call the new algorithm second-order analytic minimization elastography (SESAME). We compare DPAM and SESAME to the standard normalized cross correlation (NCC) approach in the context of displacement and speed estimation of wave propagation in SWE. The results of micrometer-order displacement estimation in a uniform simulation phantom illustrate that SESAME outperforms DPAM, which in turn outperforms NCC in terms of signal-to-noise ratio (SNR) and jitter. In addition, the relative difference between true and reconstructed shear modulus (averaged over excitations at different focal depths and several scatterer realizations at each depth) is approximately 3.41%, 1.12%, and 1.01%, respectively, for NCC, DPAM, and SESAME. The performance of the proposed methods is also assessed with real data acquired using a tissue-mimicking phantom, wherein, in comparison to NCC, DPAM and SESAME improve the SNR of displacement estimates by 7.6 and 9.5 dB, respectively. Experimental results on a tissue-mimicking phantom also show that shear modulus reconstruction substantially improved with the proposed DPAM technique over NCC and with some further improvement achieved by utilizing the second-order Taylor series approximation in SESAME instead of the first-order DPAM.
机译:超声弹性成像是一种方便且负担得起的方法,用于对组织的机械特性进行成像,该特性通常与病理相关。新兴的新型弹性成像技术应用外部声辐射力在组织中生成剪切波,并使用超声成像跟踪剪切波。精确跟踪小组织运动是剪切波弹性成像(SWE)的关键步骤,但是由于超声数据中的各种噪声源,这具有挑战性。我们将组织位移估计公式化为一个优化问题,并提出了两种计算有效的方法来估计位移场。第一种算法称为动态规划分析最小化(DPAM),它利用高度非线性成本函数的一阶泰勒级数展开进行有效优化,并且先前已提出用于准静态弹性成像。第二种算法是一种利用非线性成本函数的二阶导数的新颖技术。我们将新算法称为二阶分析最小化弹性成像(SESAME)。我们将位移和速度估计在SWE中的波传播情况下,将DPAM和SESAME与标准归一化互相关(NCC)方法进行了比较。统一仿真模型中的微米级位移估计结果表明,SESAME优于DPAM,而DPAM在信噪比(SNR)和抖动方面又胜过NCC。此外,对于NCC,DPAM和SESAME,真实剪切模量和重建剪切模量(在不同焦深的激发和每个深度的几个散射实现上求平均值)之间的相对差分别约为3.41%,1.12%和1.01%。还使用使用组织模拟体模获取的真实数据评估了所提出方法的性能,其中与NCC相比,DPAM和SESAME分别将位移估计的SNR提高了7.6 dB和9.5 dB。在组织模拟体模上的实验结果还表明,与NCC相比,提出的DPAM技术大大提高了剪切模量的重建,并且通过利用SESAME中的二阶泰勒级数逼近而不是一阶DPAM实现了进一步的改进。

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