首页> 外文会议>IEEE International Ultrasonics Symposium >Improvement in Inclusion Contrast-to-Noise Ratio for Low-Displacement Acoustic Radiation Force (ARF) Elasticity Imaging Using a 3D Kernel Blind-Source Separation (BSS) Based Displacement Estimator
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Improvement in Inclusion Contrast-to-Noise Ratio for Low-Displacement Acoustic Radiation Force (ARF) Elasticity Imaging Using a 3D Kernel Blind-Source Separation (BSS) Based Displacement Estimator

机译:基于3D核盲源分离(BSS)的位移估计器的低位移声辐射力(ARF)弹性成像的夹杂物声辐射力(ARF)弹性成像的提高

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Mechanical property assessment by elastographic ultrasound methods, including those that exploit acoustic radiation force (ARF), relies on accurate estimation of tissue displacement. Several displacement estimators have been developed, but their relevance to tracking ARF-induced displacements smaller than one micrometer is limited by estimation variance. To minimize displacement estimation variance, a new blind source separation (BSS)-based approach that exploits the spatial distribution of displacements is presented. This new approach applies principal component analysis (PCA) in three-dimensional (3D) kernels to derive dominant eigenvectors, from which displacements are estimated. We call this new approach the `3DK-BSS' estimator. The 3DK-BSS estimator is evaluated in terms of contrast-to-noise ratio (CNR) achieved in ARFI peak displacement (PD) images of a stiff (80 kPa) and a soft (8 kPa) spherical inclusion in a commercial phantom with a 25 kPA background. The CNR values achieved by 3DK-BSS were compared to those produced by normalized cross-correlation (NCC), Bayesian regularization, and BSS implemented using a two-dimensional (2D) kernel at ARF power levels of 5 to 45% of the full system power. For all power levels, and for both stiff and soft inclusions, 3DK-BSS inclusion CNR was higher than any other examined displacement estimator. For example, 3DK-BSS stiff inclusion CNR was 16.3, 11.8, and 4.2 times higher than the CNRs achieved by NCC, Bayesian regularization, and 2D BSS, respectively at 5% power level. CNR improvement by 3DK-BSS was largest at the lowest (5%) ARF power level, where displacement in the stiff phantom was measured by 3DK-BSS as 250 nm. These results suggest that, by accurately measuring sub-micrometer displacements, the 3DK-BSS displacement estimator could enable deeper ARF-based mechanical property assessments, finer mechanical resolution in stiff tissues, and/or lower ARF power requirements to expand the diagnostic relevance of ARF-based mechanical property assessments.
机译:弹性超声方法的机械性能评估,包括利用声辐射力(ARF)的方法,依赖于组织位移的精确估计。已经开发了几个位移估计器,但它们与跟踪小于一微米计的ARF诱导位移的相关性受到估计方差的限制。为了最小化位移估计方差,呈现了利用位移空间分布的基于新的盲源分离(BSS)的方法。这种新方法应用三维(3D)内核中的主成分分析(PCA)来派生主导的特征向量,从中估计位移。我们称之为新的方法“3DK-BSS”估算器。在刚性(80kPa)的ARFI峰位位移(PD)图像中实现的对比度噪声比(CNR)和具有柔软的(8kPa)球形包含在商业虚拟体中25个KPA背景。将3DK-BSS实现的CNR值与通过归一化互相关(NCC),贝叶斯正则化和使用二维(2D)内核在整个系统的ARF功率水平的二维(2D)内核实现的BSS产生的CNR值。力量。对于所有功率水平,并且对于刚性和软夹杂物,3DK-BSS包含CNR高于任何其他检查的位移估算器。例如,3DK-BSS僵硬的包含CNR分别比NCC,贝叶斯正则化和2D BSS的CNR分别高出16.3,11.8和4.2倍,分别以5%的功率水平。 3DK-BSS的CNR改进是最大的最低(5%)ARF功率水平,其中通过3DK-BSS为250nm测量硬质幻影中的位移。这些结果表明,通过精确测量亚微米位移,3DK-BSS位移估计器可以实现更深的基于ARF的机械性能评估,更精细的机械分辨率,在僵硬的组织中,以及扩大ARF诊断相关性的ARF的诊断相关性基于机械性质评估。

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