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Noise analysis and improvement of displacement vector estimation from angular displacements

机译:噪声分析和基于角位移的位移矢量估计的改进

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摘要

Elastography or elasticity imaging techniques typically image local strains or Young’s modulus variations along the insonification direction. Recently, techniques that utilize angular displacement estimates obtained from multiple angular insonification of tissue have been reported. Angular displacement estimates obtained along different angular insonification directions have been utilized for spatial-angular compounding to reduce noise artifacts in axial-strain elastograms, and for estimating the axial and lateral components of the displacement vector and the corresponding strain tensors. However, these angular strain estimation techniques were based on the assumption that noise artifacts in the displacement estimates were independent and identically distributed and that the displacement estimates could be modeled using a zero-mean normal probability density function. Independent and identically distributed random variables refer to a collection of variables that have the same probability distribution and are mutually independent. In this article, a modified least-squares approach is presented that does not make any assumption regarding the noise in the angular displacement estimates and incorporates displacement noise artifacts into the strain estimation process using a cross-correlation matrix of the displacement noise artifacts. Two methods for estimating noise artifacts from the displacement images are described. Improvements in the strain tensor (axial and lateral) estimation performance are illustrated utilizing both simulation data obtained using finite-element analysis and experimental data obtained from a tissue-mimicking phantom. Improvements in the strain estimation performance are quantified in terms of the elastographic signal-to-noise and contrast-to-noise ratios obtained with and without the incorporation of the displacement noise artifacts into the least-squares strain estimator.
机译:弹性成像或弹性成像技术通常会沿声探方向成像局部应变或杨氏模量变化。最近,已经报道了利用从组织的多个角度声化获得的角度位移估计的技术。沿不同的角度声波方向获得的角位移估计值已用于空间-角度混合,以减少轴向应变弹性图中的噪声伪影,并用于估计位移矢量的轴向和横向分量以及相应的应变张量。但是,这些角应变估计技术基于以下假设:位移估计中的噪声伪影是独立且均匀分布的,并且可以使用零均值正态概率密度函数对位移估计进行建模。独立且分布均匀的随机变量是指具有相同概率分布并且相互独立的变量的集合。在本文中,提出了一种改进的最小二乘方法,该方法不对角位移估计中的噪声做任何假设,而是使用位移噪声伪像的互相关矩阵将位移噪声伪像合并到应变估计过程中。描述了两种用于从位移图像估计噪声伪像的方法。通过使用有限元分析获得的模拟数据和从组织模拟体模获得的实验数据,说明了应变张量(轴向和横向)估计性能的改进。根据弹性成像的信噪比和对比噪声比,量化了应变估计性能的改进,该弹性图像信噪比和对比度噪声比在将位移噪声伪像合并到最小二乘应变估计器中和没有将位移噪声伪像合并到最小平方应变估计器中的情况下获得。

著录项

  • 作者

    Chen, Hao; Varghese, Tomy;

  • 作者单位
  • 年度 2008
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  • 原文格式 PDF
  • 正文语种 en
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