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Eigen-based signal processing methods for ultrasound color flow imaging.

机译:基于特征的超声彩色流成像信号处理方法。

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摘要

Purpose. This thesis presents a study on the design of new eigen-based signal processing methods for use in color flow imaging. Specifically, the proposed methods are designed to address three main problems in color flow signal processing: the lack of abundant Doppler data samples, the possible presence of wideband Doppler clutter, and the potential flow signal distortions that arise during clutter suppression.; Theoretical contributions. A clutter filter (the Hankel-SVD filter) and a flow estimator (the Matrix Pencil method) were respectively developed by exploiting the eigen-space principles related to two matrix forms known as the Hankel matrix and the matrix pencil. Both techniques were then combined to form a new color flow data processor that performs flow detection and flow estimation in parallel. All of these methods are adaptive to the Doppler signal contents through an SVD of the Hankel matrix created from a Doppler data vector. Moreover, they are intended to work with each Doppler ensemble separately (i.e. they do not require Doppler ensembles from multiple sample volumes).; Simulation assessment. A Doppler signal simulation model was developed to generate Doppler signals consisting of non-stationary (phase-modulated) tissue clutter and spectral-broadened (amplitude-modulated) flow echoes. The synthesized datasets were used to analyze the Hankel-SVD filter's flow detection performance and the Matrix Pencil's velocity estimation performance. A comparison of the Hankel-SVD filter with an existing type of adaptive filter (clutter-downmixing filter) showed that this new filter is more capable of discriminating flow echoes from Doppler clutter. Also, it was found that the Matrix Pencil can provide less biased flow estimates as compared to other frequency-based flow estimators like the lag-one autocorrelator.; Experimental assessment. Color flow datasets were obtained respectively from a steady-flow phantom and from the carotid arteries of a youth subject. These datasets were used to analyze the performance of the proposed single-module processor. For the flow phantom study, the single-module processor showed that it can reconstruct velocity maps similar to the theoretical flow profile. As well, for the in vivo studies, it gave a better flow detection performance than conventional two-module processors especially when there is substantial tissue motion.
机译:目的。本文提出了一种用于彩色流成像的基于本征信号处理新方法的设计研究。具体而言,所提出的方法旨在解决彩色流信号处理中的三个主要问题:缺乏丰富的多普勒数据样本,宽带多普勒杂波的可能存在以及在杂波抑制期间可能出现的潜在的流信号失真。理论贡献。杂波滤波器(汉克尔-SVD滤波器)和流量估计器(矩阵铅笔法)分别是通过利用与汉克矩阵和矩阵铅笔这两种矩阵形式相关的本征空间原理开发的。然后将这两种技术组合在一起,以形成一个新的彩色流量数据处理器,该处理器并行执行流量检测和流量估计。所有这些方法都通过从多普勒数据向量创建的汉克矩阵的SVD来适应多普勒信号的内容。而且,它们旨在与每个多普勒合奏分别工作(即,它们不需要来自多个样本量的多普勒合奏)。仿真评估。开发了多普勒信号仿真模型以生成由非平稳(相位调制)组织杂波和频谱扩展(幅度调制)流回波组成的多普勒信号。合成的数据集用于分析Hankel-SVD过滤器的流量检测性能和Matrix Pencil的速度估计性能。 Hankel-SVD滤波器与现有类型的自适应滤波器(杂波降混滤波器)的比较表明,这种新滤波器更能区分多普勒杂波中的回波。此外,还发现,与其他基于频率的流量估算器(如滞后一自相关器)相比,Matrix Pencil可以提供更少的偏差流量估算。实验评估。分别从稳定流动的体模和青年受试者的颈动脉获得色流数据集。这些数据集用于分析所提出的单模块处理器的性能。对于流模型的研究,单模块处理器表明它可以重建类似于理论流轮廓的速度图。同样,对于体内研究,它具有比常规两模块处理器更好的流量检测性能,尤其是在组织运动明显的情况下。

著录项

  • 作者

    Yu, Alfred C. H.;

  • 作者单位

    University of Toronto (Canada).;

  • 授予单位 University of Toronto (Canada).;
  • 学科 Engineering Biomedical.
  • 学位 Ph.D.
  • 年度 2007
  • 页码 123 p.
  • 总页数 123
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 生物医学工程;
  • 关键词

  • 入库时间 2022-08-17 11:39:51

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