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The Singular Value Filter: A General Filter Design Strategy for PCA-Based Signal Separation in Medical Ultrasound Imaging

机译:奇异值滤波器:医学超声成像中基于PCA的信号分离的通用滤波器设计策略

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摘要

A general filtering method, called the singular value filter (SVF), is presented as a framework for principal component analysis (PCA) based filter design in medical ultrasound imaging. The SVF approach operates by projecting the original data onto a new set of bases determined from PCA using singular value decomposition (SVD). The shape of the SVF weighting function, which relates the singular value spectrum of the input data to the filtering coefficients assigned to each basis function, is designed in accordance with a signal model and statistical assumptions regarding the underlying source signals. In this paper, we applied SVF for the specific application of clutter artifact rejection in diagnostic ultrasound imaging. SVF was compared to a conventional PCA-based filtering technique, which we refer to as the blind source separation (BSS) method, as well as a simple frequency-based finite impulse response (FIR) filter used as a baseline for comparison. The performance of each filter was quantified in simulated lesion images as well as experimental cardiac ultrasound data. SVF was demonstrated in both simulation and experimental results, over a wide range of imaging conditions, to outperform the BSS and FIR filtering methods in terms of contrast-to-noise ratio (CNR) and motion tracking performance. In experimental mouse heart data, SVF provided excellent artifact suppression with an average CNR improvement of 1.8 dB $({rm P} with over 40% reduction $({rm P} in displacement tracking error. It was further demonstrated from simulation and experimental results that SVF provided superior clutter rejection, as reflected in larger CNR values, when filtering was achieved using complex pulse-echo received data and non-binary filter coefficients.
机译:介绍了一种通用滤波方法,称为奇异值滤波器(SVF),作为医学超声成像中基于主成分分析(PCA)的滤波器设计的框架。 SVF方法通过将原始数据投影到使用奇异值分解(SVD)从PCA确定的一组新基准上来进行操作。 SVF加权函数的形状将输入数据的奇异值频谱与分配给每个基本函数的滤波系数相关联,根据信号模型和有关基础源信号的统计假设进行设计。在本文中,我们将SVF用于杂波伪影排除在诊断超声成像中的特定应用。 SVF与常规的基于PCA的滤波技术(我们称为盲源分离(BSS)方法)以及用作比较基准的基于频率的有限有限冲激响应(FIR)滤波器进行了比较。在模拟病变图像以及实验性心脏超声数据中量化了每个过滤器的性能。在广泛的成像条件下,在仿真和实验结果中均证明了SVF,其在对比度噪声比(CNR)和运动跟踪性能方面优于BSS和FIR滤波方法。在实验的小鼠心脏数据中,SVF提供了出色的伪影抑制能力,平均CNR改善了1.8 dB $({rm P},位移跟踪误差减少了40%({rm P}),并通过仿真和实验结果进一步证明当使用复杂的脉冲回波接收数据和非二进制滤波器系数实现滤波时,SVF可提供出色的杂波抑制,如较大的CNR值所示。

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