Medical Engineering Program, The Universityof Hong Kong, Pokfulam, Hong Kong SAR.
IEEE Trans Ultrason Ferroelectr Freq Control. 2010 May;57(5):1096-111. doi: 10.1109/TUFFC.2010.1521.
Proper suppression of tissue clutter is a prerequisite for visualizing flow accurately in ultrasound color flow imaging. Among various clutter suppression methods, the eigen-based filter has shown potential because it can theoretically adapt its stopband to the actual clutter characteristics even when tissue motion is present. This paper presents a formative review on how eigen-based filters should be designed to improve their practical efficacy in adaptively suppressing clutter without affecting the blood flow echoes. Our review is centered around a comparative assessment of two eigen-filter design considerations: 1) eigen-component estimation approach (single-ensemble vs. multi-ensemble formulations), and 2) filter order selection mechanism (eigenvalue-based vs. frequencybased algorithms). To evaluate the practical efficacy of existing eigen-filter designs, we analyzed their clutter suppression level in two in vivo scenarios with substantial tissue motion (intra-operative coronary imaging and thyroid imaging). Our analysis shows that, as compared with polynomial regression filters (with or without instantaneous clutter downmixing), eigen-filters that use a frequency-based algorithm for filter order selection generally give Doppler power images with better contrast between blood and tissue regions. Results also suggest that both multi-ensemble and single-ensemble eigen-estimation approaches have their own advantages and weaknesses in different imaging scenarios. It may be beneficial to develop an algorithmic way of defining the eigen-filter formulation so that its performance advantages can be better realized.
准确地可视化超声彩色血流成像中的血流,组织杂波的适当抑制是前提。在各种杂波抑制方法中,基于特征的滤波器因其能够在存在组织运动的情况下,理论上自适应地将其阻带调整为实际杂波特性,因此具有潜力。本文综述了如何设计基于特征的滤波器,以提高其在自适应抑制杂波而不影响血流回波方面的实际效果。我们的综述主要围绕着两种特征滤波器设计考虑因素进行比较评估:1)特征分量估计方法(单总体与多总体公式),2)滤波器阶数选择机制(基于特征值与基于频率的算法)。为了评估现有特征滤波器设计的实际效果,我们在两个存在大量组织运动的体内场景(术中冠状动脉成像和甲状腺成像)中分析了它们的杂波抑制水平。我们的分析表明,与多项式回归滤波器(具有或不具有即时杂波下混合)相比,使用基于频率的算法进行滤波器阶数选择的特征滤波器通常会产生具有更好的血流与组织区域对比度的多普勒功率图像。结果还表明,多总体和单总体特征估计方法在不同的成像场景中都有各自的优点和弱点。开发一种算法方式来定义特征滤波器的公式可能会更有益,以便更好地实现其性能优势。