University ofWisconsin-Madison, Madison, WI 53706, USA.
IEEE Trans Biomed Eng. 2011 Jun;58(6):1612-20. doi: 10.1109/TBME.2011.2106500. Epub 2011 Jan 17.
Noise artifacts due to signal decorrelation and reverberation are a considerable problem in ultrasound strain imaging. For block-matching methods, information from neighboring matching blocks has been utilized to regularize the estimated displacements. We apply a recursive Bayesian regularization algorithm developed by Hayton et al. [Artif. Intell., vol. 114, pp. 125-156, 1999] to phase-sensitive ultrasound RF signals to improve displacement estimation. The parameter of regularization is reformulated, and its meaning examined in the context of strain imaging. Tissue-mimicking experimental phantoms and RF data incorporating finite-element models for the tissue deformation and frequency-domain ultrasound simulations are used to compute the optimal parameter with respect to nominal strain and algorithmic iterations. The optimal strain regularization parameter was found to be twice the nominal strain and did not vary significantly with algorithmic iterations. The technique demonstrates superior performance over median filtering in noise reduction at strains 5% and higher for all quantitative experiments performed. For example, the strain SNR was 11 dB higher than that obtained using a median filter at 7% strain. It has to be noted that for applied deformations lower than 1%, since signal decorrelation errors are minimal, using this approach may degrade the displacement image.
由于信号去相关和混响引起的噪声伪影是超声应变成像中的一个严重问题。对于块匹配方法,可以利用相邻匹配块的信息来正则化估计的位移。我们应用由 Hayton 等人开发的递归贝叶斯正则化算法[Artif. Intell.,vol. 114,pp. 125-156,1999]对相敏超声 RF 信号进行处理,以提高位移估计的准确性。重新制定了正则化参数,并在应变成像的背景下检查其含义。使用组织模拟实验体模和包含组织变形的有限元模型的 RF 数据以及频域超声模拟来计算相对于标称应变和算法迭代的最优参数。最优应变正则化参数被发现是标称应变的两倍,并且随着算法迭代的变化不大。在所有进行的定量实验中,该技术在降低噪声方面的表现优于中值滤波,在应变 5%及更高的情况下尤其如此。例如,在 7%的应变下,应变 SNR 比使用中值滤波器获得的 SNR 高 11dB。需要注意的是,对于低于 1%的应用变形,由于信号去相关误差最小,使用这种方法可能会降低位移图像的质量。