Li Peng, Yang Xiaofeng, Zhang Dalong, Bian Zhengzhong
Dept. of Biomed. Eng., Xi'an Jiaotong Univ., Xi'an, China.
IEEE Trans Ultrason Ferroelectr Freq Control. 2008 Jul;55(7):1582-96. doi: 10.1109/TUFFC.2008.835.
An adaptive method based on the sparse component analysis is proposed for stronger clutter filtering in ultrasound color flow imaging (CFI). In the present method, the focal underdetermined system solver (FOCUSS) algorithm is employed, and the iteration of the algorithm is based on weighted norm minimization of the dependent variable with the weights being a function of the preceding iterative solutions. By finding the localized energy solution vector representing strong clutter components, the FOCUSS algorithm first extracts the clutter from the original signal. However, the different initialization of the basis function matrix has an impact on the filtering performance of FOCUSS algorithms. Thus, 2 FOCUSS clutter- filtering methods, the original and the modified, are obtained by initializing the basis function matrix using a predetermined set of monotone sinusoids and using the discrete Karhunen-Loeve transform (DKLT) and spatial averaging, respectively. Validation of 2 FOCUSS filtering methods has been performed through experimental tests, in which they were compared with several conventional clutter filters using simplistic simulated and gathered clinical data. The results demonstrate that 2 FOCUSS filtering methods can follow signal varying adaptively and perform clutter filtering effectively. Moreover, the modified method may obtain the further improved filtering performance and retain more blood flow information in regions close to vessel walls.
提出了一种基于稀疏分量分析的自适应方法,用于在超声彩色血流成像(CFI)中进行更强的杂波滤波。在本方法中,采用了聚焦欠定系统求解器(FOCUSS)算法,该算法的迭代基于因变量的加权范数最小化,权重是前一次迭代解的函数。通过找到表示强杂波分量的局部能量解向量,FOCUSS算法首先从原始信号中提取杂波。然而,基函数矩阵的不同初始化对FOCUSS算法的滤波性能有影响。因此,通过分别使用一组预定的单调正弦波初始化基函数矩阵以及使用离散卡尔胡宁-洛伊夫变换(DKLT)和空间平均,获得了两种FOCUSS杂波滤波方法,即原始方法和改进方法。通过实验测试对两种FOCUSS滤波方法进行了验证,在实验中,使用简单的模拟和收集的临床数据将它们与几种传统杂波滤波器进行了比较。结果表明,两种FOCUSS滤波方法能够自适应地跟踪信号变化并有效地进行杂波滤波。此外,改进方法可能会获得进一步提高的滤波性能,并在靠近血管壁的区域保留更多的血流信息。