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首页> 外文期刊>Ultrasonic Imaging: An International Journal >Adaptive Ultrasound Tissue Harmonic Imaging Based on an Improved Ensemble Empirical Mode Decomposition Algorithm
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Adaptive Ultrasound Tissue Harmonic Imaging Based on an Improved Ensemble Empirical Mode Decomposition Algorithm

机译:自适应超声组织谐波成像基于改进的集合经验分解算法

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Complete and accurate separation of harmonic components from the ultrasonic radio frequency (RF) echo signals is essential to improve the quality of harmonic imaging. There are limitations in the existing two commonly used separation methods, that is, the subjectivity for the high-pass filtering (S_HPF) method and motion artifacts for the pulse inversion (S_PI) method. A novel separation method called S_CEEMDAN, based on the complete ensemble empirical mode decomposition with adaptive noise (CEEMDAN) algorithm, is proposed to adaptively separate the second harmonic components for ultrasound tissue harmonic imaging. First, the ensemble size of the CEEMDAN algorithm is calculated adaptively according to the standard deviation of the added white noise. A set of intrinsic mode functions (IMFs) is then obtained by the CEEMDAN algorithm from the ultrasonic RF echo signals. According to the IMF spectra, the IMFs that contain both fundamental and harmonic components are further decomposed. The separation process is performed until all the obtained IMFs have been divided into either fundamental or harmonic categories. Finally, the fundamental and harmonic RF echo signals are obtained from the accumulations of signals from these two categories, respectively. In simulation experiments based on CREANUIS, the S_CEEMDAN-based results are similar to the S_HPF-based results, but better than the S_PI-based results. For the dynamic carotid artery measurements, the contrasts, contrast-to-noise ratios (CNRs), and tissue-to-clutter ratios (TCRs) of the harmonic images based on the S_CEEMDAN are averagely increased by 31.43% and 50.82%, 18.96% and 10.83%, as well as 34.23% and 44.18%, respectively, compared with those based on the S_HPF and S_PI methods. In conclusion, the S_CEEMDAN method provides improved harmonic images owing to its good adaptivity and lower motion artifacts, and is thus a potential alternative to the current methods for ultrasonic harmonic imaging.
机译:从超声波射频(RF)回波信号完全和准确地分离谐波分量,以提高谐波成像质量至关重要。现有的两个常用的分离方法存在局限性,即高通滤波(S_HPF)方法的主观性和脉冲反转(S_PI)方法的运动伪影。提出基于具有自适应噪声(CeeMDAN)算法的完整集合经验模式分解的新型分离方法,以便自适应地分离用于超声组织谐波成像的第二谐波分量。首先,根据添加的白噪声的标准偏差,自适应地计算CeeMDAN算法的集合大小。然后由来自超声波RF回波信号的CeeMDAN算法获得一组内在模式功能(IMF)。根据IMF光谱,含有基本和谐波分量的IMF也进一步分解。进行分离过程,直到所有获得的IMF被分成基本或谐波类别。最后,基本和谐波RF回波信号分别从这两个类别的信号累积获得。在基于CREANUIS的仿真实验中,基于S_CEEMDAN的结果类似于基于S_HPF的结果,但优于基于S_PI的结果。对于动态颈动脉测量,基于S_COEMDAN的谐波图像的对比度,对比度比(CNR)和组织到杂波比率(TCRS)平均增长31.43%和50.82%,18.96%与基于S_HPF和S_PI方法相比,分别为10.83%,以及34.23%和44.18%。总之,S_CEEMDAN方法由于其良好的适应性和低运动伪像而提供改进的谐波图像,因此是超声波谐波成像的当前方法的潜在替代方法。

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