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首页> 外文期刊>Biomedical Engineering, IEEE Transactions on >Denoising of Contrast-Enhanced Ultrasound Cine Sequences Based on a Multiplicative Model
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Denoising of Contrast-Enhanced Ultrasound Cine Sequences Based on a Multiplicative Model

机译:基于乘法模型的超声造影序列去噪

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Speckle noise is an inherent characteristic of dynamic contrast-enhanced ultrasound (DCEUS) movies and ultrasound images in general. Speckle noise considerably reduces the quality of these images and limits their clinical use. Currently, temporal compounding and maximum intensity persistence (MIP) are among the most widely accepted processing methods enabling the visualization of vasculature using DCEUS. A different approach has been used in this study, in order to improve the noise removal, while enabling the investigation of CEUS dynamics. A multiplicative model for the formation of DCEUS speckled images is adopted and the log-transformed cines are processed. A preprocessing step was performed, locally removing low value outliers. Due to the fast-changing spatial distribution of microbubbles inside the vasculature, the noise in consecutive DCEUS frames is independent, facilitating its removal by temporal denoising. Noise reduction is efficiently achieved by wavelet denoising, in which the signal's wavelet coefficients are thresholded and small-value noise-related coefficients are discarded. The main advantage of using wavelet denoising in the present context is its ability to estimate ultrasound contrast agents’ (UCA) concentration over time adaptively, without assuming a model or predefining the signal's degree of smoothness. The performance of wavelet denoising was compared against MIP, temporal compounding, and Log-normal model fitting. Phantom experiments showed improved SNR, using wavelet denoising over a wide range of UCA concentrations (MicroMarker, 0.001–1%). In the tests, improved noise removal was achieved, reflected by a significantly lower coefficient of variation in homogeneous vascular regions ().
机译:通常,斑点噪声是动态对比度增强超声(DCEUS)电影和超声图像的固有特征。斑点噪声大大降低了这些图像的质量并限制了它们的临床使用。当前,时间复合和最大强度持久性(MIP)是最广泛接受的处理方法之一,可以使用DCEUS可视化脉管系统。在这项研究中使用了一种不同的方法,以改善噪声消除效果,同时能够对CEUS动态进行研究。采用形成DCEUS斑点图像的乘法模型,并处理对数转换后的电影。执行了预处理步骤,以局部去除低值离群值。由于脉管系统内部微气泡的快速变化的空间分布,连续DCEUS帧中的噪声是独立的,从而有利于通过时间降噪去除噪声。通过小波去噪有效地实现了降噪,在该方法中,信号的小波系数被设置为阈值,而小数值噪声相关系数被丢弃。在当前情况下使用小波去噪的主要优点是它能够随时间估计超声造影剂(UCA)浓度,而无需假设模型或预先定义信号的平滑度。将小波去噪的性能与MIP,时间复合和对数正态模型拟合进行了比较。幻影实验表明,在广泛的UCA浓度范围内使用小波去噪(MicroMarker,0.001–1%)可以改善SNR。在测试中,通过均一的血管区域中显着较低的变异系数反映出改善的噪声去除效果。

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