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Denoising of Dynamic Contrast-Enhanced MR Images Using Dynamic Nonlocal Means

机译:使用动态非局部均值对动态增强MR图像进行去噪

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摘要

This paper presents a new algorithm for denoising dynamic contrast-enhanced (DCE) MR images. It is a novel variation on the nonlocal means (NLM) algorithm. The algorithm, called dynamic nonlocal means (DNLM), exploits the redundancy of information in the temporal sequence of images. Empirical evaluations of the performance of the DNLM algorithm relative to seven other denoising methods—simple Gaussian filtering, the original NLM algorithm, a trivial extension of NLM to include the temporal dimension, bilateral filtering, anisotropic diffusion filtering, wavelet adaptive multiscale products threshold, and traditional wavelet thresholding—are presented. The evaluations include quantitative evaluations using simulated data and real data (20 DCE-MRI data sets from routine clinical breast MRI examinations) as well as qualitative evaluations using the same real data (24 observers: 14 image/signal-processing specialists, 10 clinical breast MRI radiographers). The results of the quantitative evaluation using the simulated data show that the DNLM algorithm consistently yields the smallest MSE between the denoised image and its corresponding original noiseless version. The results of the quantitative evaluation using the real data provide evidence, at the $alpha =0.05$ level of significance, that the DNLM algorithm yields the smallest MSE between the denoised image and its corresponding original noiseless version. The results of the qualitative evaluation provide evidence, at the $alpha=0.05$ level of significance, that the DNLM algorithm performs visually better than all of the other algorithms. Collectively the qualitative and quantitative results suggest that the DNLM algorithm more effectively attenuates noise in DCE MR images than any of the other algorithms.
机译:本文提出了一种新的动态对比度增强(DCE)MR图像降噪算法。它是非局部均值(NLM)算法的一种新颖变体。该算法称为动态非局部均值(DNLM),它利用图像时间序列中的信息冗余。相对于其他七种降噪方法(简单的高斯滤波,原始的NLM算法,对NLM的简单扩展以包括时间维,双边滤波,各向异性扩散滤波,小波自适应多尺度乘积阈值和介绍了传统的小波阈值处理。评估包括使用模拟数据和真实数据(来自常规临床乳腺MRI检查的20个DCE-MRI数据集)进行定量评估,以及使用相同真实数据的定性评估(24位观察员:14位图像/信号处理专家,10位临床乳腺患者) MRI放射技师)。使用模拟数据进行定量评估的结果表明,DNLM算法始终在降噪图像及其相应的原始无噪版本之间产生最小的MSE。使用实际数据进行定量评估的结果提供了证据,在显着性水平为α= 0.05的情况下,DNLM算法在经过去噪的图像与其相应的原始无噪声版本之间产生的最小MSE。定性评估的结果在显着性水平为(alpha = 0.05)时提供了证据,表明DNLM算法在视觉上比所有其他算法都更好。总体上,定性和定量结果表明,DNLM算法比其他任何算法都能更有效地衰减DCE MR图像中的噪声。

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