Eo Taejoon, Kim Taeseong, Jun Yohan, Lee Hongpyo, Ahn Sung Soo, Kim Dong-Hyun, Hwang Dosik
School of Electrical and Electronic Engineering, Yonsei University, Seoul, Korea.
Department of Radiology, Yonsei University College of Medicine, Seoul, Korea.
J Magn Reson Imaging. 2017 Jun;45(6):1835-1845. doi: 10.1002/jmri.25477. Epub 2016 Sep 16.
To develop an effective method that can suppress noise in successive multiecho T (*)-weighted magnetic resonance (MR) brain images while preventing filtering artifacts.
For the simulation experiments, we used multiple T -weighted images of an anatomical brain phantom. For in vivo experiments, successive multiecho MR brain images were acquired from five healthy subjects using a multiecho gradient-recalled-echo (MGRE) sequence with a 3T MRI system. Our denoising method is a nonlinear filter whose filtering weights are determined by tissue characteristics among pixels. The similarity of the tissue characteristics is measured based on the l -difference between two temporal decay signals. Both numerical and subjective evaluations were performed in order to compare the effectiveness of our denoising method with those of conventional filters, including Gaussian low-pass filter (LPF), anisotropic diffusion filter (ADF), and bilateral filter. Root-mean-square error (RMSE), signal-to-noise ratio (SNR), and contrast-to-noise ratio (CNR) were used in the numerical evaluation. Five observers, including one radiologist, assessed the image quality and rated subjective scores in the subjective evaluation.
Our denoising method significantly improves RMSE, SNR, and CNR of numerical phantom images, and CNR of in vivo brain images in comparison with conventional filters (P < 0.005). It also receives the highest scores for structure conspicuity (8.2 to 9.4 out of 10) and naturalness (9.2 to 9.8 out of 10) among the conventional filters in the subjective evaluation.
This study demonstrates that high-SNR multiple T (*)-contrast MR images can be obtained using our denoising method based on tissue characteristics without noticeable artifacts. Evidence level: 2 J. MAGN. RESON. IMAGING 2017;45:1835-1845.
开发一种有效的方法,能够抑制连续多回波T*加权磁共振(MR)脑图像中的噪声,同时防止滤波伪影。
在模拟实验中,我们使用了解剖学脑模体的多个T加权图像。在体内实验中,使用3T MRI系统的多回波梯度回波(MGRE)序列从五名健康受试者获取连续多回波MR脑图像。我们的去噪方法是一种非线性滤波器,其滤波权重由像素间的组织特征决定。基于两个时间衰减信号之间的l差异来测量组织特征的相似性。为了将我们的去噪方法与包括高斯低通滤波器(LPF)、各向异性扩散滤波器(ADF)和双边滤波器在内的传统滤波器的有效性进行比较,进行了数值和主观评估。数值评估中使用了均方根误差(RMSE)、信噪比(SNR)和对比度噪声比(CNR)。包括一名放射科医生在内的五名观察者在主观评估中评估了图像质量并给出主观评分。
与传统滤波器相比,我们的去噪方法显著提高了数值模体图像的RMSE、SNR和CNR,以及体内脑图像的CNR(P < 0.005)。在主观评估中,它在传统滤波器中结构清晰度(8.2至9.4分,满分10分)和自然度(9.2至9.8分,满分10分)方面也获得了最高分。
本研究表明,使用我们基于组织特征的去噪方法可以获得高SNR的多个T*对比度MR图像,且无明显伪影。证据水平:2 J.MAGN.RESON.IMAGING 2017;45:1835 - 1845。