Jin Kyong Hwan, Um Ji-Yong, Lee Dongwook, Lee Juyoung, Park Sung-Hong, Ye Jong Chul
Department of Bio and Brain Engineering, Korea Advanced Institute of Science & Technology (KAIST), 373-1 Guseong-Dong Yuseong-Gu, Daejon, 305-701, Republic of Korea.
Biomedical Imaging Group, École Polytechnique Fédérale de Lausanne (EPFL), 1015, Lausanne, Switzerland.
Magn Reson Med. 2017 Jul;78(1):327-340. doi: 10.1002/mrm.26330. Epub 2016 Jul 28.
Magnetic resonance imaging (MRI) artifacts are originated from various sources including instability of an magnetic resonance (MR) system, patient motion, inhomogeneities of gradient fields, and so on. Such MRI artifacts are usually considered as irreversible, so additional artifact-free scan or navigator scan is necessary. To overcome these limitations, this article proposes a novel compressed sensing-based approach for removal of various MRI artifacts.
Recently, the annihilating filter based low-rank Hankel matrix approach was proposed. The annihilating filter based low-rank Hankel matrix exploits the duality between the low-rankness of weighted Hankel structured matrix and the sparsity of signal in a transform domain. Because MR artifacts usually appeared as sparse k-space components, the low-rank Hankel matrix from underlying artifact-free k-space data can be exploited to decompose the sparse outliers.
The sparse + low-rank decomposition framework using Hankel matrix was proposed for removal of MRI artifacts. Alternating direction method of multipliers algorithm was employed for the minimization of associated cost function with the initialized matrices from a factorization-based matrix completion.
Experimental results demonstrated that the proposed algorithm can correct MR artifacts including herringbone (crisscross), motion, and zipper artifacts without image distortion.
The proposed method may be a robust correction solution for various MRI artifacts that can be represented as sparse outliers. Magn Reson Med 78:327-340, 2017. © 2016 International Society for Magnetic Resonance in Medicine.
磁共振成像(MRI)伪影源于多种来源,包括磁共振(MR)系统的不稳定性、患者运动、梯度场不均匀性等。此类MRI伪影通常被认为是不可逆的,因此需要额外进行无伪影扫描或导航扫描。为克服这些局限性,本文提出了一种基于压缩感知的新型方法来去除各种MRI伪影。
最近,提出了基于消零滤波器的低秩汉克尔矩阵方法。基于消零滤波器的低秩汉克尔矩阵利用了加权汉克尔结构矩阵的低秩性与变换域中信号稀疏性之间的对偶性。由于MR伪影通常表现为稀疏的k空间分量,因此可以利用潜在无伪影k空间数据的低秩汉克尔矩阵来分解稀疏离群值。
提出了使用汉克尔矩阵的稀疏+低秩分解框架来去除MRI伪影。采用交替方向乘子算法,通过基于因子分解的矩阵填充对初始化矩阵来最小化相关成本函数。
实验结果表明,所提出的算法可以校正包括人字形(交叉)、运动和拉链伪影在内的MR伪影,且不会产生图像失真。
所提出的方法可能是一种针对各种可表示为稀疏离群值的MRI伪影的鲁棒校正解决方案。《磁共振医学》78:327 - 340, 2017。© 2016国际磁共振医学学会。