Centre for Biomedical Engineering, School of Electrical and Electronic Engineering, The University of Adelaide, Adelaide, SA, Australia.
Med Biol Eng Comput. 2012 Sep;50(9):991-1000. doi: 10.1007/s11517-012-0920-x. Epub 2012 May 30.
It has been shown that, magnetic resonance images (MRIs) with sparsity representation in a transformed domain, e.g. spatial finite-differences (FD), or discrete cosine transform (DCT), can be restored from undersampled k-space via applying current compressive sampling theory. The paper presents a model-based method for the restoration of MRIs. The reduced-order model, in which a full-system-response is projected onto a subspace of lower dimensionality, has been used to accelerate image reconstruction by reducing the size of the involved linear system. In this paper, the singular value threshold (SVT) technique is applied as a denoising scheme to reduce and select the model order of the inverse Fourier transform image, and to restore multi-slice breast MRIs that have been compressively sampled in k-space. The restored MRIs with SVT for denoising show reduced sampling errors compared to the direct MRI restoration methods via spatial FD, or DCT. Compressive sampling is a technique for finding sparse solutions to underdetermined linear systems. The sparsity that is implicit in MRIs is to explore the solution to MRI reconstruction after transformation from significantly undersampled k-space. The challenge, however, is that, since some incoherent artifacts result from the random undersampling, noise-like interference is added to the image with sparse representation. These recovery algorithms in the literature are not capable of fully removing the artifacts. It is necessary to introduce a denoising procedure to improve the quality of image recovery. This paper applies a singular value threshold algorithm to reduce the model order of image basis functions, which allows further improvement of the quality of image reconstruction with removal of noise artifacts. The principle of the denoising scheme is to reconstruct the sparse MRI matrices optimally with a lower rank via selecting smaller number of dominant singular values. The singular value threshold algorithm is performed by minimizing the nuclear norm of difference between the sampled image and the recovered image. It has been illustrated that this algorithm improves the ability of previous image reconstruction algorithms to remove noise artifacts while significantly improving the quality of MRI recovery.
已经表明,通过应用当前的压缩采样理论,可以从欠采样的 k 空间中恢复具有稀疏表示的磁共振图像(MRI),例如在变换域中的空间有限差分(FD)或离散余弦变换(DCT)。本文提出了一种基于模型的 MRI 恢复方法。降阶模型通过将全系统响应投影到低维子空间上来加速图像重建,从而减小了所涉及的线性系统的大小。在本文中,奇异值阈值(SVT)技术被应用于去噪方案,以减少并选择逆傅里叶变换图像的模型阶数,并恢复在 k 空间中进行压缩采样的多切片乳房 MRI。与通过空间 FD 或 DCT 进行直接 MRI 恢复方法相比,使用 SVT 进行去噪的恢复 MRI 显示出减少的采样误差。压缩采样是一种寻找欠定线性系统稀疏解的技术。MRI 中的稀疏性是在从显著欠采样的 k 空间转换后探索 MRI 重建的解决方案。然而,挑战在于,由于随机欠采样导致一些不连贯的伪影,稀疏表示的图像中添加了类似噪声的干扰。文献中的这些恢复算法无法完全去除伪影。需要引入去噪过程来提高图像恢复的质量。本文应用奇异值阈值算法来降低图像基函数的模型阶数,这允许通过去除噪声伪影进一步提高图像重建的质量。去噪方案的原理是通过选择较小数量的主导奇异值来最优地重建稀疏 MRI 矩阵,从而降低秩。奇异值阈值算法通过最小化采样图像和恢复图像之间的核范数差来执行。已经说明,该算法提高了先前图像重建算法去除噪声伪影的能力,同时显著提高了 MRI 恢复的质量。