Wang Yiran, Chen Zhifeng, Wang Jing, Yuan Lixia, Xia Ling, Liu Feng
Department of Biomedical Engineering, Zhejiang University, Hangzhou 310027, China.
Center for Brain Imaging Science and Technology, Department of Biomedical Engineering, Zhejiang University, Hangzhou, Zhejiang, China.
Comput Math Methods Med. 2017;2017:4816024. doi: 10.1155/2017/4816024. Epub 2017 Jul 18.
The - principal component analysis (- PCA) is an effective approach for high spatiotemporal resolution dynamic magnetic resonance (MR) imaging. However, it suffers from larger residual aliasing artifacts and noise amplification when the reduction factor goes higher. To further enhance the performance of this technique, we propose a new method called sparse - PCA that combines the - PCA algorithm with an artificial sparsity constraint. It is a self-calibrated procedure that is based on the traditional - PCA method by further eliminating the reconstruction error derived from complex subtraction of the sampled - space from the original reconstructed - space. The proposed method is tested through both simulations and in vivo datasets with different reduction factors. Compared to the standard - PCA algorithm, the sparse - PCA can improve the normalized root-mean-square error performance and the accuracy of temporal resolution. It is thus useful for rapid dynamic MR imaging.
主成分分析(PCA)是一种用于高时空分辨率动态磁共振(MR)成像的有效方法。然而,当缩减因子增大时,它会出现较大的残余混叠伪影和噪声放大问题。为了进一步提高该技术的性能,我们提出了一种名为稀疏PCA的新方法,该方法将PCA算法与人工稀疏约束相结合。它是一种自校准过程,基于传统的PCA方法,通过进一步消除从原始重建空间减去采样空间的复杂减法所产生的重建误差。通过模拟和具有不同缩减因子的体内数据集对所提出的方法进行了测试。与标准PCA算法相比,稀疏PCA可以提高归一化均方根误差性能和时间分辨率的准确性。因此,它对于快速动态MR成像很有用。