Department of Medicine, Beth Israel Deaconess Medical Center and Harvard Medical School, Boston, Massachusetts 02215, USA.
Magn Reson Med. 2011 Sep;66(3):756-67. doi: 10.1002/mrm.22841. Epub 2011 Apr 4.
An improved image reconstruction method from undersampled k-space data, low-dimensional-structure self-learning and thresholding (LOST), which utilizes the structure from the underlying image is presented. A low-resolution image from the fully sampled k-space center is reconstructed to learn image patches of similar anatomical characteristics. These patches are arranged into "similarity clusters," which are subsequently processed for dealiasing and artifact removal, using underlying low-dimensional properties. The efficacy of the proposed method in scan time reduction was assessed in a pilot coronary MRI study. Initially, in a retrospective study on 10 healthy adult subjects, we evaluated retrospective undersampling and reconstruction using LOST, wavelet-based l(1)-norm minimization, and total variation compressed sensing. Quantitative measures of vessel sharpness and mean square error, and qualitative image scores were used to compare reconstruction for rates of 2, 3, and 4. Subsequently, in a prospective study, coronary MRI data were acquired using these rates, and LOST-reconstructed images were compared with an accelerated data acquisition using uniform undersampling and sensitivity encoding reconstruction. Subjective image quality and sharpness data indicate that LOST outperforms the alternative techniques for all rates. The prospective LOST yields images with superior quality compared with sensitivity encoding or l(1)-minimization compressed sensing. The proposed LOST technique greatly improves image reconstruction for accelerated coronary MRI acquisitions.
一种从欠采样 k 空间数据中重建图像的改进方法,即低维结构自学习和阈值法(LOST),利用了基础图像的结构。从完全采样的 k 空间中心重建低分辨率图像,以学习具有相似解剖特征的图像块。这些块被排列成“相似性簇”,随后利用底层的低维属性对其进行去交错和去除伪影处理。在一项冠状动脉 MRI 的初步研究中评估了所提出的方法在扫描时间减少方面的效果。最初,在对 10 名健康成年受试者的回顾性研究中,我们评估了使用 LOST、基于小波的 l(1)-范数最小化和全变差压缩感知的回顾性欠采样和重建。使用血管锐度和均方误差的定量测量以及定性图像评分来比较 2、3 和 4 倍的重建。随后,在一项前瞻性研究中,使用这些速率采集冠状动脉 MRI 数据,并将 LOST 重建图像与使用均匀欠采样和灵敏度编码重建的加速数据采集进行比较。主观图像质量和锐度数据表明,LOST 在所有速率下均优于替代技术。与灵敏度编码或 l(1)-最小化压缩感知相比,前瞻性 LOST 产生的图像质量更好。所提出的 LOST 技术极大地改善了加速冠状动脉 MRI 采集的图像重建。