Accelerating dynamic cardiac imaging based on a dual-dictionary learning algorithm

Changjiu Zhang, Zhaoyang Jin, Haihui Ye, Feng Liu
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引用次数: 1

Abstract

Traditional CS with dictionary learning (DL) algorithm can be applied in reconstruction for dynamic cardiac imaging (DCI), which is realized by multi-slice two-dimensional format (2D-DLDCI) or directly three-dimensional format (3D-DLDCI). It was reported that dual-dictionary learning algorithm can improve the reconstruction quality for the 3D magnetic resonance imaging (MRI) by introducing prior information and inter-frame correlation. In this study, dual-dictionary learning algorithm was applied in dynamic cardiac imaging (Dual-DLDCI) by exploring the symmetry of the cardiac cycle. High resolution dictionary was trained from the fully acquired previous frames within a period of relaxation, and low resolution dictionary was trained from the under-sampled frames. The patches for traditional 2D dictionary were replaced by the blocks to utilize the spatial correlation among frames. The high resolution dictionary instead of low resolution dictionary was used in the iterative reconstruction to provide prior information. The simulation and experiment results showed that, the Dual-DLDCI algorithm achieves much better reconstruction quality than the other two algorithms.
基于双字典学习算法的加速动态心脏成像
传统的CS结合字典学习(DL)算法可用于动态心脏成像(DCI)重建,可采用多层二维格式(2D-DLDCI)或直接三维格式(3D-DLDCI)实现。双字典学习算法通过引入先验信息和帧间相关性,提高了三维磁共振成像(MRI)的重建质量。本研究通过探索心脏周期的对称性,将双字典学习算法应用于动态心脏成像(Dual-DLDCI)。高分辨率字典是在松弛时间内完全获取的前一帧中训练出来的,低分辨率字典是在欠采样帧中训练出来的。将传统二维字典中的块替换为块,利用帧间的空间相关性。采用高分辨率字典代替低分辨率字典进行迭代重建,提供先验信息。仿真和实验结果表明,Dual-DLDCI算法的重建质量明显优于其他两种算法。
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