Motion-compensated MR reconstruction (MCMR) is a powerful concept with considerable potential, consisting of two coupled sub-problems: Motion estimation, assuming a known image, and image reconstruction, assuming known motion. In this work, we propose a learning-based self-supervised framework for MCMR, to efficiently deal with non-rigid motion corruption in cardiac MR imaging. Contrary to conventional MCMR methods in which the motion is estimated prior to reconstruction and remains unchanged during the iterative optimization process, we introduce a dynamic motion estimation process and embed it into the unrolled optimization. We establish a cardiac motion estimation network that leverages temporal information via a group-wise registration approach, and carry out a joint optimization between the motion estimation and reconstruction. Experiments on 40 acquired 2D cardiac MR CINE datasets demonstrate that the proposed unrolled MCMR framework can reconstruct high quality MR images at high acceleration rates where other state-of-the-art methods fail. We also show that the joint optimization mechanism is mutually beneficial for both sub-tasks, i.e., motion estimation and image reconstruction, especially when the MR image is highly undersampled.
翻译:运动补偿的MR重建(MCMR)是一个强大的概念,具有相当大的潜力,包括两个连带的子问题:运动估计,假设已知的图像,以及图像重建,假设已知的动作。在这项工作中,我们提议为MCMR建立一个学习的自我监督框架,以便有效地处理心脏MR成像中非硬性运动腐败。与传统的MCMR方法相反,在重建之前对运动进行估计,在迭接优化过程中保持不变,我们引入动态运动估计程序,并将其纳入未调整的优化。我们建立了一个心脏运动估计网络,通过集体登记方法利用时间信息,并在运动估计和重建之间进行联合优化。对40个获得的2D心脏MR CINE数据集的实验表明,拟议的未调整的MCMR框架可以以高加速率重建高质量的MR图像,而其他先进方法失败了。我们还表明,联合优化机制对两个子任务(即运动估计和图像重建)都具有互利性,特别是当MRM图像被高度压低的时候。