Accelerated MRI shortens acquisition time by subsampling in the measurement k-space. Recovering a high-fidelity anatomical image from subsampled measurements requires close cooperation between two components: (1) a sampler that chooses the subsampling pattern and (2) a reconstructor that recovers images from incomplete measurements. In this paper, we leverage the sequential nature of MRI measurements, and propose a fully differentiable framework that jointly learns a sequential sampling policy simultaneously with a reconstruction strategy. This co-designed framework is able to adapt during acquisition in order to capture the most informative measurements for a particular target (Figure 1). Experimental results on the fastMRI knee dataset demonstrate that the proposed approach successfully utilizes intermediate information during the sampling process to boost reconstruction performance. In particular, our proposed method outperforms the current state-of-the-art learned k-space sampling baseline on up to 96.96% of test samples. We also investigate the individual and collective benefits of the sequential sampling and co-design strategies. Code and more visualizations are available at http://imaging.cms.caltech.edu/seq-mri
翻译:加速 MRI 通过测量 k- 空间的子取样缩短获取时间 。 从子抽样测量恢复高纤维解剖图像需要两个组成部分之间的密切合作:(1) 选择子取样模式的取样员和(2) 从不完全测量中恢复图像的重建器。在本文中,我们利用MRI测量的顺序性质,并提出了一个完全不同的框架,在同时学习与重建战略同时的顺序取样政策。这个共同设计的框架能够在获取期间进行调整,以便为特定目标获取最丰富的测量数据(图1)。快速MRI膝盖数据集的实验结果表明,拟议方法成功地利用了取样过程中的中间信息来提高重建性能。特别是,我们拟议的方法超越了目前以96.96%的测试样品为基准的先进知识K空间取样基线。我们还调查了序列取样和共同设计战略的个人和集体效益。 http:// imaginging.cms.caltech.edu/sqorimm-regmm。