Spinoza Centre for Neuroimaging, Amsterdam 1105 BK, the Netherlands; Informatics Institute at the University of Amsterdam, Amsterdam 1098 XH, the Netherlands; Netherlands Cancer Institute, Amsterdam 1066 CX, the Netherlands.
Informatics Institute at the University of Amsterdam, Amsterdam 1098 XH, the Netherlands; AMLab, Amsterdam, 1098 XH, the Netherlands.
Med Image Anal. 2019 Apr;53:64-78. doi: 10.1016/j.media.2019.01.005. Epub 2019 Jan 18.
Deep learning allows for accelerated magnetic resonance image (MRI) reconstruction, thereby shortening measurement times. Rather than using sparsifying transforms, a prerequisite in Compressed Sensing (CS), suitable MRI prior distributions are learned from data. In clinical practice, both the underlying anatomy as well as image acquisition settings vary. For this reason, deep neural networks must be able to reapply what they learn across different measurement conditions. We propose to use Recurrent Inference Machines (RIM) as a framework for accelerated MRI reconstruction. RIMs solve inverse problems in an iterative and recurrent inference procedure by repeatedly reassessing the state of their reconstruction, and subsequently making incremental adjustments to it in accordance with the forward model of accelerated MRI. RIMs learn the inferential process of reconstructing a given signal, which, in combination with the use of internal states as part of their recurrent architecture, makes them less dependent on learning the features pertaining to the source of the signal itself. This gives RIMs a low tendency to overfit, and a high capacity to generalize to unseen types of data. We demonstrate this ability with respect to anatomy by reconstructing brain and knee scans, as well as other MRI acquisition settings, by reconstructing scans of different contrast and resolution, at different field strength, subjected to varying acceleration levels. We show that RIMs outperform CS not only with respect to quality metrics, but also according to a rating given by an experienced neuroradiologist in a double blinded experiment. Finally, we show with qualitative results that our model can be applied to prospectively under-sampled raw data, as acquired by pre-installed acquisition protocols.
深度学习可实现磁共振成像(MRI)的加速重建,从而缩短测量时间。与压缩感知(CS)所需的稀疏变换不同,我们从数据中学习合适的 MRI 先验分布。在临床实践中,潜在的解剖结构以及图像采集设置都存在差异。因此,深度神经网络必须能够在不同的测量条件下重新应用所学内容。我们提出使用递归推理机(RIM)作为加速 MRI 重建的框架。RIM 通过反复重新评估其重建状态,并根据加速 MRI 的正向模型对其进行增量调整,从而在迭代和递归推理过程中解决逆问题。RIM 学习重建给定信号的推理过程,这与将内部状态用作其递归结构的一部分相结合,使得它们不太依赖于学习信号源本身的特征。这使得 RIM 具有较低的过拟合倾向和较高的泛化未见数据类型的能力。我们通过重建不同对比度和分辨率的扫描、在不同场强下、在不同加速水平下对大脑和膝盖扫描以及其他 MRI 采集设置进行重建,来证明这一能力。我们证明 RIM 在质量指标方面不仅优于 CS,而且在经验丰富的神经放射学家在双盲实验中的评分方面也优于 CS。最后,我们通过定性结果表明,我们的模型可以应用于前瞻性欠采样的原始数据,这些数据是通过预先安装的采集协议获取的。