Purpose: Iterative Convolutional Neural Networks (CNNs) which resemble unrolled learned iterative schemes have shown to consistently deliver state-of-the-art results for image reconstruction problems across different imaging modalities. However, because these methodes include the forward model in the architecture, their applicability is often restricted to either relatively small reconstruction problems or to problems with operators which are computationally cheap to compute. As a consequence, they have so far not been applied to dynamic non-Cartesian multi-coil reconstruction problems. Methods: In this work, we propose a CNN-architecture for image reconstruction of accelerated 2D radial cine MRI with multiple receiver coils. The network is based on a computationally light CNN-component and a subsequent conjugate gradient (CG) method which can be jointly trained end-to-end using an efficient training strategy. We investigate the proposed training-strategy and compare our method to other well-known reconstruction techniques with learned and non-learned regularization methods. Results: Our proposed method outperforms all other methods based on non-learned regularization. Further, it performs similar or better than a CNN-based method employing a 3D U-Net and a method using adaptive dictionary learning. In addition, we empirically demonstrate that even by training the network with only iteration, it is possible to increase the length of the network at test time and further improve the results. Conclusions: End-to-end training allows to highly reduce the number of trainable parameters of and stabilize the reconstruction network. Further, because it is possible to change the length of the network at test time, the need to find a compromise between the complexity of the CNN-block and the number of iterations in each CG-block becomes irrelevant.


翻译:目的 : 循环式的革命神经网络(CNNs) 类似未更新的已学习的迭代计划,它显示,通过不同成像模式,不断为图像重建问题提供最先进的图像重建结果。然而,由于这些方法包括建筑中的前方模型,其适用性往往局限于相对较小的重建问题或计算成本低廉的操作者的问题。因此,迄今为止,它们尚未适用于动态的非卡泰西亚多油气重建问题。方法 : 在这项工作中,我们提出一个CNN- 结构, 用于以多个接收器网络的网络网络进行加速的2D radal Cine MRI 图像重建。由于这些方法基于计算式的光亮CNNC- 组件和随后的共振梯度梯度(CG) 方法, 而这些方法可以使用高效的培训战略来联合培训端到端端。 我们调查了拟议的培训策略, 并将我们的方法与其他知名的重建技术与进一步学习和不理解的标准化方法相比较。 结果: 我们提出的方法比其他所有基于不吸取的时间正规化的方法都比其他方法。 。

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