论文标题

用侧信息引导的归一化采样了采样的MRI重建

Undersampled MRI Reconstruction with Side Information-Guided Normalisation

论文作者

Liu, Xinwen, Wang, Jing, Peng, Cheng, Chandra, Shekhar S., Liu, Feng, Zhou, S. Kevin

论文摘要

磁共振(MR)图像基于不同的获取协议,视图,制造商,扫描参数等因素表现出各种对比度和外观。这种通常与外观相关的侧面信息影响了基于深度学习的深度采样磁共振成像(MRI)重建框架,但在主要的现有工作的主要成本中被忽略了。在本文中,我们研究了在卷积神经网络(CNN)中使用等归一化参数之类的侧面信息以改善采样的MRI重建。具体而言,提出了仅包含少数图层的侧信息引导的归一化模块,以有效地编码侧面信息并输出归一化参数。我们研究了这种模块对两个流行的重建体系结构D5C5和OUCR的有效性。在各种加速度下,大脑和膝盖图像的实验结果表明,所提出的方法在其相应的基线体系结构上有明显的边缘改进。

Magnetic resonance (MR) images exhibit various contrasts and appearances based on factors such as different acquisition protocols, views, manufacturers, scanning parameters, etc. This generally accessible appearance-related side information affects deep learning-based undersampled magnetic resonance imaging (MRI) reconstruction frameworks, but has been overlooked in the majority of current works. In this paper, we investigate the use of such side information as normalisation parameters in a convolutional neural network (CNN) to improve undersampled MRI reconstruction. Specifically, a Side Information-Guided Normalisation (SIGN) module, containing only few layers, is proposed to efficiently encode the side information and output the normalisation parameters. We examine the effectiveness of such a module on two popular reconstruction architectures, D5C5 and OUCR. The experimental results on both brain and knee images under various acceleration rates demonstrate that the proposed method improves on its corresponding baseline architectures with a significant margin.

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