Magnetic resonance imaging (MRI) is an important non-invasive clinical tool that can produce high-resolution and reproducible images. However, a long scanning time is required for high-quality MR images, which leads to exhaustion and discomfort of patients, inducing more artefacts due to voluntary movements of the patients and involuntary physiological movements. To accelerate the scanning process, methods by k-space undersampling and deep learning based reconstruction have been popularised. This work introduced SwinMR, a novel Swin transformer based method for fast MRI reconstruction. The whole network consisted of an input module (IM), a feature extraction module (FEM) and an output module (OM). The IM and OM were 2D convolutional layers and the FEM was composed of a cascaded of residual Swin transformer blocks (RSTBs) and 2D convolutional layers. The RSTB consisted of a series of Swin transformer layers (STLs). The shifted windows multi-head self-attention (W-MSA/SW-MSA) of STL was performed in shifted windows rather than the multi-head self-attention (MSA) of the original transformer in the whole image space. A novel multi-channel loss was proposed by using the sensitivity maps, which was proved to reserve more textures and details. We performed a series of comparative studies and ablation studies in the Calgary-Campinas public brain MR dataset and conducted a downstream segmentation experiment in the Multi-modal Brain Tumour Segmentation Challenge 2017 dataset. The results demonstrate our SwinMR achieved high-quality reconstruction compared with other benchmark methods, and it shows great robustness with different undersampling masks, under noise interruption and on different datasets. The code is publicly available at https://github.com/ayanglab/SwinMR.
翻译:磁共振成像(MRI)是一个重要的非侵入性临床工具,可以产生高分辨率和可复制图像。然而,高质量的光感成像需要很长的扫描时间,这会导致病人疲惫和不适,由于病人的自愿移动和非自愿生理运动而导致更多的人工制品。为了加速扫描过程,K-空间低温采样和深层学习重建的方法已经普及。这项工作引入了SwinMRMR(一种基于Swin变异器的新颖的快速MRIMM(IM)、特征提取模块(FEM)和一个输出模块(OM)。 IM和OM(OM)为2D变幻和不适病人的不适。为了加速扫描过程,K-空间低温采样和深层重建的方法已经由一系列Swin变异变异层层(STLs)组成。STRM(W-MSA/SW-MSA) STL(W-MS-MSA)的改变窗口多层变形自我保存。在移动的窗口窗口中,在变动的窗口中,而不是多层变层变动的变式数据序列中,在已证实的SMRMRMRMRD(A) 演示中演示中演示中演示中演示中, 演示中演示中演示的另一种数据显示的变换式数据是演示中,在演示的变式的变换式的系统。