论文标题
基于梯度的T1帮助和快速MRI重建的双重域网络集合的深层级联
A deep cascade of ensemble of dual domain networks with gradient-based T1 assistance and perceptual refinement for fast MRI reconstruction
论文作者
论文摘要
深度学习网络在快速磁共振成像(MRI)重建中显示出令人鼓舞的结果。在我们的工作中,我们开发了深层网络,以进一步提高重建的定量和感知质量。首先,我们提出了Reconsynergynet(RSN),该网络结合了在图像和傅立叶域上独立运行的互补益处。对于单线圈采集,我们引入了深层级联RSN(DC-RSN),这是一个与数据保真度(DF)单位交织在一起的RSN块的级联。其次,我们通过协助T1加权成像(T1WI)的帮助,这是T2加权成像(T2WI)的DC-RSN的结构恢复,这是一个短时间采集时间的序列。通过日志功能(高尔夫)融合的梯度为DC-RSN提供T1援助。此外,我们提出知觉改进网络(PRN)以完善重建以获得更好的视觉信息保真度(VIF),这是一种与放射科医生对图像质量高度相关的指标。最后,对于多线圈采集,我们提出了可变拆分RSN(VS-RSN),深层块,每个块,包含RSN,多圈DF单元和加权平均模块。我们广泛验证了单线和多线圈采集的模型DC-RSN和VS-RSN,并报告最先进的性能。对于FastMRI,我们获得的SSIM为0.768、0.923、0.878,单线圈-4X,多螺旋-4X和多圈8X的SSIM。我们还进行了实验,以证明基于高尔夫的T1援助和PRN的功效。
Deep learning networks have shown promising results in fast magnetic resonance imaging (MRI) reconstruction. In our work, we develop deep networks to further improve the quantitative and the perceptual quality of reconstruction. To begin with, we propose reconsynergynet (RSN), a network that combines the complementary benefits of independently operating on both the image and the Fourier domain. For a single-coil acquisition, we introduce deep cascade RSN (DC-RSN), a cascade of RSN blocks interleaved with data fidelity (DF) units. Secondly, we improve the structure recovery of DC-RSN for T2 weighted Imaging (T2WI) through assistance of T1 weighted imaging (T1WI), a sequence with short acquisition time. T1 assistance is provided to DC-RSN through a gradient of log feature (GOLF) fusion. Furthermore, we propose perceptual refinement network (PRN) to refine the reconstructions for better visual information fidelity (VIF), a metric highly correlated to radiologists opinion on the image quality. Lastly, for multi-coil acquisition, we propose variable splitting RSN (VS-RSN), a deep cascade of blocks, each block containing RSN, multi-coil DF unit, and a weighted average module. We extensively validate our models DC-RSN and VS-RSN for single-coil and multi-coil acquisitions and report the state-of-the-art performance. We obtain a SSIM of 0.768, 0.923, 0.878 for knee single-coil-4x, multi-coil-4x, and multi-coil-8x in fastMRI. We also conduct experiments to demonstrate the efficacy of GOLF based T1 assistance and PRN.