论文标题
平行成像和压缩感测MRI重建的深度学习方法
A Deep Learning Approach for Parallel Imaging and Compressed Sensing MRI Reconstruction
论文作者
论文摘要
并行成像通过使用接收器线圈来获取其他灵敏度信息来加速MRI数据的获取,从而减少相位编码步骤。由于数据要求少于平行成像,因此压缩感测磁共振成像(CS-MRI)在医学成像领域已越来越受欢迎。并行成像和压缩传感(CS)都减少了K空间中捕获的数据量,从而加快了传统的MRI获取。由于采集时间与样本计数成反比,因此从减少的k空间样本形成图像会导致收购更快,但具有混乱的伪像。为了消除重建的图像,本文提出了一种新型的生成对抗网络(GAN),称为Recgan-gr,该网络受到多模式损失的监督。与现有的GAN网络相比,我们提出的方法介绍了一个新颖的发电机网络Remu-NET,该网络与双域损耗函数(例如加权幅度和相位损耗函数)以及基于平行成像的损失,Grappa一致性损失。作为改进学习,提出了K空间校正块,以使GAN网络自我抗性以生成不必要的数据,从而加快了重建过程。全面的结果表明,拟议的Recgan-gr不仅比基于GAN的方法改善了PSNR,而且还通过2 dB的方法比传统的最先进的CNN方法在文献中可用于单线圈数据。拟议的工作显着提高了低保留数据的图像质量,从而更快地获取了五到十倍。
Parallel imaging accelerates MRI data acquisition by acquiring additional sensitivity information with an array of receiver coils, resulting in fewer phase encoding steps. Because of fewer data requirements than parallel imaging, compressed sensing magnetic resonance imaging (CS-MRI) has gained popularity in the field of medical imaging. Parallel imaging and compressed sensing (CS) both reduce the amount of data captured in the k-space, which speeds up traditional MRI acquisition. As acquisition time is inversely proportional to sample count, forming an image from reduced k-space samples results in faster acquisition but with aliasing artifacts. For de-aliasing the reconstructed image, this paper proposes a novel Generative Adversarial Network (GAN) called RECGAN-GR that is supervised with multi-modal losses. In comparison to existing GAN networks, our proposed method introduces a novel generator network, RemU-Net, which is integrated with dual-domain loss functions such as weighted magnitude and phase loss functions, as well as parallel imaging-based loss, GRAPPA consistency loss. As refinement learning, a k-space correction block is proposed to make the GAN network self-resistant to generating unnecessary data, which speeds up the reconstruction process. Comprehensive results show that the proposed RECGAN-GR not only improves the PSNR by 4 dB over GAN-based methods but also by 2 dB over conventional state-of-the-art CNN methods available in the literature for single-coil data. The proposed work significantly improves image quality for low-retained data, resulting in five to ten times faster acquisition.