论文标题

一种未经训练的深度学习方法,用于从基于模型的数据中重建动态磁共振图像

An untrained deep learning method for reconstructing dynamic magnetic resonance images from accelerated model-based data

论文作者

Slavkova, Kalina P., DiCarlo, Julie C., Wadhwa, Viraj, Wu, Chengyue, Virostko, John, Kumar, Sidharth, Yankeelov, Thomas E., Tamir, Jonathan I.

论文摘要

这项工作的目的是实施基于物理的正则化,以此来调整未经训练的深神经网络,以从加速数据中重建MR图像。 ConvdeCoder神经网络接受了基于物理的正则化项训练,该术语结合了描述可变式触发角(VFA)数据的变质梯度回声方程。通过r = {8,12,18,36}的因子回顾了完全采样的VFA K空间数据,并用ConvdeCoder(CD)重建,并具有拟议的正则化(CD+R),局部低阶(LR)重建和压缩的l1型(L1-Wavellet(L1)量化(L1)。在正规化损失的\ emph {argmin}上评估了来自CD+R训练的最终图像;而CD,LR和L1重建是根据地面真实数据最佳选择的。所使用的性能度量是标准化的根平方误差,一致性相关系数(CCC)和结构相似性指数(SSIM)。使用停止条件选择的CD+R重建产生的SSIM与CD(p = 0.47)和LR SSIMS(P = 0.95)相似,并且在R跨R,并且显着高于L1 SSIMS(P = 0.04)。所有R和受试者的CD+R T1映射的CCC值分别大于对应于L1(P = 0.15)和LR(P = 0.13)T1映射的CCC值。对于r> 12(<4.2分钟扫描时间),与CD+R相比,L1和LR T1地图显示出空间精制细节的损失。我们得出的结论是,使用未经训练的神经网络以及基于物理的正则化损失显示了有望,这是确定训练中最佳停止点而不依赖完全采样的地面真相数据的一种衡量标准。

The purpose of this work is to implement physics-based regularization as a stopping condition in tuning an untrained deep neural network for reconstructing MR images from accelerated data. The ConvDecoder neural network was trained with a physics-based regularization term incorporating the spoiled gradient echo equation that describes variable-flip angle (VFA) data. Fully-sampled VFA k-space data were retrospectively accelerated by factors of R={8,12,18,36} and reconstructed with ConvDecoder (CD), ConvDecoder with the proposed regularization (CD+r), locally low-rank (LR) reconstruction, and compressed sensing with L1-wavelet regularization (L1). Final images from CD+r training were evaluated at the \emph{argmin} of the regularization loss; whereas the CD, LR, and L1 reconstructions were chosen optimally based on ground truth data. The performance measures used were the normalized root-mean square error, the concordance correlation coefficient (CCC), and the structural similarity index (SSIM). The CD+r reconstructions, chosen using the stopping condition, yielded SSIMs that were similar to the CD (p=0.47) and LR SSIMs (p=0.95) across R and that were significantly higher than the L1 SSIMs (p=0.04). The CCC values for the CD+r T1 maps across all R and subjects were greater than those corresponding to the L1 (p=0.15) and LR (p=0.13) T1 maps, respectively. For R > 12 (<4.2 minutes scan time), L1 and LR T1 maps exhibit a loss of spatially refined details compared to CD+r. We conclude that the use of an untrained neural network together with a physics-based regularization loss shows promise as a measure for determining the optimal stopping point in training without relying on fully-sampled ground truth data.

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