Supervised deep learning has swiftly become a workhorse for accelerated MRI in recent years, offering state-of-the-art performance in image reconstruction from undersampled acquisitions. Training deep supervised models requires large datasets of undersampled and fully-sampled acquisitions typically from a matching set of subjects. Given scarce access to large medical datasets, this limitation has sparked interest in unsupervised methods that reduce reliance on fully-sampled ground-truth data. A common framework is based on the deep image prior, where network-driven regularization is enforced directly during inference on undersampled acquisitions. Yet, canonical convolutional architectures are suboptimal in capturing long-range relationships, and randomly initialized networks may hamper convergence. To address these limitations, here we introduce a novel unsupervised MRI reconstruction method based on zero-Shot Learned Adversarial TransformERs (SLATER). SLATER embodies a deep adversarial network with cross-attention transformer blocks to map noise and latent variables onto MR images. This unconditional network learns a high-quality MRI prior in a self-supervised encoding task. A zero-shot reconstruction is performed on undersampled test data, where inference is performed by optimizing network parameters, latent and noise variables to ensure maximal consistency to multi-coil MRI data. Comprehensive experiments on brain MRI datasets clearly demonstrate the superior performance of SLATER against several state-of-the-art unsupervised methods.
翻译:近年来,受监督的深层学习迅速成为加速磁共振举措的一匹工作马,它提供了从未得到充分采样的收购中重建图像的最先进业绩。培训受监督的模式要求从一组相匹配的主题中通常从一组相匹配的主题获得大量未充分抽样和完全抽样的收购数据集。鉴于获得大型医疗数据集的机会很少,这一限制激发了人们对未经监督的方法的兴趣,这些方法减少了对充分采样的地面真伪数据的依赖。一个共同框架基于之前的深层图像,在对未充分采样的收购进行推断时直接实施了网络驱动的正规化。然而,班级高级革命结构在获取远程关系方面并不理想,随机初始化的网络可能阻碍趋同。为了解决这些局限性,我们在这里采用了一种新的不受监督的MRI重建方法,这些方法基于零休克会的地面对流变异数据(SLATER)。 SLTER体现了一个深度对抗网络,与交叉感应变换的模块,用来将噪音和潜在变量映射成MRM图像。这个无条件的网络在获取远端的高级精度的精度磁性磁性磁率模型,在ARI上学习高精度的MRI,而先测试的M-ROVI在一个测试的模型中进行自我升级的模型实验性变化的模型中进行。