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首页> 外文期刊>IEEE Transactions on Medical Imaging >Unpaired Training of Deep Learning tMRA for Flexible Spatio-Temporal Resolution
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Unpaired Training of Deep Learning tMRA for Flexible Spatio-Temporal Resolution

机译:深度学习TMRA的未配对培训,用于灵活的时空分辨率

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Time-resolved MR angiography (tMRA) has been widely used for dynamic contrast enhanced MRI (DCE-MRI) due to its highly accelerated acquisition. In tMRA, the periphery of the k-space data are sparsely sampled so that neighbouring frames can be merged to construct one temporal frame. However, this view-sharing scheme fundamentally limits the temporal resolution, and it is not possible to change the view-sharing number to achieve different spatio-temporal resolution trade-offs. Althoughmany deep learning approaches have been recently proposed for MR reconstruction from sparse samples, the existing approaches usually require matched fully sampled k-space reference data for supervised training, which is not suitable for tMRA due to the lack of high spatio-temporal resolution ground-truth images. To address this problem, here we propose a novel unpaired training scheme for deep learning using optimal transport driven cycle-consistent generative adversarial network (cycleGAN). In contrast to the conventional cycleGAN with two pairs of generator and discriminator, the new architecture requires just a single pair of generator and discriminator, whichmakes the trainingmuch simpler but still improves the performance. Reconstruction results using in vivo tMRA and simulation data set confirm that the proposed method can immediately generate high quality reconstruction results at various choices of view-sharingnumbers, allowingus to exploit better trade-off between spatial and temporal resolution in time-resolved MR angiography.
机译:由于其高度加速的收购,时间分辨的MR血管造影(TMRA)已被广泛用于动态对比增强MRI(DCE-MRI)。在TMRA中,k空间数据的周边被稀疏地采样,使得可以合并相邻帧以构建一个时间帧。但是,此视图共享方案从根本上限制了时间分辨率,并且无法更改视图共享号码以实现不同的时空分辨率权衡。尽管最近提出了稀疏样本的MR重建的深度学习方法,现有方法通常需要匹配的完全采样的K空间参考数据进行监督培训,这是由于缺乏高空时间分辨率的地面而不适合TMRA - 真理图像。为了解决这个问题,在这里,我们提出了一种使用最佳运输驱动的周期一致的生成对冲网络(Consforgan)的深度学习的新颖未配对培训方案。与具有两对发电机和鉴别器的传统传统的Cycleangan相比,新架构只需要一对发电机和鉴别器,这将培训仪更简单但仍然提高了性能。使用体内TMRA和仿真数据集的重建结果证实了所提出的方法可以立即产生高质量的重建结果,在视图 - 共享Numbers的各种选择中,允许利用空间和时间分辨率在时间分辨的MR血管造影之间进行更好的折衷。

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