Unsupervised Deep Learning for MR Angiography with Flexible Temporal Resolution
Eunju Cha,
Hyungjin Chung,
Eung Yeop Kim
et al.
Abstract: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-off. Although many deep learning approach… Show more
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