Data-efficient Bayesian learning for radial dynamic MR reconstruction.

Medical physics(2023)

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Abstract
Using an XT-YT U-Net, we were able to quantify uncertainties of a physics-informed NN for a high-dimensional and computationally demanding 2D multi-coil dynamic MR imaging problem. In addition to improving the image quality, embedding the acquisition model in the network architecture decreased the reconstruction uncertainties as well as quantitatively improved the UQ. The UQ provides additional information to assess the performance of different network approaches.
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Key words
cine MRI, Deep Learning, uncertainty quantification
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