Joint Alignment and Reconstruction of Multislice Dynamic MRI Using Variational Manifold Learning

@article{Zou2022JointAA,
  title={Joint Alignment and Reconstruction of Multislice Dynamic MRI Using Variational Manifold Learning},
  author={Qing Zou and Abdul Haseeb Ahmed and Prashant Nagpal and Sarv Priya and Rolf F. Schulte and Mathews Jacob},
  journal={2022 IEEE 19th International Symposium on Biomedical Imaging (ISBI)},
  year={2022},
  pages={1-4}
}
Free-breathing cardiac MRI schemes are emerging as competitive alternatives to breath-held cine MRI protocols, enabling applicability to pediatric and other population groups that cannot hold their breath. Because the data from the slices are acquired sequentially, the cardiac/respiratory motion patterns may be different for each slice; current free-breathing approaches perform independent recovery of each slice. In addition to not being able to exploit the inter-slice redundancies, manual… 

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