Rapid whole-heart CMR with single volume super-resolution

Three-dimensional, whole heart, balanced steady state free precession (WH-bSSFP) sequences provide delineation of intra-cardiac and vascular anatomy. However, they have long acquisition times. Here, we propose significant speed-ups using a deep-learning single volume super-resolution reconstruction,...

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Veröffentlicht in:Journal of cardiovascular magnetic resonance 2020-08, Vol.22 (1), p.56-56, Article 56
Hauptverfasser: Steeden, Jennifer A, Quail, Michael, Gotschy, Alexander, Mortensen, Kristian H, Hauptmann, Andreas, Arridge, Simon, Jones, Rodney, Muthurangu, Vivek
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Sprache:eng
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Zusammenfassung:Three-dimensional, whole heart, balanced steady state free precession (WH-bSSFP) sequences provide delineation of intra-cardiac and vascular anatomy. However, they have long acquisition times. Here, we propose significant speed-ups using a deep-learning single volume super-resolution reconstruction, to recover high-resolution features from rapidly acquired low-resolution WH-bSSFP images. A 3D residual U-Net was trained using synthetic data, created from a library of 500 high-resolution WH-bSSFP images by simulating 50% slice resolution and 50% phase resolution. The trained network was validated with 25 synthetic test data sets. Additionally, prospective low-resolution data and high-resolution data were acquired in 40 patients. In the prospective data, vessel diameters, quantitative and qualitative image quality, and diagnostic scoring was compared between the low-resolution, super-resolution and reference high-resolution WH-bSSFP data. The synthetic test data showed a significant increase in image quality of the low-resolution images after super-resolution reconstruction. Prospectively acquired low-resolution data was acquired ~× 3 faster than the prospective high-resolution data (173 s vs 488 s). Super-resolution reconstruction of the low-resolution data took
ISSN:1097-6647
1532-429X
DOI:10.1186/s12968-020-00651-x