Your browser doesn't support javascript.
loading
On retrospective k-space subsampling schemes for deep MRI reconstruction.
Yiasemis, George; Sánchez, Clara I; Sonke, Jan-Jakob; Teuwen, Jonas.
Affiliation
  • Yiasemis G; AI for Oncology, Netherlands Cancer Institute, Plesmanlaan 121, Amsterdam 1066 CX, the Netherlands; University of Amsterdam, Science Park 904, Amsterdam 1098 XH, the Netherlands. Electronic address: g.yiasemis@nki.nl.
  • Sánchez CI; University of Amsterdam, Science Park 904, Amsterdam 1098 XH, the Netherlands.
  • Sonke JJ; AI for Oncology, Netherlands Cancer Institute, Plesmanlaan 121, Amsterdam 1066 CX, the Netherlands; University of Amsterdam, Science Park 904, Amsterdam 1098 XH, the Netherlands.
  • Teuwen J; AI for Oncology, Netherlands Cancer Institute, Plesmanlaan 121, Amsterdam 1066 CX, the Netherlands; University of Amsterdam, Science Park 904, Amsterdam 1098 XH, the Netherlands; Radboud University Medical Center, Department of Medical Imaging, Geert Grooteplein Zuid 10, Nijmegen 6525 GA, the Nether
Magn Reson Imaging ; 107: 33-46, 2024 Apr.
Article de En | MEDLINE | ID: mdl-38184093
ABSTRACT
Acquiring fully-sampled MRI k-space data is time-consuming, and collecting accelerated data can reduce the acquisition time. Employing 2D Cartesian-rectilinear subsampling schemes is a conventional approach for accelerated acquisitions; however, this often results in imprecise reconstructions, even with the use of Deep Learning (DL), especially at high acceleration factors. Non-rectilinear or non-Cartesian trajectories can be implemented in MRI scanners as alternative subsampling options. This work investigates the impact of the k-space subsampling scheme on the quality of reconstructed accelerated MRI measurements produced by trained DL models. The Recurrent Variational Network (RecurrentVarNet) was used as the DL-based MRI-reconstruction architecture. Cartesian, fully-sampled multi-coil k-space measurements from three datasets were retrospectively subsampled with different accelerations using eight distinct subsampling schemes four Cartesian-rectilinear, two Cartesian non-rectilinear, and two non-Cartesian. Experiments were conducted in two frameworks scheme-specific, where a distinct model was trained and evaluated for each dataset-subsampling scheme pair, and multi-scheme, where for each dataset a single model was trained on data randomly subsampled by any of the eight schemes and evaluated on data subsampled by all schemes. In both frameworks, RecurrentVarNets trained and evaluated on non-rectilinearly subsampled data demonstrated superior performance, particularly for high accelerations. In the multi-scheme setting, reconstruction performance on rectilinearly subsampled data improved when compared to the scheme-specific experiments. Our findings demonstrate the potential for using DL-based methods, trained on non-rectilinearly subsampled measurements, to optimize scan time and image quality.
Sujet(s)
Mots clés

Texte intégral: 1 Collection: 01-internacional Base de données: MEDLINE Sujet principal: Algorithmes / Imagerie par résonance magnétique Type d'étude: Observational_studies / Prognostic_studies Langue: En Journal: Magn Reson Imaging Année: 2024 Type de document: Article Pays de publication: Pays-Bas

Texte intégral: 1 Collection: 01-internacional Base de données: MEDLINE Sujet principal: Algorithmes / Imagerie par résonance magnétique Type d'étude: Observational_studies / Prognostic_studies Langue: En Journal: Magn Reson Imaging Année: 2024 Type de document: Article Pays de publication: Pays-Bas