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An untrained deep learning method for reconstructing dynamic MR images from accelerated model-based data.
Slavkova, Kalina P; DiCarlo, Julie C; Wadhwa, Viraj; Kumar, Sidharth; Wu, Chengyue; Virostko, John; Yankeelov, Thomas E; Tamir, Jonathan I.
  • Slavkova KP; Department of Physics, The University of Texas, Austin, Texas, USA.
  • DiCarlo JC; The Oden Institute for Computational Engineering and Sciences, The University of Texas, Austin, Texas, USA.
  • Wadhwa V; Livestrong Cancer Institutes, Dell Medical School, The University of Texas, Austin, Texas, USA.
  • Kumar S; Chandra Family Department of Electrical and Computer Engineering, The University of Texas, Austin, Texas, USA.
  • Wu C; Chandra Family Department of Electrical and Computer Engineering, The University of Texas, Austin, Texas, USA.
  • Virostko J; The Oden Institute for Computational Engineering and Sciences, The University of Texas, Austin, Texas, USA.
  • Yankeelov TE; The Oden Institute for Computational Engineering and Sciences, The University of Texas, Austin, Texas, USA.
  • Tamir JI; Livestrong Cancer Institutes, Dell Medical School, The University of Texas, Austin, Texas, USA.
Magn Reson Med ; 89(4): 1617-1633, 2023 04.
Article en En | MEDLINE | ID: mdl-36468624
ABSTRACT

PURPOSE:

To implement physics-based regularization as a stopping condition in tuning an untrained deep neural network for reconstructing MR images from accelerated data.

METHODS:

The ConvDecoder (CD) neural network was trained with a physics-based regularization term incorporating the spoiled gradient echo equation that describes variable-flip angle data. Fully-sampled variable-flip angle k-space data were retrospectively accelerated by factors of R = {8, 12, 18, 36} and reconstructed with CD, CD with the proposed regularization (CD + r), locally low-rank (LR) reconstruction, and compressed sensing with L1-wavelet regularization (L1). Final images from CD + r training were evaluated at the "argmin" of the regularization loss; whereas the CD, LR, and L1 reconstructions were chosen optimally based on ground truth data. The performance measures used were the normalized RMS error, the concordance correlation coefficient, and the structural similarity index.

RESULTS:

The CD + r reconstructions, chosen using the stopping condition, yielded structural similarity indexs that were similar to the CD (p = 0.47) and LR structural similarity indexs (p = 0.95) across R and that were significantly higher than the L1 structural similarity indexs (p = 0.04). The concordance correlation coefficient values for the CD + r T1 maps across all R and subjects were greater than those corresponding to the L1 (p = 0.15) and LR (p = 0.13) T1 maps, respectively. For R ≥ 12 (≤4.2 min scan time), L1 and LR T1 maps exhibit a loss of spatially refined details compared to CD + r.

CONCLUSION:

The use of an untrained neural network together with a physics-based regularization loss shows promise as a measure for determining the optimal stopping point in training without relying on fully-sampled ground truth data.
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Texto completo: 1 Banco de datos: MEDLINE Asunto principal: Procesamiento de Imagen Asistido por Computador / Aprendizaje Profundo Tipo de estudio: Prognostic_studies Límite: Humans Idioma: En Año: 2023 Tipo del documento: Article

Texto completo: 1 Banco de datos: MEDLINE Asunto principal: Procesamiento de Imagen Asistido por Computador / Aprendizaje Profundo Tipo de estudio: Prognostic_studies Límite: Humans Idioma: En Año: 2023 Tipo del documento: Article