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Deep Learning Single-Frame and Multiframe Super-Resolution for Cardiac MRI.
Masutani, Evan M; Bahrami, Naeim; Hsiao, Albert.
Afiliação
  • Masutani EM; From the Departments of Bioengineering (E.M.M.) and Radiology (A.H.), University of California, San Diego, 9300 Campus Point Dr, MC 0841, San Diego, CA 92037-0841; and GE Healthcare, Menlo Park, Calif (N.B.).
  • Bahrami N; From the Departments of Bioengineering (E.M.M.) and Radiology (A.H.), University of California, San Diego, 9300 Campus Point Dr, MC 0841, San Diego, CA 92037-0841; and GE Healthcare, Menlo Park, Calif (N.B.).
  • Hsiao A; From the Departments of Bioengineering (E.M.M.) and Radiology (A.H.), University of California, San Diego, 9300 Campus Point Dr, MC 0841, San Diego, CA 92037-0841; and GE Healthcare, Menlo Park, Calif (N.B.).
Radiology ; 295(3): 552-561, 2020 06.
Article em En | MEDLINE | ID: mdl-32286192
ABSTRACT
Background Cardiac MRI is limited by long acquisition times, yet faster acquisition of smaller-matrix images reduces spatial detail. Deep learning (DL) might enable both faster acquisition and higher spatial detail via super-resolution. Purpose To explore the feasibility of using DL to enhance spatial detail from small-matrix MRI acquisitions and evaluate its performance against that of conventional image upscaling methods. Materials and Methods Short-axis cine cardiac MRI examinations performed between January 2012 and December 2018 at one institution were retrospectively collected for algorithm development and testing. Convolutional neural networks (CNNs), a form of DL, were trained to perform super resolution in image space by using synthetically generated low-resolution data. There were 70%, 20%, and 10% of examinations allocated to training, validation, and test sets, respectively. CNNs were compared against bicubic interpolation and Fourier-based zero padding by calculating the structural similarity index (SSIM) between high-resolution ground truth and each upscaling method. Means and standard deviations of the SSIM were reported, and statistical significance was determined by using the Wilcoxon signed-rank test. For evaluation of clinical performance, left ventricular volumes were measured, and statistical significance was determined by using the paired Student t test. Results For CNN training and retrospective analysis, 400 MRI scans from 367 patients (mean age, 48 years ± 18; 214 men) were included. All CNNs outperformed zero padding and bicubic interpolation at upsampling factors from two to 64 (P < .001). CNNs outperformed zero padding on more than 99.2% of slices (9828 of 9907). In addition, 10 patients (mean age, 51 years ± 22; seven men) were prospectively recruited for super-resolution MRI. Super-resolved low-resolution images yielded left ventricular volumes comparable to those from full-resolution images (P > .05), and super-resolved full-resolution images appeared to further enhance anatomic detail. Conclusion Deep learning outperformed conventional upscaling methods and recovered high-frequency spatial information. Although training was performed only on short-axis cardiac MRI examinations, the proposed strategy appeared to improve quality in other imaging planes. © RSNA, 2020 Online supplemental material is available for this article.
Assuntos

Texto completo: 1 Base de dados: MEDLINE Assunto principal: Aumento da Imagem / Imagem Cinética por Ressonância Magnética / Aprendizado Profundo / Coração Idioma: En Ano de publicação: 2020 Tipo de documento: Article

Texto completo: 1 Base de dados: MEDLINE Assunto principal: Aumento da Imagem / Imagem Cinética por Ressonância Magnética / Aprendizado Profundo / Coração Idioma: En Ano de publicação: 2020 Tipo de documento: Article