4.5 Article

Super-resolution musculoskeletal MRI using deep learning

Journal

MAGNETIC RESONANCE IN MEDICINE
Volume 80, Issue 5, Pages 2139-2154

Publisher

WILEY
DOI: 10.1002/mrm.27178

Keywords

deep learning; interpolation; isotropic MRI; musculoskeletal MRI; super-resolution; unsupervised sparsity learning

Funding

  1. National Institutes of Health (NIH) [R01 AR063643, R01 EB002524, K24 AR062068, P41 EB015891]
  2. GE Healthcare
  3. National Institutes of Health, a branch of the Department of Health and Human Services [N01-AR-2-2258, N01-AR-2-2259, N01-AR-2-2260, N01-AR-2-2261, N01-AR-2-2262]
  4. Merck Research Laboratories
  5. Novartis Pharmaceuticals Corporation
  6. Pfizer Inc.
  7. GlaxoSmithKline

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Purpose: To develop a super-resolution technique using convolutional neural networks for generating thin-slice knee MR images from thicker input slices, and compare this method with alternative through-plane interpolation methods. Methods: We implemented a 3D convolutional neural network entitled DeepResolve to learn residual-based transformations between high-resolution thin-slice images and lower-resolution thick-slice images at the same center locations. DeepResolve was trained using 124 double echo in steady-state (DESS) data sets with 0.7-mm slice thickness and tested on 17 patients. Ground-truth images were compared with DeepResolve, clinically used tricubic interpolation, and Fourier interpolation methods, along with state-of-the-art single-image sparse-coding super-resolution. Comparisons were performed using structural similarity, peak SNR, and RMS error image quality metrics for a multitude of thin-slice downsampling factors. Two musculoskeletal radiologists ranked the 3 data sets and reviewed the diagnostic quality of the DeepResolve, tricubic interpolation, and ground-truth images for sharpness, contrast, artifacts, SNR, and overall diagnostic quality. Mann-Whitney U tests evaluated differences among the quantitative image metrics, reader scores, and rankings. Cohen's Kappa (kappa) evaluated interreader reliability. Results: DeepResolve had significantly better structural similarity, peak SNR, and RMS error than tricubic interpolation, Fourier interpolation, and sparse-coding super-resolution for all downsampling factors (p < .05, except 4 x and 8 x sparse-coding super-resolution downsampling factors). In the reader study, DeepResolve significantly outperformed (p < .01) tricubic interpolation in all image quality categories and overall image ranking. Both readers had substantial scoring agreement (kappa = 0.73). Conclusion: DeepResolve was capable of resolving high-resolution thin-slice knee MRI from lower-resolution thicker slices, achieving superior quantitative and qualitative diagnostic performance to both conventionally used and state-of-the-art methods.

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