SOUP-GAN: Super-Resolution MRI Using Generative Adversarial Networks

  • Kuan Zhang
    Department of Radiology, Mayo Clinic, Rochester, MN 55905, USA
  • Haoji Hu
    Department of Computer Science & Engineering, The University of Minnesota, Minneapolis, MN 55455, USA
  • Kenneth Philbrick
    Department of Radiology, Mayo Clinic, Rochester, MN 55905, USA
  • Gian Marco Conte
    Department of Radiology, Mayo Clinic, Rochester, MN 55905, USA
  • Joseph D. Sobek
    Department of Radiology, Mayo Clinic, Rochester, MN 55905, USA
  • Pouria Rouzrokh
    Department of Radiology, Mayo Clinic, Rochester, MN 55905, USA
  • Bradley J. Erickson
    Department of Radiology, Mayo Clinic, Rochester, MN 55905, USA

説明

<jats:p>There is a growing demand for high-resolution (HR) medical images for both clinical and research applications. Image quality is inevitably traded off with acquisition time, which in turn impacts patient comfort, examination costs, dose, and motion-induced artifacts. For many image-based tasks, increasing the apparent spatial resolution in the perpendicular plane to produce multi-planar reformats or 3D images is commonly used. Single-image super-resolution (SR) is a promising technique to provide HR images based on deep learning to increase the resolution of a 2D image, but there are few reports on 3D SR. Further, perceptual loss is proposed in the literature to better capture the textural details and edges versus pixel-wise loss functions, by comparing the semantic distances in the high-dimensional feature space of a pre-trained 2D network (e.g., VGG). However, it is not clear how one should generalize it to 3D medical images, and the attendant implications are unclear. In this paper, we propose a framework called SOUP-GAN: Super-resolution Optimized Using Perceptual-tuned Generative Adversarial Network (GAN), in order to produce thinner slices (e.g., higher resolution in the ‘Z’ plane) with anti-aliasing and deblurring. The proposed method outperforms other conventional resolution-enhancement methods and previous SR work on medical images based on both qualitative and quantitative comparisons. Moreover, we examine the model in terms of its generalization for arbitrarily user-selected SR ratios and imaging modalities. Our model shows promise as a novel 3D SR interpolation technique, providing potential applications for both clinical and research applications.</jats:p>

収録刊行物

  • Tomography

    Tomography 8 (2), 905-919, 2022-03-24

    MDPI AG

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