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MedSRGAN: medical images super-resolution using generative adversarial networks

机译:Medsargran:医学图像超级分辨率使用生成对抗网络

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摘要

Super-resolution (SR) in medical imaging is an emerging application in medical imaging due to the needs of high quality images acquired with limited radiation dose, such as low dose Computer Tomography (CT), low field magnetic resonance imaging (MRI). However, because of its complexity and higher visual requirements of medical images, SR is still a challenging task in medical imaging. In this study, we developed a deep learning based method called Medical Images SR using Generative Adversarial Networks (MedSRGAN) for SR in medical imaging. A novel convolutional neural network, Residual Whole Map Attention Network (RWMAN) was developed as the generator network for our MedSRGAN in extracting the useful information through different channels, as well as paying more attention on meaningful regions. In addition, a weighted sum of content loss, adversarial loss, and adversarial feature loss were fused to form a multi-task loss function during the MedSRGAN training. 242 thoracic CT scans and 110 brain MRI scans were collected for training and evaluation of MedSRGAN. The results showed that MedSRGAN not only preserves more texture details but also generates more realistic patterns on reconstructed SR images. A mean opinion score (MOS) test on CT slices scored by five experienced radiologists demonstrates the efficiency of our methods.
机译:医学成像中的超分辨率(SR)是由于具有限制辐射剂量的高质量图像的需要,例如低剂量计算机断层扫描(CT),低场磁共振成像(MRI),所以在医学成像中的新兴应用。然而,由于其复杂性和医学图像的可视性要求,SR在医学成像中仍然是一个具有挑战性的任务。在这项研究中,我们开发了一种基于深入的学习方法,称为医学图像SR使用生成的对冲网络(Medsarrgan)在医学成像中进行SR。一种小说卷积神经网络,残余整形地图注意网络(Rwman)被开发为我们的Medsargan通过不同渠道提取有用信息的发电机网络,以及更多地关注有意义的地区。此外,在Medsorgan训练期间,融合了含量损失,越野丧失和对抗特征损失的加权和融合功能损失,以形成多任务损失功能。 242胸CT扫描和110脑MRI扫描被收集用于培训和评估Medsargan。结果表明,MedsRAN不仅保留了更多纹理细节,还可以在重建的SR图像上产生更现实的模式。由五个经验丰富的放射科医生评分的CT切片的平均意见评分(MOS)测试表明了我们的方法的效率。

著录项

  • 来源
    《Multimedia Tools and Applications》 |2020年第30期|21815-21840|共26页
  • 作者单位

    School of Data and Computer Science Sun Yat-sen University Guangzhou China;

    School of Data and Computer Science Sun Yat-sen University Guangzhou China;

    School of Data and Computer Science Sun Yat-sen University Guangzhou China;

    Department of Radiology University of Michigan Ann Arbor MI. USA;

    Department of Radiology The Fifth Affiliated Hospital of Sun Yat-scn University Zhuhai China;

    Department of Radiology The Fifth Affiliated Hospital of Sun Yat-scn University Zhuhai China;

    Department of Radiology The Fifth Affiliated Hospital of Sun Yat-scn University Zhuhai China;

    Department of Radiology The Fifth Affiliated Hospital of Sun Yat-scn University Zhuhai China;

    Department of Radiology The Fifth Affiliated Hospital of Sun Yat-scn University Zhuhai China;

    School of Data and Computer Science Sun Yat-sen University Guangzhou China;

    School of Data and Computer Science Sun Yat-sen University Guangzhou China Guangdong Province Key Laboratory of Computational Science Guangzhou China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Medical images; Super-resolution (SR); Deep learning; Generative adversarial networks (GAN);

    机译:医学图像;超级分辨率(SR);深度学习;生成对抗网络(GaN);

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