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Distance guided generative adversarial network for explainable medical image classifications

  • Xiangyu Xiong
  • , Yue Sun
  • , Xiaohong Liu
  • , Wei Ke
  • , Chan Tong Lam
  • , Jiangang Chen
  • , Mingfeng Jiang
  • , Mingwei Wang
  • , Hui Xie
  • , Tong Tong
  • , Qinquan Gao
  • , Hao Chen
  • , Tao Tan
  • Macao Polytechnic University
  • Shanghai Jiao Tong University
  • East China Normal University
  • Ministry of Education of China
  • Zhejiang Sci-Tech University
  • Affiliated Hospital of Hangzhou Normal University
  • Hangzhou Normal University
  • Xiangnan University
  • Fuzhou University
  • Ltd.

研究成果: Article同行評審

3 引文 斯高帕斯(Scopus)

摘要

Despite the potential benefits of data augmentation for mitigating data insufficiency, traditional augmentation methods primarily rely on prior intra-domain knowledge. On the other hand, advanced generative adversarial networks (GANs) generate inter-domain samples with limited variety. These previous methods make limited contributions to describing the decision boundaries for binary classification. In this paper, we propose a distance-guided GAN (DisGAN) that controls the variation degrees of generated samples in the hyperplane space. Specifically, we instantiate the idea of DisGAN by combining two ways. The first way is vertical distance GAN (VerDisGAN) where the inter-domain generation is conditioned on the vertical distances. The second way is horizontal distance GAN (HorDisGAN) where the intra-domain generation is conditioned on the horizontal distances. Furthermore, VerDisGAN can produce the class-specific regions by mapping the source images to the hyperplane. Experimental results show that DisGAN consistently outperforms the GAN-based augmentation methods with explainable binary classification. The proposed method can apply to different classification architectures and has the potential to extend to multi-class classification. We provide the code in https://github.com/yXiangXiong/DisGAN.

原文English
文章編號102444
期刊Computerized Medical Imaging and Graphics
118
DOIs
出版狀態Published - 12月 2024

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