A medical image classification method based on self-regularized adversarial learning

被引:0
|
作者
Fan, Zong [1 ]
Zhang, Xiaohui [1 ]
Ruan, Su [2 ]
Thorstad, Wade [3 ]
Gay, Hiram [3 ]
Song, Pengfei [4 ]
Wang, Xiaowei [5 ]
Li, Hua [1 ,3 ,6 ]
机构
[1] Univ Illinois, Dept Bioengn, Champaign, IL USA
[2] Univ Rouen, EA 4108, Lab LITIS, Equipe Quantif, Rouen, France
[3] Washington Univ St Louis, Dept Radiat Oncol, St Louis, MO 63130 USA
[4] Univ Illinois, Dept Elect & Comp Engn, Champaign, IL USA
[5] Univ Illinois, Dept Pharmacol & Bioengn, Chicago, IL USA
[6] Canc Ctr Illinois, Urbana, IL USA
关键词
adversarial learning; deep learning; medical image classification;
D O I
10.1002/mp.17320
中图分类号
R8 [特种医学]; R445 [影像诊断学];
学科分类号
1002 ; 100207 ; 1009 ;
摘要
BackgroundDeep learning (DL) techniques have been extensively applied in medical image classification. The unique characteristics of medical imaging data present challenges, including small labeled datasets, severely imbalanced class distribution, and significant variations in imaging quality. Recently, generative adversarial network (GAN)-based classification methods have gained attention for their ability to enhance classification accuracy by incorporating realistic GAN-generated images as data augmentation. However, the performance of these GAN-based methods often relies on high-quality generated images, while large amounts of training data are required to train GAN models to achieve optimal performance.PurposeIn this study, we propose an adversarial learning-based classification framework to achieve better classification performance. Innovatively, GAN models are employed as supplementary regularization terms to support classification, aiming to address the challenges described above.MethodsThe proposed classification framework, GAN-DL, consists of a feature extraction network (F-Net), a classifier, and two adversarial networks, specifically a reconstruction network (R-Net) and a discriminator network (D-Net). The F-Net extracts features from input images, and the classifier uses these features for classification tasks. R-Net and D-Net have been designed following the GAN architecture. R-Net employs the extracted feature to reconstruct the original images, while D-Net is tasked with the discrimination between the reconstructed image and the original images. An iterative adversarial learning strategy is designed to guide model training by incorporating multiple network-specific loss functions. These loss functions, serving as supplementary regularization, are automatically derived during the reconstruction process and require no additional data annotation.ResultsTo verify the model's effectiveness, we performed experiments on two datasets, including a COVID-19 dataset with 13 958 chest x-ray images and an oropharyngeal squamous cell carcinoma (OPSCC) dataset with 3255 positron emission tomography images. Thirteen classic DL-based classification methods were implemented on the same datasets for comparison. Performance metrics included precision, sensitivity, specificity, and F1$F_1$-score. In addition, we conducted ablation studies to assess the effects of various factors on model performance, including the network depth of F-Net, training image size, training dataset size, and loss function design. Our method achieved superior performance than all comparative methods. On the COVID-19 dataset, our method achieved 95.4%+/- 0.6%$95.4\%\pm 0.6\%$, 95.3%+/- 0.9%$95.3\%\pm 0.9\%$, 97.7%+/- 0.4%$97.7\%\pm 0.4\%$, and 95.3%+/- 0.9%$95.3\%\pm 0.9\%$ in terms of precision, sensitivity, specificity, and F1$F_1$-score, respectively. It achieved 96.2%+/- 0.7%$96.2\%\pm 0.7\%$ across all these metrics on the OPSCC dataset. The study to investigate the effects of two adversarial networks highlights the crucial role of D-Net in improving model performance. Ablation studies further provide an in-depth understanding of our methodology.ConclusionOur adversarial-based classification framework leverages GAN-based adversarial networks and an iterative adversarial learning strategy to harness supplementary regularization during training. This design significantly enhances classification accuracy and mitigates overfitting issues in medical image datasets. Moreover, its modular design not only demonstrates flexibility but also indicates its potential applicability to various clinical contexts and medical imaging applications.
引用
收藏
页码:8232 / 8246
页数:15
相关论文
共 50 条
  • [21] Flower image classification based on generative adversarial network and transfer learning
    Li, Xiaoxue
    Lv, Rongxin
    Yin, Yanzhen
    Xin, Kangkang
    Liu, Zeyuan
    Li, Zhongzhi
    6TH INTERNATIONAL CONFERENCE ON ADVANCES IN ENERGY RESOURCES AND ENVIRONMENT ENGINEERING, 2021, 647
  • [22] Graph Contrastive Learning based Adversarial Training for SAR Image Classification
    Wang, Xu
    Ye, Tian
    Kannan, Rajgopal
    Prasanna, Viktor
    ALGORITHMS FOR SYNTHETIC APERTURE RADAR IMAGERY XXXI, 2024, 13032
  • [23] Adversarial Prototype Learning for Hyperspectral Image Classification
    Wang, Shuai
    Du, Bo
    Zhang, Dingwen
    Wan, Fang
    IEEE Transactions on Geoscience and Remote Sensing, 2022, 60
  • [24] Adversarial Prototype Learning for Hyperspectral Image Classification
    Wang, Shuai
    Du, Bo
    Zhang, Dingwen
    Wan, Fang
    IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING, 2022, 60
  • [25] Combining Similarity and Adversarial Learning to Generate Visual Explanation: Application to Medical Image Classification
    Charachon, Martin
    Hudelot, Celine
    Cournede, Paul-Henry
    Ruppli, Camille
    Ardon, Roberto
    2020 25TH INTERNATIONAL CONFERENCE ON PATTERN RECOGNITION (ICPR), 2021, : 7188 - 7195
  • [26] Towards Imbalanced Image Classification: A Generative Adversarial Network Ensemble Learning Method
    Huang, Yangru
    Jin, Yi
    Li, Yidong
    Lin, Zhiping
    IEEE ACCESS, 2020, 8 : 88399 - 88409
  • [27] Medical Image Fusion Based on Semisupervised Learning and Generative Adversarial Network
    Yin Haitao
    Yue Yongying
    LASER & OPTOELECTRONICS PROGRESS, 2022, 59 (22)
  • [28] Medical Image Classification Based on Machine Learning Techniques
    Pathan, Naziya
    Jadhav, Mukti E.
    ADVANCED INFORMATICS FOR COMPUTING RESEARCH, PT I, 2019, 1075 : 91 - 101
  • [29] Research on Medical Image Classification Based on Machine Learning
    Tang, Hai
    Hu, Zhihui
    IEEE ACCESS, 2020, 8 : 93145 - 93154
  • [30] Elastic net regularized dictionary learning for image classification
    Shen, Bin
    Liu, Bao-Di
    Wang, Qifan
    MULTIMEDIA TOOLS AND APPLICATIONS, 2016, 75 (15) : 8861 - 8874