Xun Siyi, Li Dengwang, Zhu Hui, Chen Min, Wang Jianbo, Li Jie, Chen Meirong, Wu Bing, Zhang Hua, Chai Xiangfei, Jiang Zekun, Zhang Yan, Huang Pu
Shandong Key Laboratory of Medical Physics and Image Processing, Shandong Institute of Industrial Technology for Health Sciences and Precision Medicine, School of Physics and Electronics, Shandong Normal University, Jinan, Shandong, 250358, China.
Shandong Key Laboratory of Medical Physics and Image Processing, Shandong Institute of Industrial Technology for Health Sciences and Precision Medicine, School of Physics and Electronics, Shandong Normal University, Jinan, Shandong, 250358, China.
Comput Biol Med. 2022 Jan;140:105063. doi: 10.1016/j.compbiomed.2021.105063. Epub 2021 Nov 25.
PURPOSE: Since Generative Adversarial Network (GAN) was introduced into the field of deep learning in 2014, it has received extensive attention from academia and industry, and a lot of high-quality papers have been published. GAN effectively improves the accuracy of medical image segmentation because of its good generating ability and capability to capture data distribution. This paper introduces the origin, working principle, and extended variant of GAN, and it reviews the latest development of GAN-based medical image segmentation methods. METHOD: To find the papers, we searched on Google Scholar and PubMed with the keywords like "segmentation", "medical image", and "GAN (or generative adversarial network)". Also, additional searches were performed on Semantic Scholar, Springer, arXiv, and the top conferences in computer science with the above keywords related to GAN. RESULTS: We reviewed more than 120 GAN-based architectures for medical image segmentation that were published before September 2021. We categorized and summarized these papers according to the segmentation regions, imaging modality, and classification methods. Besides, we discussed the advantages, challenges, and future research directions of GAN in medical image segmentation. CONCLUSIONS: We discussed in detail the recent papers on medical image segmentation using GAN. The application of GAN and its extended variants has effectively improved the accuracy of medical image segmentation. Obtaining the recognition of clinicians and patients and overcoming the instability, low repeatability, and uninterpretability of GAN will be an important research direction in the future.
目的:自生成对抗网络(GAN)于2014年被引入深度学习领域以来,它受到了学术界和工业界的广泛关注,并发表了许多高质量的论文。GAN因其良好的生成能力和捕捉数据分布的能力,有效提高了医学图像分割的准确性。本文介绍了GAN的起源、工作原理和扩展变体,并综述了基于GAN的医学图像分割方法的最新进展。 方法:为了查找相关论文,我们在谷歌学术和PubMed上使用了“分割”“医学图像”和“GAN(或生成对抗网络)”等关键词进行搜索。此外,还在语义学者、施普林格、arXiv以及计算机科学领域的顶级会议上使用上述与GAN相关的关键词进行了额外搜索。 结果:我们回顾了2021年9月之前发表的120多种基于GAN的医学图像分割架构。我们根据分割区域、成像模态和分类方法对这些论文进行了分类和总结。此外,我们还讨论了GAN在医学图像分割中的优势、挑战和未来研究方向。 结论:我们详细讨论了最近使用GAN进行医学图像分割的论文。GAN及其扩展变体的应用有效提高了医学图像分割的准确性。获得临床医生和患者的认可并克服GAN的不稳定性、低重复性和不可解释性将是未来的一个重要研究方向。
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