医学图像分割的生成对抗半监督网络

Chuchen Li, Huafeng Liu
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引用次数: 4

摘要

由于伦理和专业注释人员数量的限制,很难获得医学图像的逐像素注释。因此,如何利用有限的注释并保持性能是一个重要而又具有挑战性的问题。在本文中,我们提出了生成对抗半监督网络(GASNet)以一种自学习的方式来解决这个问题。在训练过程中只有有限的标签可用,并且利用未标记的图像作为辅助信息来提高分割性能。我们将分割网络调制为一个生成器来产生伪标签,伪标签的可靠性由一个不确定性鉴别器来判断。特征映射损失将获得生成标签与真实标签的统计分布一致性,进一步保证可信度。在右心室数据集上,以1/32 ~ 1/2的标注比例分别获得0.8348 ~ 0.9131的骰子系数。改进比相应的完全监督基线高出28.6分。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Generative Adversarial Semi-Supervised Network For Medical Image Segmentation
Due to the limitation of ethics and the number of professional annotators, pixel-wise annotations for medical images are hard to obtain. Thus, how to exploit limited annotations and maintain the performance is an important yet challenging problem. In this paper, we propose Generative Adversarial Semi-supervised Network(GASNet) to tackle this problem in a self-learning manner. Only limited labels are available during the training procedure and the unlabeled images are exploited as auxiliary information to boost segmentation performance. We modulate segmentation network as a generator to produce pseudo labels whose reliability will be judged by an uncertainty discriminator. Feature mapping loss will obtain statistic distribution consistency between the generated labels and the real ones to further ensure the credibility. We obtain 0.8348 to 0.9131 dice coefficient with 1/32 to 1/2 proportion of annotations respectively on right ventricle dataset. Improvements are up to 28.6 points higher than the corresponding fully supervised baseline.
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