DiRA:用于自我监督医学图像分析的判别、恢复和对抗学习。

Fatemeh Haghighi, Mohammad Reza Hosseinzadeh Taher, Michael B Gotway, Jianming Liang
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引用次数: 0

摘要

事实证明,判别学习、恢复学习和对抗学习有利于计算机视觉和医学成像中的自我监督学习方案。然而,现有的努力忽略了它们在三元设置中的相互协同效应,而我们的设想是,这将大大有利于深度语义表征学习。为了实现这一愿景,我们开发了 DiRA,这是第一个以统一的方式将判别学习、恢复学习和对抗学习结合在一起的框架,可从无标记的医学图像中协同收集互补的视觉信息,用于细粒度语义表征学习。我们的大量实验证明,DiRA(1)鼓励三种学习成分之间的协作学习,从而产生跨器官、疾病和模式的更具通用性的表示;(2)优于完全监督的ImageNet模型,并提高了小数据环境下的鲁棒性,降低了多种医学成像应用的注释成本;(3)学习细粒度语义表示,促进了仅使用图像级注释的精确病变定位;以及(4)增强了最先进的恢复性方法,揭示了DiRA是一种用于联合表示学习的通用机制。所有代码和预训练模型可在 https://github.com/JLiangLab/DiRA 网站上获取。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

DiRA: Discriminative, Restorative, and Adversarial Learning for Self-supervised Medical Image Analysis.

DiRA: Discriminative, Restorative, and Adversarial Learning for Self-supervised Medical Image Analysis.

DiRA: Discriminative, Restorative, and Adversarial Learning for Self-supervised Medical Image Analysis.

Discriminative learning, restorative learning, and adversarial learning have proven beneficial for self-supervised learning schemes in computer vision and medical imaging. Existing efforts, however, omit their synergistic effects on each other in a ternary setup, which, we envision, can significantly benefit deep semantic representation learning. To realize this vision, we have developed DiRA, the first framework that unites discriminative, restorative, and adversarial learning in a unified manner to collaboratively glean complementary visual information from unlabeled medical images for fine-grained semantic representation learning. Our extensive experiments demonstrate that DiRA (1) encourages collaborative learning among three learning ingredients, resulting in more generalizable representation across organs, diseases, and modalities; (2) outperforms fully supervised ImageNet models and increases robustness in small data regimes, reducing annotation cost across multiple medical imaging applications; (3) learns fine-grained semantic representation, facilitating accurate lesion localization with only image-level annotation; and (4) enhances state-of-the-art restorative approaches, revealing that DiRA is a general mechanism for united representation learning. All code and pretrained models are available at https://github.com/JLiangLab/DiRA.

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