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引用次数: 3

摘要

三维医学图像的体标记需要专业知识和时间;因此,半监督学习(SSL)非常适合使用有限的标记数据进行训练。不平衡的类分布是一个严重的问题,它阻碍了这些方法在现实世界中的应用,但并没有得到太多的解决。为了解决这一问题,我们提出了一种新的双去偏异构协同训练(DHC)框架,用于半监督三维医学图像分割。具体来说,我们提出了两种损失加权策略,即分布感知的去偏见加权(DistDW)和困难感知的去偏见加权(DiffDW),它们动态地利用伪标签来指导模型解决数据和学习偏差。通过共同训练这两个不同且准确的子模型,该框架得到了显著改进。我们还引入了更多具有代表性的类不平衡半监督医学图像分割基准,充分证明了类不平衡设计的有效性。实验表明,我们提出的框架通过使用伪标签来消除和缓解类不平衡问题,取得了显著的改进。更重要的是,我们的方法优于最先进的SSL方法,展示了我们的框架在更具挑战性的SSL设置方面的潜力。代码和模型可在:https://github.com/xmed-lab/DHC。
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DHC: Dual-debiased Heterogeneous Co-training Framework for Class-imbalanced Semi-supervised Medical Image Segmentation
The volume-wise labeling of 3D medical images is expertise-demanded and time-consuming; hence semi-supervised learning (SSL) is highly desirable for training with limited labeled data. Imbalanced class distribution is a severe problem that bottlenecks the real-world application of these methods but was not addressed much. Aiming to solve this issue, we present a novel Dual-debiased Heterogeneous Co-training (DHC) framework for semi-supervised 3D medical image segmentation. Specifically, we propose two loss weighting strategies, namely Distribution-aware Debiased Weighting (DistDW) and Difficulty-aware Debiased Weighting (DiffDW), which leverage the pseudo labels dynamically to guide the model to solve data and learning biases. The framework improves significantly by co-training these two diverse and accurate sub-models. We also introduce more representative benchmarks for class-imbalanced semi-supervised medical image segmentation, which can fully demonstrate the efficacy of the class-imbalance designs. Experiments show that our proposed framework brings significant improvements by using pseudo labels for debiasing and alleviating the class imbalance problem. More importantly, our method outperforms the state-of-the-art SSL methods, demonstrating the potential of our framework for the more challenging SSL setting. Code and models are available at: https://github.com/xmed-lab/DHC.
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