Rethinking Semi-Supervised Medical Image Segmentation: A Variance-Reduction Perspective.

Chenyu You, Weicheng Dai, Yifei Min, Fenglin Liu, David A Clifton, S Kevin Zhou, Lawrence Staib, James S Duncan
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Abstract

For medical image segmentation, contrastive learning is the dominant practice to improve the quality of visual representations by contrasting semantically similar and dissimilar pairs of samples. This is enabled by the observation that without accessing ground truth labels, negative examples with truly dissimilar anatomical features, if sampled, can significantly improve the performance. In reality, however, these samples may come from similar anatomical regions and the models may struggle to distinguish the minority tail-class samples, making the tail classes more prone to misclassification, both of which typically lead to model collapse. In this paper, we propose ARCO, a semi-supervised contrastive learning (CL) framework with stratified group theory for medical image segmentation. In particular, we first propose building ARCO through the concept of variance-reduced estimation and show that certain variance-reduction techniques are particularly beneficial in pixel/voxel-level segmentation tasks with extremely limited labels. Furthermore, we theoretically prove these sampling techniques are universal in variance reduction. Finally, we experimentally validate our approaches on eight benchmarks, i.e., five 2D/3D medical and three semantic segmentation datasets, with different label settings, and our methods consistently outperform state-of-the-art semi-supervised methods. Additionally, we augment the CL frameworks with these sampling techniques and demonstrate significant gains over previous methods. We believe our work is an important step towards semi-supervised medical image segmentation by quantifying the limitation of current self-supervision objectives for accomplishing such challenging safety-critical tasks.

反思半监督医学图像分割:降低方差的视角
在医学影像分割方面,对比学习是通过对比语义上相似和不相似的样本对来提高视觉表征质量的主流做法。之所以能做到这一点,是因为我们发现,在无法获取基本真实标签的情况下,如果取样具有真正不同解剖学特征的负样本,就能显著提高性能。但在现实中,这些样本可能来自相似的解剖区域,模型可能难以区分少数尾类样本,使尾类更容易被误分,这两种情况通常都会导致模型崩溃。在本文中,我们提出了一种半监督对比学习(CL)框架--ARCO,该框架采用分层群理论,适用于医学图像分割。特别是,我们首先提出通过方差缩小估计的概念来构建 ARCO,并证明某些方差缩小技术特别适用于标签极其有限的像素/象素级分割任务。此外,我们还从理论上证明了这些采样技术在降低方差方面的通用性。最后,我们在八个基准(即五个二维/三维医学数据集和三个语义分割数据集)上用不同的标签设置对我们的方法进行了实验验证,我们的方法始终优于最先进的半监督方法。此外,我们还利用这些采样技术增强了CL框架,并证明比以前的方法有显著提高。我们相信,通过量化当前自监督目标在完成此类具有挑战性的安全关键任务方面的局限性,我们的工作是朝着半监督医学图像分割迈出的重要一步。
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