ACTION++: Improving Semi-supervised Medical Image Segmentation with Adaptive Anatomical Contrast.

Chenyu You, Weicheng Dai, Yifei Min, Lawrence Staib, Jas Sekhon, James S Duncan
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Abstract

Medical data often exhibits long-tail distributions with heavy class imbalance, which naturally leads to difficulty in classifying the minority classes (i.e., boundary regions or rare objects). Recent work has significantly improved semi-supervised medical image segmentation in long-tailed scenarios by equipping them with unsupervised contrastive criteria. However, it remains unclear how well they will perform in the labeled portion of data where class distribution is also highly imbalanced. In this work, we present ACTION++, an improved contrastive learning framework with adaptive anatomical contrast for semi-supervised medical segmentation. Specifically, we propose an adaptive supervised contrastive loss, where we first compute the optimal locations of class centers uniformly distributed on the embedding space (i.e., off-line), and then perform online contrastive matching training by encouraging different class features to adaptively match these distinct and uniformly distributed class centers. Moreover, we argue that blindly adopting a constant temperature τ in the contrastive loss on long-tailed medical data is not optimal, and propose to use a dynamic τ via a simple cosine schedule to yield better separation between majority and minority classes. Empirically, we evaluate ACTION++ on ACDC and LA benchmarks and show that it achieves state-of-the-art across two semi-supervised settings. Theoretically, we analyze the performance of adaptive anatomical contrast and confirm its superiority in label efficiency.

ACTION++:利用自适应解剖对比度改进半监督医学图像分割。
医学数据通常呈现长尾分布,类不平衡现象严重,这自然会导致难以对少数类(即边界区域或稀有物体)进行分类。最近的工作通过为半监督医疗图像分割配备无监督对比标准,大大改进了长尾情况下的半监督医疗图像分割。然而,目前仍不清楚它们在类分布高度不平衡的标注数据部分的表现如何。在这项工作中,我们提出了 ACTION++,这是一种改进的对比度学习框架,具有用于半监督医疗分割的自适应解剖对比度。具体来说,我们提出了一种自适应监督对比损失,即首先计算均匀分布在嵌入空间上的类中心的最佳位置(即离线),然后通过鼓励不同的类特征自适应地匹配这些不同且均匀分布的类中心来进行在线对比匹配训练。此外,我们认为在长尾医疗数据的对比度损失中盲目采用恒定温度τ并不是最佳选择,并建议通过简单的余弦调度使用动态τ来更好地分离多数类和少数类。经验上,我们在 ACDC 和 LA 基准上对 ACTION++ 进行了评估,结果表明它在两种半监督设置中都达到了最先进的水平。从理论上讲,我们分析了自适应解剖对比度的性能,并证实了它在标签效率方面的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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