多目标半监督医学图像分割与多面手和专家协作的平衡

You Wang;Zekun Li;Lei Qi;Qian Yu;Yinghuan Shi;Yang Gao
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引用次数: 0

摘要

尽管目前的半监督模型在分割单个医疗目标方面取得了很好的性能,但当同时分割多个目标时,其中许多模型的性能明显下降。一个重要的因素是不同目标之间的尺度不平衡,在同时分割多个目标时,大目标的损失占主导地位,导致小目标被误分类为大目标。为此,我们提出了一种新的方法,由一个协同通才和几个专家组成,称为CGS。它的核心思想是为每个目标职业雇佣一名专家,从而避免大型目标的统治。通才进行传统的多目标分割,而专家则致力于从剩余的目标类别和背景中区分特定的目标类别。基于理论洞察,我们证明了CGS可以实现更平衡的训练。此外,我们开发了交叉一致性损失,以促进通才和专才之间的协作学习。最后,考虑到它们之间的内在关系,即任何专门化头部的目标类都应该属于其他头部的剩余类,我们引入了头部间错误检测模块,以进一步提高伪标签的质量。在三个流行的基准测试上的实验结果表明,与最先进的方法相比,它的性能优越。我们的代码可在https://github.com/wangyou0804/CGS上获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Balancing Multi-Target Semi-Supervised Medical Image Segmentation With Collaborative Generalist and Specialists
Despite the promising performance achieved by current semi-supervised models in segmenting individual medical targets, many of these models suffer a notable decrease in performance when tasked with the simultaneous segmentation of multiple targets. A vital factor could be attributed to the imbalanced scales among different targets: during simultaneously segmenting multiple targets, large targets dominate the loss, leading to small targets being misclassified as larger ones. To this end, we propose a novel method, which consists of a Collaborative Generalist and several Specialists, termed CGS. It is centered around the idea of employing a specialist for each target class, thus avoiding the dominance of larger targets. The generalist performs conventional multi-target segmentation, while each specialist is dedicated to distinguishing a specific target class from the remaining target classes and the background. Based on a theoretical insight, we demonstrate that CGS can achieve a more balanced training. Moreover, we develop cross-consistency losses to foster collaborative learning between the generalist and the specialists. Lastly, regarding their intrinsic relation that the target class of any specialized head should belong to the remaining classes of the other heads, we introduce an inter-head error detection module to further enhance the quality of pseudo-labels. Experimental results on three popular benchmarks showcase its superior performance compared to state-of-the-art methods. Our code is available at https://github.com/wangyou0804/CGS.
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