Boundary-Guided Contrastive Learning for Semi-Supervised Medical Image Segmentation

Yang Yang;Jiaxin Zhuang;Guoying Sun;Ruixuan Wang;Jingyong Su
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Abstract

Semi-supervised learning methods, compared to fully supervised learning, offer significant potential to alleviate the burden of manual annotations on clinicians. By leveraging unlabeled data, these methods can aid in the development of medical image segmentation systems for improving efficiency. Boundary segmentation is crucial in medical image analysis. However, accurate segmentation of boundary regions is under-explored in existing methods since boundary pixels constitute only a small fraction of the overall image, resulting in suboptimal segmentation performance for boundary regions. In this paper, we introduce boundary-guided contrastive learning for semi-supervised medical image segmentation (BoCLIS). Specifically, we first propose conservative-to-radical teacher networks with an uncertainty-weighted aggregation strategy to generate higher quality pseudo-labels, enabling more efficient utilization of unlabeled data. To further improve the performance of segmentation in boundary regions, we propose a boundary-guided patch sampling strategy to guide the framework in learning discriminative representations for these regions. Lastly, the patch-based contrastive learning is proposed to simultaneously compute the (dis)similarities of the discriminative representations across intra- and inter-images. Extensive experiments on three public datasets show that our method consistently outperforms existing methods, especially in the boundary region, with DSC improvements of 20.47%, 16.75%, and 17.18%, respectively. A comprehensive analysis is further performed to demonstrate the effectiveness of our approach. Our code is released publicly at https://github.com/youngyzzZ/BoCLIS.
半监督医学图像分割的边界引导对比学习
与完全监督学习相比,半监督学习方法在减轻临床医生手工注释的负担方面具有很大的潜力。通过利用未标记的数据,这些方法可以帮助医学图像分割系统的发展,以提高效率。边界分割是医学图像分析的关键。然而,由于边界像素只占整体图像的一小部分,现有方法对边界区域的精确分割研究不足,导致边界区域的分割性能不理想。在本文中,我们将边界引导对比学习引入到半监督医学图像分割(BoCLIS)中。具体来说,我们首先提出了带有不确定性加权聚合策略的保守到激进教师网络,以生成更高质量的伪标签,从而更有效地利用未标记的数据。为了进一步提高边界区域的分割性能,我们提出了一种边界引导的斑块采样策略来指导框架学习这些区域的判别表示。最后,提出了基于patch的对比学习方法来同时计算图像内部和图像之间的判别表示的(非)相似度。在三个公开数据集上的大量实验表明,我们的方法始终优于现有方法,特别是在边界区域,DSC分别提高了20.47%,16.75%和17.18%。进一步进行了全面的分析,以证明我们的方法的有效性。我们的代码在https://github.com/youngyzzZ/BoCLIS公开发布。
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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