Li Gang, Xie Jinjie, Zhang Ling, Cheng Guijuan, Zhang Kairu, Bai Mingqi
College of Software, Taiyuan University of Technology, Taiyuan, China.
College of Software, Taiyuan University of Technology, Taiyuan, China.
Neural Netw. 2025 Apr;184:107063. doi: 10.1016/j.neunet.2024.107063. Epub 2024 Dec 15.
Semi-supervised medical image segmentation endeavors to exploit a limited set of labeled data in conjunction with a substantial corpus of unlabeled data, with the aim of training models that can match or even exceed the efficacy of fully supervised segmentation models. Despite the potential of this approach, most existing semi-supervised medical image segmentation techniques that employ consistency regularization predominantly focus on spatial consistency at the image level, often neglecting the crucial role of feature-level channel information. To address this limitation, we propose an innovative method that integrates graph convolutional networks with a consistency regularization framework to develop a dynamic graph consistency approach. This method imposes channel-level constraints across different decoders by leveraging high-level features within the network. Furthermore, we introduce a novel self-contrast learning strategy, which performs image-level comparison within the same batch and engages in pixel-level contrast learning based on pixel positions. This approach effectively overcomes traditional contrast learning challenges related to identifying positive and negative samples, reduces computational resource consumption, and significantly improves model performance. Our experimental evaluation on three distinct medical image segmentation datasets indicates that the proposed method demonstrates superior performance across a variety of test scenarios.
半监督医学图像分割致力于利用有限的标记数据以及大量未标记数据,目的是训练出性能能够匹配甚至超越完全监督分割模型的模型。尽管这种方法具有潜力,但大多数现有的采用一致性正则化的半监督医学图像分割技术主要关注图像层面的空间一致性,常常忽略了特征层面通道信息的关键作用。为解决这一局限性,我们提出了一种创新方法,将图卷积网络与一致性正则化框架相结合,以开发一种动态图一致性方法。该方法通过利用网络内的高级特征在不同解码器之间施加通道层面的约束。此外,我们引入了一种新颖的自对比学习策略,该策略在同一批次内进行图像层面的比较,并基于像素位置进行像素层面的对比学习。这种方法有效克服了与识别正样本和负样本相关的传统对比学习挑战,减少了计算资源消耗,并显著提高了模型性能。我们在三个不同的医学图像分割数据集上进行的实验评估表明,所提出的方法在各种测试场景中均表现出卓越性能。