Medical image segmentation methods are generally designed as fully-supervised to guarantee model performance, which require a significant amount of expert annotated samples that are high-cost and laborious. Semi-supervised image segmentation can alleviate the problem by utilizing a large number of unlabeled images along with limited labeled images. However, learning a robust representation from numerous unlabeled images remains challenging due to potential noise in pseudo labels and insufficient class separability in feature space, which undermines the performance of current semi-supervised segmentation approaches. To address the issues above, we propose a novel semi-supervised segmentation method named as Rectified Contrastive Pseudo Supervision (RCPS), which combines a rectified pseudo supervision and voxel-level contrastive learning to improve the effectiveness of semi-supervised segmentation. Particularly, we design a novel rectification strategy for the pseudo supervision method based on uncertainty estimation and consistency regularization to reduce the noise influence in pseudo labels. Furthermore, we introduce a bidirectional voxel contrastive loss to the network to ensure intra-class consistency and inter-class contrast in feature space, which increases class separability in the segmentation. The proposed RCPS segmentation method has been validated on two public datasets and an in-house clinical dataset. Experimental results reveal that the proposed method yields better segmentation performance compared with the state-of-the-art methods in semi-supervised medical image segmentation. The source code is available at https://github.com/hsiangyuzhao/RCPS.
翻译:医疗图像分解方法通常被设计成完全受监督的,以保证模型性能,这需要大量的专家附加说明的样本,这些样本成本高、难度大。半监督的图像分解可以通过使用大量未贴标签的图像以及有限的贴标签图像来缓解问题。然而,从许多未贴标签的图像中学习强有力的代表仍然具有挑战性,因为假标签中潜在的噪音和特征空间中等级分解不足会破坏当前半监督分解方法的性能。为了解决上述问题,我们建议采用一种新型半监督的半监督分解方法,名为“校正对比的对比器”(RCPS),该方法结合了经过校正的假监视器和 voxel 级对比法,以提高半监督分解的效果。特别是,我们根据不确定性估计和一致性规范化的假标签中伪监督方法设计了一个新的再校正战略,以减少假标签中的噪音影响。此外,我们建议对网络进行双向式对质分解损失,以确保本级内部一致性和校正的分解分解(RC)监督方法结合了空间分流分析结果中的拟议数据分化方法。 将改进了内部数据分解分析方法,提高了数据分解方法。