Uncertainty-Aware Cross-Training for Semi-Supervised Medical Image Segmentation

IF 13.7
Kaiwen Huang;Tao Zhou;Huazhu Fu;Yizhe Zhang;Yi Zhou;Xiao-Jun Wu
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Abstract

Semi-supervised learning has gained considerable popularity in medical image segmentation tasks due to its capability to reduce reliance on expert-examined annotations. Several mean-teacher (MT) based semi-supervised methods utilize consistency regularization to effectively leverage valuable information from unlabeled data. However, these methods often heavily rely on the student model and overlook the potential impact of cognitive biases within the model. Furthermore, some methods employ co-training using pseudo-labels derived from different inputs, yet generating high-confidence pseudo-labels from perturbed inputs during training remains a significant challenge. In this paper, we propose an Uncertainty-aware Cross-training framework for semi-supervised medical image Segmentation (UC-Seg). Our UC-Seg framework incorporates two distinct subnets to effectively explore and leverage the correlation between them, thereby mitigating cognitive biases within the model. Specifically, we present a Cross-subnet Consistency Preservation (CCP) strategy to enhance feature representation capability and ensure feature consistency across the two subnets. This strategy enables each subnet to correct its own biases and learn shared semantics from both labeled and unlabeled data. Additionally, we propose an Uncertainty-aware Pseudo-label Generation (UPG) component that leverages segmentation results and corresponding uncertainty maps from both subnets to generate high-confidence pseudo-labels. We extensively evaluate the proposed UC-Seg on various medical image segmentation tasks involving different modality images, such as MRI, CT, ultrasound, colonoscopy, and so on. The results demonstrate that our method achieves superior segmentation accuracy and generalization performance compared to other state-of-the-art semi-supervised methods. Our code and segmentation maps will be released at https://github.com/taozh2017/UCSeg
半监督医学图像分割的不确定性感知交叉训练
半监督学习在医学图像分割任务中获得了相当大的普及,因为它能够减少对专家检查注释的依赖。几种基于均值教师(MT)的半监督方法利用一致性正则化从未标记数据中有效地利用有价值的信息。然而,这些方法往往严重依赖于学生模型,而忽视了模型中认知偏差的潜在影响。此外,一些方法使用来自不同输入的伪标签进行共同训练,但在训练过程中从扰动输入生成高置信度的伪标签仍然是一个重大挑战。在本文中,我们提出了一种用于半监督医学图像分割(UC-Seg)的不确定性感知交叉训练框架。我们的UC-Seg框架结合了两个不同的子网,以有效地探索和利用它们之间的相关性,从而减轻模型中的认知偏差。具体来说,我们提出了一种跨子网一致性保持(CCP)策略来增强特征表示能力并确保两个子网之间的特征一致性。该策略使每个子网能够纠正自己的偏差,并从标记和未标记的数据中学习共享语义。此外,我们提出了一个不确定性感知伪标签生成(UPG)组件,该组件利用来自两个子网的分割结果和相应的不确定性映射来生成高置信度的伪标签。我们广泛评估了UC-Seg在涉及不同模态图像的各种医学图像分割任务中的应用,如MRI、CT、超声、结肠镜检查等。结果表明,与其他先进的半监督方法相比,我们的方法具有更好的分割精度和泛化性能。我们的代码和分段图将在https://github.com/taozh2017/UCSeg上发布
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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