HisynSeg: Weakly-Supervised Histopathological Image Segmentation via Image-Mixing Synthesis and Consistency Regularization

Zijie Fang;Yifeng Wang;Peizhang Xie;Zhi Wang;Yongbing Zhang
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Abstract

Tissue semantic segmentation is one of the key tasks in computational pathology. To avoid the expensive and laborious acquisition of pixel-level annotations, a wide range of studies attempt to adopt the class activation map (CAM), a weakly-supervised learning scheme, to achieve pixel-level tissue segmentation. However, CAM-based methods are prone to suffer from under-activation and over-activation issues, leading to poor segmentation performance. To address this problem, we propose a novel weakly-supervised semantic segmentation framework for histopathological images based on image-mixing synthesis and consistency regularization, dubbed HisynSeg. Specifically, synthesized histopathological images with pixel-level masks are generated for fully-supervised model training, where two synthesis strategies are proposed based on Mosaic transformation and Bézier mask generation. Besides, an image filtering module is developed to guarantee the authenticity of the synthesized images. In order to further avoid the model overfitting to the occasional synthesis artifacts, we additionally propose a novel self-supervised consistency regularization, which enables the real images without segmentation masks to supervise the training of the segmentation model. By integrating the proposed techniques, the HisynSeg framework successfully transforms the weakly-supervised semantic segmentation problem into a fully-supervised one, greatly improving the segmentation accuracy. Experimental results on three datasets prove that the proposed method achieves a state-of-the-art performance. Code is available at https://github.com/Vison307/HisynSeg.
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HisynSeg:基于图像混合合成和一致性正则化的弱监督组织病理图像分割
组织语义分割是计算病理学的关键任务之一。为了避免昂贵且费力的获取像素级注释,许多研究尝试采用类激活图(class activation map, CAM)这一弱监督学习方案来实现像素级组织分割。然而,基于cam的方法容易受到激活不足和过度激活的问题,导致分割性能差。为了解决这个问题,我们提出了一种基于图像混合合成和一致性正则化的组织病理学图像弱监督语义分割框架,称为HisynSeg。具体而言,生成具有像素级掩模的组织病理学合成图像用于全监督模型训练,其中提出了基于马赛克变换和bsamizier掩模生成的两种合成策略。此外,为了保证合成图像的真实性,还开发了图像滤波模块。为了进一步避免模型对偶尔出现的合成伪影的过拟合,我们还提出了一种新的自监督一致性正则化方法,使没有分割掩码的真实图像能够监督分割模型的训练。通过集成上述技术,HisynSeg框架成功地将弱监督语义分割问题转化为全监督语义分割问题,极大地提高了分割精度。在三个数据集上的实验结果表明,该方法达到了最先进的性能。代码可从https://github.com/Vison307/HisynSeg获得。
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