Nuclei segmentation is a crucial task for whole slide image analysis in digital pathology. Generally, the segmentation performance of fully-supervised learning heavily depends on the amount and quality of the annotated data. However, it is time-consuming and expensive for professional pathologists to provide accurate pixel-level ground truth, while it is much easier to get coarse labels such as point annotations. In this paper, we propose a weakly-supervised learning method for nuclei segmentation that only requires point annotations for training. The proposed method achieves label propagation in a coarse-to-fine manner as follows. First, coarse pixel-level labels are derived from the point annotations based on the Voronoi diagram and the k-means clustering method to avoid overfitting. Second, a co-training strategy with an exponential moving average method is designed to refine the incomplete supervision of the coarse labels. Third, a self-supervised visual representation learning method is tailored for nuclei segmentation of pathology images that transforms the hematoxylin component images into the H\&E stained images to gain better understanding of the relationship between the nuclei and cytoplasm. We comprehensively evaluate the proposed method using two public datasets. Both visual and quantitative results demonstrate the superiority of our method to the state-of-the-art methods, and its competitive performance compared to the fully-supervised methods. The source codes for implementing the experiments will be released after acceptance.
翻译:在数字病理学中,对整块幻灯片图像分析来说,核心部分分析是一项关键的任务。一般来说,完全监督的学习的分解性能在很大程度上取决于附加说明数据的数量和质量。然而,专业病理学家提供准确的像素水平地面真相需要花费大量时间,而专业病理学家提供精确的像素水平地面真相也需要花费大量时间,而获得粗化的标签,如点说明等则容易得多。在本文中,我们建议对核部分的分解采用一种监督不力的学习方法,只要求为培训提供点说明。拟议方法以粗到以下的粗到软的方式进行标签传播。首先,粗化像素等级标签是从基于Voronoioi图表和K- means群集法的点说明中衍生出来的。第二,采用指数移动平均方法来改进粗糙标签的不完全监督。第三,自监督的视觉代表学习方法是专为心脏部分图像源的分解而将双向偏斜图像的分解。我们用两种直观方法来更好地评估其直观性结果,然后,我们用两种直观方法来评估。