Recently deep neural networks, which require a large amount of annotated samples, have been widely applied in nuclei instance segmentation of H\&E stained pathology images. However, it is inefficient and unnecessary to label all pixels for a dataset of nuclei images which usually contain similar and redundant patterns. Although unsupervised and semi-supervised learning methods have been studied for nuclei segmentation, very few works have delved into the selective labeling of samples to reduce the workload of annotation. Thus, in this paper, we propose a novel full nuclei segmentation framework that chooses only a few image patches to be annotated, augments the training set from the selected samples, and achieves nuclei segmentation in a semi-supervised manner. In the proposed framework, we first develop a novel consistency-based patch selection method to determine which image patches are the most beneficial to the training. Then we introduce a conditional single-image GAN with a component-wise discriminator, to synthesize more training samples. Lastly, our proposed framework trains an existing segmentation model with the above augmented samples. The experimental results show that our proposed method could obtain the same-level performance as a fully-supervised baseline by annotating less than 5% pixels on some benchmarks.
翻译:最近深心神经网络在需要大量附加说明的样本的情况下被广泛应用到H ⁇ E的染色病理图象的核核分解中。然而,将通常含有类似和冗余模式的核图象数据集的所有像素贴上标签是低效的,也是不必要的。虽然对核分解进行了未经监督和半监督的学习方法的研究,但很少有作品进入选择性标注样本以减少注解工作量的选择性标签中。因此,在本文中,我们提议了一个新颖的全核分解框架,只选择几个图象补丁作附加说明,扩大从选定样本中选出的成套培训,并以半监督的方式实现核分解。在拟议的框架中,我们首先开发了一个新的基于一致性的补色选择方法,以确定哪些图像补丁最有利于培训。然后我们引入一个有条件的单模组GAN,配有构件的解析器,以合成更多的培训样品。最后,我们提议的框架将现有的分解模型升级为5级模型,而不是升级的标尺。我们提议的模型将获得一个完全的精确的标尺。