Semantic segmentation of various tissue and nuclei types in histology images is fundamental to many downstream tasks in the area of computational pathology (CPath). In recent years, Deep Learning (DL) methods have been shown to perform well on segmentation tasks but DL methods generally require a large amount of pixel-wise annotated data. Pixel-wise annotation sometimes requires expert's knowledge and time which is laborious and costly to obtain. In this paper, we present a consistency based semi-supervised learning (SSL) approach that can help mitigate this challenge by exploiting a large amount of unlabelled data for model training thus alleviating the need for a large annotated dataset. However, SSL models might also be susceptible to changing context and features perturbations exhibiting poor generalisation due to the limited training data. We propose an SSL method that learns robust features from both labelled and unlabelled images by enforcing consistency against varying contexts and feature perturbations. The proposed method incorporates context-aware consistency by contrasting pairs of overlapping images in a pixel-wise manner from changing contexts resulting in robust and context invariant features. We show that cross-consistency training makes the encoder features invariant to different perturbations and improves the prediction confidence. Finally, entropy minimisation is employed to further boost the confidence of the final prediction maps from unlabelled data. We conduct an extensive set of experiments on two publicly available large datasets (BCSS and MoNuSeg) and show superior performance compared to the state-of-the-art methods.
翻译:对于计算病理学(CPath)领域的许多下游任务来说,对组织图象中各种组织和核核类型的解析分解至关重要。近年来,深学习(DL)方法显示在分解任务方面表现良好,但DL方法通常需要大量的像素数据。像素误读有时需要专家的知识和时间,而这种知识和时间既费力又费钱。在本文中,我们提出了一个基于半监督的学习(SSL)方法,通过在模型培训中利用大量无标签的实验数据来帮助减轻这一挑战。这样可以减轻对大型附加说明数据集的需求。然而, 深学习(DL)方法也可能容易改变背景和特征,表明由于培训数据有限,一般化程度较差。 我们提出了一种SLF方法,通过在不同的背景和特征上下加固,从贴标签和不贴标签的图像中学习稳健健的特征。 拟议的方法结合了背景一致性,通过对比不重叠的最后图象对精度的比,在高级预测中,SLSLS-VS-C-在变化背景中显示稳性环境,从而显示稳健健和最终变化环境。