Virtual stain transfer is a promising area of research in Computational Pathology, which has a great potential to alleviate important limitations when applying deeplearningbased solutions such as lack of annotations and sensitivity to a domain shift. However, in the literature, the majority of virtual staining approaches are trained for a specific staining or stain combination, and their extension to unseen stainings requires the acquisition of additional data and training. In this paper, we propose HistoStarGAN, a unified framework that performs stain transfer between multiple stainings, stain normalisation and stain invariant segmentation, all in one inference of the model. We demonstrate the generalisation abilities of the proposed solution to perform diverse stain transfer and accurate stain invariant segmentation over numerous unseen stainings, which is the first such demonstration in the field. Moreover, the pre-trained HistoStar-GAN model can serve as a synthetic data generator, which paves the way for the use of fully annotated synthetic image data to improve the training of deep learning-based algorithms. To illustrate the capabilities of our approach, as well as the potential risks in the microscopy domain, inspired by applications in natural images, we generated KidneyArtPathology, a fully annotated artificial image dataset for renal pathology.
翻译:虚拟污点转移是计算病理研究的一个大有希望的领域,在应用深层学习解决方案时,这极有可能减轻重要的局限性,例如缺乏说明和对领域转移的敏感性,然而,在文献中,大多数虚拟污点方法都经过特定污点或污点组合的培训,将其推广到无形污点,这需要获取更多的数据和培训。在本文件中,我们提议HistoStarGAN是一个统一的框架,在多种污点、污点正常化和变异性分化之间进行污点转移,这都是该模型的一个推论。我们展示了拟议解决方案的概括能力,以便在众多的不可见污点上进行不同的污点转移和准确的污点分化,这是该领域的第一个示范。此外,经过事先培训的HistoStar-GAN模型可以作为一个合成数据生成器,为使用经过充分说明的合成图像数据来改进深层学习算法的培训铺平了道路。为了说明我们的方法的能力,以及微生物分析领域的潜在风险,这是由自然图象学应用所激发的。