基于少镜头学习的高效注释核实例分割

Yu Ming;Zihao Wu;Jie Yang;Danyi Li;Yuan Gao;Changxin Gao;Gui-Song Xia;Yuanqing Li;Li Liang;Jin-Gang Yu
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引用次数: 0

摘要

从组织病理学图像中分割核实例,受到极其费力和专家依赖的核实例注释的困扰。作为一种很有前途的解决方案,标注高效的深度学习范式最近引起了很多研究兴趣,如弱/半监督学习、生成对抗学习等。在本文中,我们提出了一种基于few-shot learning (FSL)的高效标注核实例分割方法。我们的工作的动机是,随着计算病理学的繁荣,越来越多的完全注释的数据集是可公开访问的,我们希望利用这些外部数据集来帮助只有非常有限的注释的目标数据集上的核实例分割。为了实现这一目标,我们采用了基于元学习的FSL范式,然而,在适应我们的任务之前,必须在两个实质性方面进行调整。首先,由于新类可能与外部数据集的类不一致,我们将few-shot instance segmentation (FSIS)的基本定义扩展为广义few-shot instance segmentation (GFSIS)。其次,为了解决核分割固有的挑战,包括相邻细胞之间的接触、细胞的异质性等,我们进一步在GFSIS网络中引入了结构引导机制,最终形成了统一的结构引导广义少射实例分割(SGFSIS)框架。在几个可公开访问的数据集上进行的大量实验表明,SGFSIS可以优于其他注释高效的学习基线,包括半监督学习,简单迁移学习等,其性能与完全监督学习相当,注释约为10%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Few-Shot Learning for Annotation-Efficient Nucleus Instance Segmentation
Nucleus instance segmentation from histopathology images suffers from the extremely laborious and expert-dependent annotation of nucleus instances. As a promising solution to this task, annotation-efficient deep learning paradigms have recently attracted much research interest, such as weakly-/semi-supervised learning, generative adversarial learning, etc. In this paper, we propose to formulate annotation-efficient nucleus instance segmentation from the perspective of few-shot learning (FSL). Our work was motivated by that, with the prosperity of computational pathology, an increasing number of fully-annotated datasets are publicly accessible, and we hope to leverage these external datasets to assist nucleus instance segmentation on the target dataset which only has very limited annotation. To achieve this goal, we adopt the meta-learning based FSL paradigm, which however has to be tailored in two substantial aspects before adapting to our task. First, since the novel classes may be inconsistent with those of the external dataset, we extend the basic definition of few-shot instance segmentation (FSIS) to generalized few-shot instance segmentation (GFSIS). Second, to cope with the intrinsic challenges of nucleus segmentation, including touching between adjacent cells, cellular heterogeneity, etc., we further introduce a structural guidance mechanism into the GFSIS network, finally leading to a unified Structurally-Guided Generalized Few-Shot Instance Segmentation (SGFSIS) framework. Extensive experiments on a couple of publicly accessible datasets demonstrate that, SGFSIS can outperform other annotation-efficient learning baselines, including semi-supervised learning, simple transfer learning, etc., with comparable performance to fully supervised learning with around 10% annotations.
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