基于选择性语义分组的形态学启发的无监督腺体分割

Qixiang Zhang, Yi Li, Cheng Xue, X. Li
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引用次数: 0

摘要

设计用于腺体分割的深度学习算法是实现癌症自动诊断和预后的关键,但昂贵的标注成本阻碍了该技术的发展和应用。在本文中,我们首次尝试探索一种不需要人工注释的无监督腺体分割的深度学习方法。现有的无监督语义分割方法在处理腺体图像时遇到了巨大的挑战:要么将一个腺体过度分割成许多部分,要么将许多腺体区域与背景混淆,从而导致腺体区域分割不足。为了克服这一挑战,我们的关键见解是引入关于腺体形态的经验线索作为额外的知识来指导分割过程。为此,我们提出了一种基于选择性语义分组的形态学启发方法。我们首先利用经验线索有选择地挖掘出具有不同外观的腺体子区域的建议。然后,利用形态学感知语义分组模块,通过显式分组腺体子区域建议的语义来总结腺体的总体信息。这样,最终的分割网络可以学习到关于腺体的全面知识,并产生清晰、完整的预测。我们在GlaS数据集和CRAG数据集上进行了实验。我们的方法在mIOU上超过第二好的方法10.56%。
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Morphology-inspired Unsupervised Gland Segmentation via Selective Semantic Grouping
Designing deep learning algorithms for gland segmentation is crucial for automatic cancer diagnosis and prognosis, yet the expensive annotation cost hinders the development and application of this technology. In this paper, we make a first attempt to explore a deep learning method for unsupervised gland segmentation, where no manual annotations are required. Existing unsupervised semantic segmentation methods encounter a huge challenge on gland images: They either over-segment a gland into many fractions or under-segment the gland regions by confusing many of them with the background. To overcome this challenge, our key insight is to introduce an empirical cue about gland morphology as extra knowledge to guide the segmentation process. To this end, we propose a novel Morphology-inspired method via Selective Semantic Grouping. We first leverage the empirical cue to selectively mine out proposals for gland sub-regions with variant appearances. Then, a Morphology-aware Semantic Grouping module is employed to summarize the overall information about the gland by explicitly grouping the semantics of its sub-region proposals. In this way, the final segmentation network could learn comprehensive knowledge about glands and produce well-delineated, complete predictions. We conduct experiments on GlaS dataset and CRAG dataset. Our method exceeds the second-best counterpart over 10.56% at mIOU.
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