Morphology-inspired Unsupervised Gland Segmentation via Selective Semantic Grouping
Qixiang Zhang, Yi Li, Cheng Xue, Xiaomeng Li

TL;DR
This paper introduces an unsupervised deep learning approach for gland segmentation in medical images, utilizing gland morphology cues to improve segmentation accuracy without manual annotations.
Contribution
The paper proposes a novel morphology-inspired method with selective semantic grouping to enhance unsupervised gland segmentation accuracy.
Findings
Outperforms existing methods by over 10.56% mIOU on GlaS dataset.
Effectively captures gland morphology for better segmentation.
Reduces over- and under-segmentation issues in gland images.
Abstract
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…
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Taxonomy
TopicsAI in cancer detection · Radiomics and Machine Learning in Medical Imaging · Cervical Cancer and HPV Research
