Unsupervised Learning of Local Discriminative Representation for Medical Images
Huai Chen, Jieyu Li, Renzhen Wang, Yijie Huang, Fanrui Meng, Deyu, Meng, Qing Peng, Lisheng Wang

TL;DR
This paper introduces an unsupervised method for learning local discriminative representations in medical images, enabling detailed analysis and clustering without requiring extensive annotations.
Contribution
It proposes a novel dual-branch model that learns local features and clusters them, improving localized medical image analysis and structure clustering in an unsupervised manner.
Findings
Enhanced downstream medical image analysis tasks
Effective clustering of anatomical structures
Applicable to retinal and chest X-ray images
Abstract
Local discriminative representation is needed in many medical image analysis tasks such as identifying sub-types of lesion or segmenting detailed components of anatomical structures. However, the commonly applied supervised representation learning methods require a large amount of annotated data, and unsupervised discriminative representation learning distinguishes different images by learning a global feature, both of which are not suitable for localized medical image analysis tasks. In order to avoid the limitations of these two methods, we introduce local discrimination into unsupervised representation learning in this work. The model contains two branches: one is an embedding branch which learns an embedding function to disperse dissimilar pixels over a low-dimensional hypersphere; and the other is a clustering branch which learns a clustering function to classify similar pixels…
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Taxonomy
TopicsAI in cancer detection · Retinal Imaging and Analysis · COVID-19 diagnosis using AI
