SEMISE: Semi-Supervised Learning for Severity Representation in Medical Image

Tran Dung T., Vu Hung, Tran Anh, Hoang Tuan, Pham Hieu, Nguyen Hong, Nguyen Nam-Phong

Publisher

This paper introduces SEMISE, a novel method for representation learning in medical imaging that combines selfsupervised and supervised learning. By leveraging both labeled and augmented data, SEMISE addresses the challenge of data scarcity and enhances the encoder’s ability to extract meaningful features. This integrated approach leads to more informative representations, improving performance on downstream tasks. As result, our approach achieved a 12% improvement in classification and a 3% improvement in segmentation, outperforming existing methods. These results demonstrate the potential of SIMESE to advance medical image analysis and offer more accurate solutions for healthcare applications, particularly in contexts where labeled data is limited.

Publisher: Proceedings International Symposium on Biomedical Imaging

ISSN (Electronic): 19458452

ISSN (Print): 19457928

Keywords

  • Constractive Learning
  • Medical Image
  • Semi-Supervised Learning
  • Severity Representation

ASJC Scopus subject areas

  • Biomedical Engineering
  • Radiology, Nuclear Medicine and Imaging

Publication year

2025

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