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Uncertainty-aware collaborative learning with mixed images for semi-supervised medical image segmentation.

Meixi Wang1, Xiumei Li1, Huang Bai1

  • 1School of Information Science and Technology, Hangzhou Normal University, Hangzhou, China.

Computer Methods and Programs in Biomedicine
|October 25, 2025
PubMed
Summary
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This study introduces a new framework for semi-supervised medical image segmentation, improving accuracy by reducing noisy pseudo-labels and leveraging diverse data perturbations for better generalization in medical AI.

Area of Science:

  • Medical Image Analysis
  • Artificial Intelligence in Medicine
  • Computer Vision

Background:

  • Semi-supervised medical image segmentation (SSMIS) uses unlabeled data to reduce annotation costs.
  • Pseudo-labeling (PL) is common in SSMIS but struggles with noisy labels from limited annotations.
  • Existing methods using single perturbations have limited generalization; multiple perturbations pose training challenges.

Purpose of the Study:

  • To address the challenges of noisy pseudo-labels and limited generalization in PL-based SSMIS.
  • To improve the accuracy and robustness of medical image segmentation models.
  • To develop a framework that effectively utilizes both labeled and unlabeled data.

Main Methods:

  • Proposed an Uncertainty-Aware Collaborative Learning with Mixed Images (CLMI) framework for SSMIS.
Keywords:
Medical image segmentationPrototype learningPseudo-labelsSemi-supervised learningUncertainty estimation

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  • Introduced Mixed Prototype guided Uncertainty Estimation (MPUE) to reduce pseudo-label noise by estimating uncertainty.
  • CLMI utilizes both perturbed and unperturbed images to enhance generalization and mitigate overfitting.
  • Main Results:

    • Achieved Dice scores of 89.97% on ACDC and 81.20% on PROMISE12 datasets with only 10% labeled data.
    • Demonstrated significant outperformance compared to state-of-the-art semi-supervised methods.
    • Validated the framework's effectiveness on public medical image datasets.

    Conclusions:

    • The proposed framework enhances the accuracy of semi-supervised medical image segmentation.
    • Experiments confirm the framework's superiority over existing methods.
    • Code is publicly available for reproducibility and further research.