Towards Reliable Medical Image Segmentation by Modeling Evidential Calibrated Uncertainty
Ke Zou, Yidi Chen, Ling Huang, Xuedong Yuan, Xiaojing Shen, Meng Wang, Rick Siow Mong Goh, Yong Liu, Huazhu Fu

TL;DR
This paper introduces DEviS, a foundational model that improves the calibration, robustness, and uncertainty estimation of medical image segmentation, making predictions more reliable for clinical use.
Contribution
The paper presents DEviS, a novel, easily integrable model that explicitly models uncertainty using subjective logic and Dirichlet distributions to enhance medical image segmentation reliability.
Findings
DEviS improves calibration and robustness of segmentation models.
It provides high-efficiency uncertainty estimates for predictions.
Validated on multiple public datasets showing enhanced reliability.
Abstract
Medical image segmentation is critical for disease diagnosis and treatment assessment. However, concerns regarding the reliability of segmentation regions persist among clinicians, mainly attributed to the absence of confidence assessment, robustness, and calibration to accuracy. To address this, we introduce DEviS, an easily implementable foundational model that seamlessly integrates into various medical image segmentation networks. DEviS not only enhances the calibration and robustness of baseline segmentation accuracy but also provides high-efficiency uncertainty estimation for reliable predictions. By leveraging subjective logic theory, we explicitly model probability and uncertainty for medical image segmentation. Here, the Dirichlet distribution parameterizes the distribution of probabilities for different classes of the segmentation results. To generate calibrated predictions and…
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Taxonomy
TopicsRadiomics and Machine Learning in Medical Imaging · AI in cancer detection · Machine Learning in Healthcare
