Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

Pareto-Guided Optimization for Uncertainty-Aware Medical Image Segmentation

About

Uncertainty in medical image segmentation is inherently non-uniform, with boundary regions exhibiting substantially higher ambiguity than interior areas. Conventional training treats all pixels equally, leading to unstable optimization during early epochs when predictions are unreliable. We argue that this instability hinders convergence toward Pareto-optimal solutions and propose a region-wise curriculum strategy that prioritizes learning from certain regions and gradually incorporates uncertain ones, reducing gradient variance. Methodologically, we introduce a Pareto-consistent loss that balances trade-offs between regional uncertainties by adaptively reshaping the loss landscape and constraining convergence dynamics between interior and boundary regions; this guides the model toward Pareto-approximate solutions. To address boundary ambiguity, we further develop a fuzzy labeling mechanism that maintains binary confidence in non-boundary areas while enabling smooth transitions near boundaries, stabilizing gradients, and expanding flat regions in the loss surface. Experiments on brain metastasis and non-metastatic tumor segmentation show consistent improvements across multiple configurations, with our method outperforming traditional crisp-set approaches in all tumor subregions.

Jinming Zhang, Youpeng Yang, Xi Yang, Haosen Shi, Yuyao Yan, Qiufeng Wang, Guangliang Cheng, Kaizhu Huang• 2026

Related benchmarks

TaskDatasetResultRank
Enhancing Tumor SegmentationBraTS 2018--
48
Tumor Core SegmentationBraTS 2018--
48
Enhancing Tumor SegmentationPretreat-MetsToBrain-Masks (test)
Dice Score0.6495
30
Tumor Core SegmentationPretreat-MetsToBrain-Masks (test)
Dice Score71.36
30
Whole Tumor SegmentationPretreat-MetsToBrain-Masks (test)
Dice Score73.16
30
SegmentationBraTS 2018 (online evaluation)
Dice (Enhancing tumour)78.01
26
Enhancing Tumor SegmentationPretreat-MetsToBrain-Masks
Mean Dice65.8
20
Tumor Core SegmentationPretreat-MetsToBrain-Masks
Dice (Mean)0.7272
20
Whole Tumor SegmentationPretreat-MetsToBrain-Masks
Mean Dice71.1
20
Whole Tumor SegmentationBRATS'18
Dice (T1, Remain 1)75.25
6
Showing 10 of 11 rows

Other info

Follow for update