MC-GenRef: Annotation-free mammography microcalcification segmentation with generative posterior refinement
Hyunwoo Cho, Yeeun Kwon, Min Jung Kim, Yangmo Yoo

TL;DR
This paper introduces MC-GenRef, a novel framework for mammography microcalcification segmentation that uses synthetic supervision and test-time generative refinement to improve accuracy without requiring dense annotations.
Contribution
It proposes a synthetic-label training method combined with a test-time generative posterior refinement technique to enhance microcalcification segmentation robustness and accuracy.
Findings
Synthetic supervision achieves high Dice scores without dense labels.
TT-GPR improves recall and reduces false negatives across datasets.
Method enhances robustness under cross-site shifts.
Abstract
Microcalcification (MC) analysis is clinically important in screening mammography because clustered puncta can be an early sign of malignancy, yet dense MC segmentation remains challenging: targets are extremely small and sparse, dense pixel-level labels are expensive and ambiguous, and cross-site shift often induces texture-driven false positives and missed puncta in dense tissue. We propose MC-GenRef, a real dense-label-free framework that combines high-fidelity synthetic supervision with test-time generative posterior refinement (TT-GPR). During training, real negative mammogram patches are used as backgrounds, and physically plausible MC patterns are injected through a lightweight image formation model with local contrast modulation and blur, yielding exact image-mask pairs without real dense annotation. Using only these synthetic labeled pairs, MC-GenRef trains a base segmentor and…
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