PC-MIL shows that anchoring supervision at a 2 mm scale and progressively mixing slide- and region-level labels improves cross-context accuracy in WSI cancer detection without reducing global performance.
Nature medicine25(8), 1301–1309 (2019)
2 Pith papers cite this work. Polarity classification is still indexing.
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PriOrGen uses prior-anchored modules to debias visual encoding and textual decoding for improved long-tailed multi-organ pathology report generation.
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PC-MIL: Decoupling Feature Resolution from Supervision Scale in Whole-Slide Learning
PC-MIL shows that anchoring supervision at a 2 mm scale and progressively mixing slide- and region-level labels improves cross-context accuracy in WSI cancer detection without reducing global performance.
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Prior-Anchored Debiasing for Long-Tailed Multi-Organ Pathology Report Generation
PriOrGen uses prior-anchored modules to debias visual encoding and textual decoding for improved long-tailed multi-organ pathology report generation.