UNIStainNet: Foundation-Model-Guided Virtual Staining of H&E to IHC
arXiv cs.CV / 3/16/2026
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Key Points
- UNIStainNet is a SPADE-UNet conditioned on dense spatial tokens from a frozen pathology foundation model (UNI), providing tissue-level semantic guidance for H&E-to-IHC stain translation.
- It uses a misalignment-aware loss and learned stain embeddings to enable a single model to predict multiple IHC markers (HER2, Ki67, ER, PR) while preserving stain quantification accuracy.
- On MIST, UNIStainNet achieves state-of-the-art distributional metrics for all four stains from one unified model, and it also performs best on the BCI dataset.
- A tissue-type stratified failure analysis shows remaining errors are systematic and concentrated in non-tumor tissue, highlighting specific limitations.
- Code is available on GitHub, enabling reproduction and practical usage.
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