CVLGIVMar 13

UNIStainNet: Foundation-Model-Guided Virtual Staining of H&E to IHC

arXiv:2603.1271635.0Has Code
AI Analysis

This work addresses the problem of reducing repeat sectioning in pathology for limited tissue samples, though it is incremental by improving realism through foundation-model guidance.

The paper tackled virtual immunohistochemistry staining from H&E images to accelerate diagnostics, achieving state-of-the-art distributional metrics on all four stains (HER2, Ki67, ER, PR) with a single unified model.

Virtual immunohistochemistry (IHC) staining from hematoxylin and eosin (H&E) images can accelerate diagnostics by providing preliminary molecular insight directly from routine sections, reducing the need for repeat sectioning when tissue is limited. Existing methods improve realism through contrastive objectives, prototype matching, or domain alignment, yet the generator itself receives no direct guidance from pathology foundation models. We present UNIStainNet, a SPADE-UNet conditioned on dense spatial tokens from a frozen pathology foundation model (UNI), providing tissue-level semantic guidance for stain translation. A misalignment-aware loss suite preserves stain quantification accuracy, and learned stain embeddings enable a single model to serve multiple IHC markers simultaneously. On MIST, UNIStainNet achieves state-of-the-art distributional metrics on all four stains (HER2, Ki67, ER, PR) from a single unified model, where prior methods typically train separate per-stain models. On BCI, it also achieves the best distributional metrics. A tissue-type stratified failure analysis reveals that remaining errors are systematic, concentrating in non-tumor tissue. Code is available at https://github.com/facevoid/UNIStainNet.

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