HistDiST: Histopathological Diffusion-based Stain Transfer
Journal:
arXiv
Published Date:
May 11, 2025
Abstract
Hematoxylin and Eosin (H&E) staining is the cornerstone of histopathology but
lacks molecular specificity. While Immunohistochemistry (IHC) provides
molecular insights, it is costly and complex, motivating H&E-to-IHC translation
as a cost-effective alternative. Existing translation methods are mainly
GAN-based, often struggling with training instability and limited structural
fidelity, while diffusion-based approaches remain underexplored. We propose
HistDiST, a Latent Diffusion Model (LDM) based framework for high-fidelity
H&E-to-IHC translation. HistDiST introduces a dual-conditioning strategy,
utilizing Phikon-extracted morphological embeddings alongside VAE-encoded H&E
representations to ensure pathology-relevant context and structural
consistency. To overcome brightness biases, we incorporate a rescaled noise
schedule, v-prediction, and trailing timesteps, enforcing a zero-SNR condition
at the final timestep. During inference, DDIM inversion preserves the
morphological structure, while an eta-cosine noise schedule introduces
controlled stochasticity, balancing structural consistency and molecular
fidelity. Moreover, we propose Molecular Retrieval Accuracy (MRA), a novel
pathology-aware metric leveraging GigaPath embeddings to assess molecular
relevance. Extensive evaluations on MIST and BCI datasets demonstrate that
HistDiST significantly outperforms existing methods, achieving a 28%
improvement in MRA on the H&E-to-Ki67 translation task, highlighting its
effectiveness in capturing true IHC semantics.