CytoSyn: a Foundation Diffusion Model for Histopathology -- Tech Report
arXiv cs.CV / 3/20/2026
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Key Points
- CytoSyn is introduced as a state-of-the-art foundation latent diffusion model designed for histopathology to enable guided generation of highly realistic H&E-stained images.
- The work presents methodological improvements, training set scaling, sampling strategies, and addresses slide-level overfitting, culminating in CytoSyn-v2 and a detailed comparison to PixCell.
- CytoSyn was trained on over 10,000 TCGA diagnostic whole-slide images spanning 32 cancer types, and the authors observe strong cross-domain generalization, including generating inflammatory bowel disease images despite being trained on oncology slides.
- To support the research community, the authors publicly release CytoSyn’s weights, training/validation datasets, and a sample of synthetic images on HuggingFace.
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