Generative Deep Learning for Computational Destaining and Restaining of Unregistered Digital Pathology Images
Quick Take
cGANs enable effective computational staining and destaining of pathology images with preprocessing adaptation.
Key Points
- Evaluated cGANs on unregistered pathology images.
- Preprocessing improved generalization without retraining.
- Results indicate potential for external dataset applications.
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