Generative Deep Learning for Computational Destaining and Restaining of Unregistered Digital Pathology Images
Aarushi Kulkarni, Alarice Lowe, Pratik Shah

TL;DR
This study evaluates the generalization of cGAN models for computational staining and destaining of digital pathology images across different institutions, demonstrating that preprocessing can improve cross-domain performance.
Contribution
It introduces a preprocessing pipeline that enables cGAN models to generalize to out-of-distribution WSIs without retraining, highlighting the importance of preprocessing over model capacity.
Findings
Achieved PCC of 0.854 for virtual destaining across institutions.
H&E restaining outperformed direct staining in all metrics.
Preprocessing quality may limit model performance more than the model itself.
Abstract
Conditional generative adversarial networks (cGANs) have enabled high-fidelity computational staining and destaining of hematoxylin and eosin (H&E) in digital pathology whole-slide images (WSI). However, their ability to generalize to out-of-distribution WSI across institutions without retraining remains insufficiently characterized. Previously developed cGAN models trained on 102 registered prostate core biopsy WSIs from Brigham and Women's Hospital were evaluated on 82 spatially unregistered WSIs acquired at Stanford University. To mitigate domain shift without retraining, a preprocessing pipeline consisting of histogram-based stain normalization for H&E-stained WSIs and channel-wise intensity calibration for unstained WSIs was developed. Because image registration was intentionally omitted for real-world deployment conditions, the reported quantitative results are conservative lower…
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