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Generative AI for misalignment-resistant virtual staining to accelerate histopathology workflows
0
Zitationen
10
Autoren
2026
Jahr
Abstract
Accurate histopathological diagnosis typically relies on multiple chemical stains, a process that is labor-intensive, tissue-consuming, and environmentally taxing. While virtual staining offers a faster, tissue-conserving alternative, its clinical adoption is hindered by the requirement for perfectly aligned paired data, which is difficult to obtain due to tissue distortion during chemical processing. We present a robust virtual staining framework that mitigates spatial mismatches through a cascaded registration mechanism. By decoupling image generation from spatial alignment, our method enables high-fidelity staining even from imperfectly paired or misaligned datasets without altering existing model architectures. Our approach significantly outperforms state-of-the-art models across five datasets, showing a remarkable 23.8% improvement in image quality for highly misaligned samples. In blinded evaluations, experienced pathologists achieved 52% accuracy in distinguishing virtual from chemical stains, indicating that the two were indistinguishable. This framework simplifies data acquisition and provides a scalable pathway for integrating virtual staining into routine clinical workflows.
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Autoren
Institutionen
- Hong Kong University of Science and Technology(HK)
- Key Laboratory of Guangdong Province(CN)
- Nanfang Hospital(CN)
- Southern Medical University(CN)
- Chinese University of Hong Kong(HK)
- City University of Hong Kong, Shenzhen Research Institute(CN)
- Institut de Recherche et d’Innovation(FR)
- University of Hong Kong(HK)