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Follow on Google News | AI-powered Virtual Staining of Biopsies for Transplant DiagnosticsBy: ucla ita To address these problems, a research team led by Professor Aydogan Ozcan at the University of California, Los Angeles (UCLA), in collaboration with histopathologists from the University of Southern California (USC) and University of California, Davis, recently published an article in BME Frontiers (AAAS), demonstrating a panel of deep neural networks that virtually generate Hematoxylin & Eosin (H&E), Masson's Trichrome (MT), and Verhoeff-Van Gieson (EVG) stains for label-free lung tissue, as well as H&E and MT stains for label-free heart tissue. By feeding autofluorescence microscopic images of unstained biopsy sections through these AI models, researchers digitally produce high-fidelity virtual slides, faithfully replicating multiple chemical stains and highlighting transplant rejection features without using any reagents. In a blinded study involving four board-certified pathologists, the virtual stains achieved concordance rates of 82.4% for lung biopsies and 91.7% for heart biopsies in diagnosing transplant rejection, compared with conventional chemical staining methods. Quantitative assessment of the staining quality of nuclear, cytoplasmic, and extracellular features demonstrated non-inferiority of the virtual slides—and in some cases, virtual H&E outperformed standard stains, especially when histochemical artifacts were present. Beyond staining speed and accuracy, the virtual tissue staining approach also ensures consistent color uniformity across all slides, reducing inter-batch variability— Overall, this work lays the foundation for scalable, cost-effective digital pathology workflows in transplant medicine and paves the way for downstream AI-driven diagnostic tools that depend on standardized image inputs. Article: https://spj.science.org/ End
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