Author
Listed:
- Eric Wu
(Enable Medicine
Stanford University)
- Matthew Bieniosek
(Enable Medicine)
- Zhenqin Wu
(Enable Medicine)
- Nitya Thakkar
(Stanford University)
- Gregory W. Charville
(Stanford University)
- Ahmad Makky
(University Hospital and Comprehensive Cancer Center Tübingen)
- Christian M. Schürch
(University Hospital and Comprehensive Cancer Center Tübingen
University of Tübingen)
- Jeroen R. Huyghe
(Fred Hutchinson Cancer Center)
- Ulrike Peters
(Fred Hutchinson Cancer Center
University of Washington)
- Christopher I. Li
(Fred Hutchinson Cancer Center
University of Washington)
- Li Li
(Ochsner Health)
- Hannah Giba
(University of Chicago
University of Chicago)
- Vivek Behera
(University of Chicago
University of Chicago)
- Arjun Raman
(University of Chicago
University of Chicago
University of Chicago)
- Alexandro E. Trevino
(Enable Medicine)
- Aaron T. Mayer
(Enable Medicine)
- James Zou
(Enable Medicine
Stanford University
Stanford University)
Abstract
Hematoxylin and eosin (H&E) is a common and inexpensive histopathology assay. Though widely used and information-rich, it cannot directly inform about specific molecular markers, which require additional experiments to assess. To address this gap, we present ROSIE, a deep-learning framework that computationally imputes the expression and localization of dozens of proteins from H&E images. Our model is trained on a dataset of over 1300 paired and aligned H&E and multiplex immunofluorescence (mIF) samples from over a dozen tissues and disease conditions, spanning over 16 million cells. Validation of our in silico mIF staining method on held-out H&E samples demonstrates that the predicted biomarkers are effective in identifying cell phenotypes, particularly distinguishing lymphocytes such as B cells and T cells, which are not readily discernible with H&E staining alone. Additionally, ROSIE facilitates the robust identification of stromal and epithelial microenvironments and immune cell subtypes like tumor-infiltrating lymphocytes (TILs), which are important for understanding tumor-immune interactions and can help inform treatment strategies in cancer research.
Suggested Citation
Eric Wu & Matthew Bieniosek & Zhenqin Wu & Nitya Thakkar & Gregory W. Charville & Ahmad Makky & Christian M. Schürch & Jeroen R. Huyghe & Ulrike Peters & Christopher I. Li & Li Li & Hannah Giba & Vive, 2025.
"ROSIE: AI generation of multiplex immunofluorescence staining from histopathology images,"
Nature Communications, Nature, vol. 16(1), pages 1-13, December.
Handle:
RePEc:nat:natcom:v:16:y:2025:i:1:d:10.1038_s41467-025-62346-0
DOI: 10.1038/s41467-025-62346-0
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