Author
Listed:
- Ihuan Gunawan
(University of New South Wales
University of New South Wales)
- Felix V. Kohane
(University of New South Wales)
- Moumitha Dey
(University of New South Wales)
- Kathy Nguyen
(University of New South Wales)
- Ye Zheng
(University of New South Wales
Ingham Institute for Applied Medical Research)
- Daniel P. Neumann
(University of New South Wales)
- Fatemeh Vafaee
(University of New South Wales
University of New South Wales
University of New South Wales)
- Erik Meijering
(University of New South Wales
University of New South Wales
University of New South Wales)
- John G. Lock
(University of New South Wales
Ingham Institute for Applied Medical Research
University of New South Wales
University of New South Wales)
Abstract
Standard immunofluorescence imaging captures just ~4 molecular markers (4-plex) per cell, limiting dissection of complex biology. Inspired by multimodal omics-based data integration approaches, we propose an Extensible Immunofluorescence (ExIF) framework that transforms carefully designed but easily produced panels of 4-plex immunofluorescence into a unified dataset with theoretically unlimited marker plexity, using generative deep learning-based virtual labelling. ExIF enables integrated analyses of complex cell biology, exemplified here through interrogation of the epithelial-mesenchymal transition (EMT), driving significant improvements in downstream quantitative analyses usually reserved for omics data, including: classification of cell phenotypes; manifold learning of cell phenotype heterogeneity; and pseudotemporal inference of molecular marker dynamics. Introducing data integration concepts from omics to microscopy, ExIF empowers life scientists to use routine 4-plex fluorescence microscopy to quantitatively interrogate complex, multimolecular single-cell processes in a manner that approaches the performance of multiplexed labelling methods whose uptake remains limited.
Suggested Citation
Ihuan Gunawan & Felix V. Kohane & Moumitha Dey & Kathy Nguyen & Ye Zheng & Daniel P. Neumann & Fatemeh Vafaee & Erik Meijering & John G. Lock, 2025.
"Extensible Immunofluorescence (ExIF) accessibly generates high-plexity datasets by integrating standard 4-plex imaging data,"
Nature Communications, Nature, vol. 16(1), pages 1-15, December.
Handle:
RePEc:nat:natcom:v:16:y:2025:i:1:d:10.1038_s41467-025-59592-7
DOI: 10.1038/s41467-025-59592-7
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