Author
Listed:
- Emmeline E. Brown
(University College London
Moorfields Eye Hospital)
- Andrew A. Guy
(University College London
University of Cambridge)
- Natalie A. Holroyd
(University College London)
- Paul W. Sweeney
(University of Cambridge)
- Lucie Gourmet
(University College London)
- Hannah Coleman
(University College London)
- Claire Walsh
(University College London
University College London)
- Athina E. Markaki
(University of Cambridge)
- Rebecca Shipley
(University College London
University College London)
- Ranjan Rajendram
(Moorfields Eye Hospital
University College London)
- Simon Walker-Samuel
(University College London)
Abstract
Disruption of retinal vasculature is linked to various diseases, including diabetic retinopathy and macular degeneration, leading to vision loss. We present here a novel algorithmic approach that generates highly realistic digital models of human retinal blood vessels, based on established biophysical principles, including fully-connected arterial and venous trees with a single inlet and outlet. This approach, using physics-informed generative adversarial networks (PI-GAN), enables the segmentation and reconstruction of blood vessel networks with no human input and which out-performs human labelling. Segmentation of DRIVE and STARE retina photograph datasets provided near state-of-the-art vessel segmentation, with training on only a small (n = 100) simulated dataset. Our findings highlight the potential of PI-GAN for accurate retinal vasculature characterization, with implications for improving early disease detection, monitoring disease progression, and improving patient care.
Suggested Citation
Emmeline E. Brown & Andrew A. Guy & Natalie A. Holroyd & Paul W. Sweeney & Lucie Gourmet & Hannah Coleman & Claire Walsh & Athina E. Markaki & Rebecca Shipley & Ranjan Rajendram & Simon Walker-Samuel, 2024.
"Physics-informed deep generative learning for quantitative assessment of the retina,"
Nature Communications, Nature, vol. 15(1), pages 1-14, December.
Handle:
RePEc:nat:natcom:v:15:y:2024:i:1:d:10.1038_s41467-024-50911-y
DOI: 10.1038/s41467-024-50911-y
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