Using Deep Learning to Segment Retinal Vascular Leakage and Occlusion in Retinal Vasculitis
- PMID: 38261457
- DOI: 10.1080/09273948.2024.2305185
Using Deep Learning to Segment Retinal Vascular Leakage and Occlusion in Retinal Vasculitis
Abstract
Purpose: Retinal vasculitis (RV) is characterised by retinal vascular leakage, occlusion or both on fluorescein angiography (FA). There is no standard scheme available to segment RV features. We aimed to develop a deep learning model to segment both vascular leakage and occlusion in RV.
Methods: Four hundred and sixty-three FA images from 82 patients with retinal vasculitis were used to develop a deep learning model, in 60:20:20 ratio for training:validation:testing. Parameters, including deep learning architectures (DeeplabV3+, UNet++ and UNet), were altered to find the best binary segmentation model separately for retinal vascular leakage and occlusion, using a Dice score to determine the reliability of each model.
Results: Our best model for vascular leakage had a Dice score of 0.6279 (95% confidence interval (CI) 0.5584-0.6974). For occlusion, the best model achieved a Dice score of 0.6992 (95% CI 0.6109-0.7874).
Conclusion: Our RV segmentation models could perform reliable segmentation for retinal vascular leakage and occlusion in FAs of RV patients.
Keywords: Artificial intelligence; deep learning; fluorescein angiography; posterior uveitis; retinal vasculitis.
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