Automated segmentation of retinal fluid volumes from structural and angiographic optical coherence tomography using deep learning
Yukun Guo, Tristan T. Hormel, Honglian Xiong, Jie Wang, Thomas S., Hwang, Yali Jia

TL;DR
This paper introduces ReF-Net, a deep learning CNN that accurately segments volumetric retinal fluid from OCT and OCTA scans, improving diagnostic potential for diabetic retinopathy and edema.
Contribution
The study presents a novel deep CNN architecture for volumetric retinal fluid segmentation, demonstrating improved accuracy and robustness, especially when combining OCT and OCTA data.
Findings
ReF-Net achieves high segmentation accuracy with F1-score of 0.864.
Including OCTA data enhances segmentation performance.
Volumetric fluid analysis surpasses 2D projections in clinical insights.
Abstract
Purpose: We proposed a deep convolutional neural network (CNN), named Retinal Fluid Segmentation Network (ReF-Net) to segment volumetric retinal fluid on optical coherence tomography (OCT) volume. Methods: 3 x 3-mm OCT scans were acquired on one eye by a 70-kHz OCT commercial AngioVue system (RTVue-XR; Optovue, Inc.) from 51 participants in a clinical diabetic retinopathy (DR) study (45 with retinal edema and 6 healthy controls). A CNN with U-Net-like architecture was constructed to detect and segment the retinal fluid. Cross-sectional OCT and angiography (OCTA) scans were used for training and testing ReF-Net. The effect of including OCTA data for retinal fluid segmentation was investigated in this study. Volumetric retinal fluid can be constructed using the output of ReF-Net. Area-under-Receiver-Operating-Characteristic-curve (AROC), intersection-over-union (IoU), and F1-score were…
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