ReLayNet: Retinal Layer and Fluid Segmentation of Macular Optical Coherence Tomography using Fully Convolutional Network
About
Optical coherence tomography (OCT) is used for non-invasive diagnosis of diabetic macular edema assessing the retinal layers. In this paper, we propose a new fully convolutional deep architecture, termed ReLayNet, for end-to-end segmentation of retinal layers and fluid masses in eye OCT scans. ReLayNet uses a contracting path of convolutional blocks (encoders) to learn a hierarchy of contextual features, followed by an expansive path of convolutional blocks (decoders) for semantic segmentation. ReLayNet is trained to optimize a joint loss function comprising of weighted logistic regression and Dice overlap loss. The framework is validated on a publicly available benchmark dataset with comparisons against five state-of-the-art segmentation methods including two deep learning based approaches to substantiate its effectiveness.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Layer Segmentation | Retinal OCT (test) | RMSE (µm)2.69 | 29 | |
| Retinal Layer Segmentation | DUKE DME | ILM Boundary Error3.9 | 15 | |
| Retinal layer boundary segmentation | Clinical OCT dataset (test) | RMSE (ILM boundary)3.6 | 5 |