nnUNet RASPP for Retinal OCT Fluid Detection, Segmentation and Generalisation over Variations of Data Sources
Nchongmaje Ndipenoch, Alina Miron, Zidong Wang, Yongmin Li

TL;DR
This paper introduces enhanced nnUNet variants, including nnUnet_RASPP, that achieve high accuracy and robust generalization in retinal OCT fluid segmentation across different device vendors, outperforming existing methods.
Contribution
The work presents two improved nnUNet models with residual and atrous spatial pyramid pooling, demonstrating superior generalization and performance on multi-vendor retinal OCT datasets.
Findings
Achieved a mean Dice Score of 82.3% for segmentation.
Obtained 100% AUC for fluid detection across classes.
Outperformed current state-of-the-art algorithms.
Abstract
Retinal Optical Coherence Tomography (OCT), a noninvasive cross-sectional scan of the eye with qualitative 3D visualization of the retinal anatomy is use to study the retinal structure and the presence of pathogens. The advent of the retinal OCT has transformed ophthalmology and it is currently paramount for the diagnosis, monitoring and treatment of many eye pathogens including Macular Edema which impairs vision severely or Glaucoma that can cause irreversible blindness. However the quality of retinal OCT images varies among device manufacturers. Deep Learning methods have had their success in the medical image segmentation community but it is still not clear if the level of success can be generalised across OCT images collected from different device vendors. In this work we propose two variants of the nnUNet [8]. The standard nnUNet and an enhanced vision call nnUnet_RASPP (nnU-Net…
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Taxonomy
TopicsRetinal Imaging and Analysis · Retinal Diseases and Treatments · Optical Coherence Tomography Applications
