Self-Supervised Learning from Unlabeled Fundus Photographs Improves
Segmentation of the Retina
- URL: http://arxiv.org/abs/2108.02798v1
- Date: Thu, 5 Aug 2021 18:02:56 GMT
- Title: Self-Supervised Learning from Unlabeled Fundus Photographs Improves
Segmentation of the Retina
- Authors: Jan Kuka\v{c}ka, Anja Zenz, Marcel Kollovieh, Dominik J\"ustel, and
Vasilis Ntziachristos
- Abstract summary: Fundus photography is the primary method for retinal imaging and essential for diabetic retinopathy prevention.
Current segmentation methods are not robust towards the diversity in imaging conditions and pathologies typical for real-world clinical applications.
We utilize contrastive self-supervised learning to exploit the large variety of unlabeled fundus images in the publicly available EyePACS dataset.
- Score: 4.815051667870375
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Fundus photography is the primary method for retinal imaging and essential
for diabetic retinopathy prevention. Automated segmentation of fundus
photographs would improve the quality, capacity, and cost-effectiveness of eye
care screening programs. However, current segmentation methods are not robust
towards the diversity in imaging conditions and pathologies typical for
real-world clinical applications. To overcome these limitations, we utilized
contrastive self-supervised learning to exploit the large variety of unlabeled
fundus images in the publicly available EyePACS dataset. We pre-trained an
encoder of a U-Net, which we later fine-tuned on several retinal vessel and
lesion segmentation datasets. We demonstrate for the first time that by using
contrastive self-supervised learning, the pre-trained network can recognize
blood vessels, optic disc, fovea, and various lesions without being provided
any labels. Furthermore, when fine-tuned on a downstream blood vessel
segmentation task, such pre-trained networks achieve state-of-the-art
performance on images from different datasets. Additionally, the pre-training
also leads to shorter training times and an improved few-shot performance on
both blood vessel and lesion segmentation tasks. Altogether, our results
showcase the benefits of contrastive self-supervised pre-training which can
play a crucial role in real-world clinical applications requiring robust models
able to adapt to new devices with only a few annotated samples.
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