A Benchmark for Studying Diabetic Retinopathy: Segmentation, Grading,
and Transferability
- URL: http://arxiv.org/abs/2008.09772v3
- Date: Wed, 11 Nov 2020 10:49:15 GMT
- Title: A Benchmark for Studying Diabetic Retinopathy: Segmentation, Grading,
and Transferability
- Authors: Yi Zhou, Boyang Wang, Lei Huang, Shanshan Cui and Ling Shao
- Abstract summary: People with diabetes are at risk of developing diabetic retinopathy (DR)
Computer-aided DR diagnosis is a promising tool for early detection of DR and severity grading.
This dataset has 1,842 images with pixel-level DR-related lesion annotations, and 1,000 images with image-level labels graded by six board-certified ophthalmologists.
- Score: 76.64661091980531
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: People with diabetes are at risk of developing an eye disease called diabetic
retinopathy (DR). This disease occurs when high blood glucose levels cause
damage to blood vessels in the retina. Computer-aided DR diagnosis is a
promising tool for early detection of DR and severity grading, due to the great
success of deep learning. However, most current DR diagnosis systems do not
achieve satisfactory performance or interpretability for ophthalmologists, due
to the lack of training data with consistent and fine-grained annotations. To
address this problem, we construct a large fine-grained annotated DR dataset
containing 2,842 images (FGADR). This dataset has 1,842 images with pixel-level
DR-related lesion annotations, and 1,000 images with image-level labels graded
by six board-certified ophthalmologists with intra-rater consistency. The
proposed dataset will enable extensive studies on DR diagnosis. We set up three
benchmark tasks for evaluation: 1. DR lesion segmentation; 2. DR grading by
joint classification and segmentation; 3. Transfer learning for ocular
multi-disease identification. Moreover, a novel inductive transfer learning
method is introduced for the third task. Extensive experiments using different
state-of-the-art methods are conducted on our FGADR dataset, which can serve as
baselines for future research.
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