The RETA Benchmark for Retinal Vascular Tree Analysis
- URL: http://arxiv.org/abs/2111.11658v1
- Date: Tue, 23 Nov 2021 05:10:38 GMT
- Title: The RETA Benchmark for Retinal Vascular Tree Analysis
- Authors: Xingzheng Lyu, Li Cheng, Sanyuan Zhang
- Abstract summary: We construct a novel benchmark RETA with 81 labeled vessel masks aiming to facilitate retinal vessel analysis.
During dataset construction, we strived to control inter-annotator variability and intra-annotator variability.
Users could develop vessel segmentation algorithms or evaluate vessel segmentation performance with our dataset.
- Score: 6.923431677344723
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Topological and geometrical analysis of retinal blood vessel is a
cost-effective way for early detection of many common diseases. Meanwhile,
automated vessel segmentation and vascular tree analysis are still lacking in
terms of generalization capability. In this work, we construct a novel
benchmark RETA with 81 labeled vessel masks aiming to facilitate retinal vessel
analysis. A semi-automated coarse-to-fine workflow is proposed to annotating
vessel pixels. During dataset construction, we strived to control
inter-annotator variability and intra-annotator variability by performing
multi-stage annotation and label disambiguation on self-developed dedicated
software. In addition to binary vessel masks, we obtained vessel annotations
containing artery/vein masks, vascular skeletons, bifurcations, trees and
abnormalities during vessel labelling. Both subjective and objective quality
validation of labeled vessel masks have demonstrated significant improved
quality over other publicly datasets. The annotation software is also made
publicly available for vessel annotation visualization. Users could develop
vessel segmentation algorithms or evaluate vessel segmentation performance with
our dataset. Moreover, our dataset might be a good research source for
cross-modality tubular structure segmentation.
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