Sangam: A Confluence of Knowledge Streams

Retinal vascular segmentation using superpixel-based line operator and its application to vascular topology estimation

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dc.creator Na, Tong
dc.creator Xie, Jianyang
dc.creator Zhao, Yitian
dc.creator Zhao, Yifan
dc.creator Liu, Yue
dc.creator Wang, Yongtian
dc.creator Liu, Jiang
dc.date 2018-08-01T08:25:53Z
dc.date 2018-08-01T08:25:53Z
dc.date 2018-05-09
dc.date.accessioned 2022-05-25T16:37:26Z
dc.date.available 2022-05-25T16:37:26Z
dc.identifier Tong Na, Jianyang Xie, Yitian Zhao, et al., Retinal vascular segmentation using superpixel-based line operator and its application to vascular topology estimation, Medical Physics, Volume 45, Issue 7, July 2018, pp. 3132-3146
dc.identifier 0094-2405
dc.identifier https://doi.org/10.1002/mp.12953
dc.identifier http://dspace.lib.cranfield.ac.uk/handle/1826/13371
dc.identifier.uri http://localhost:8080/xmlui/handle/CUHPOERS/182229
dc.description Purpose: Automatic methods of analyzing of retinal vascular networks, such as retinal blood vessel detection, vascular network topology estimation, and arteries / veins classi cation are of great assistance to the ophthalmologist in terms of diagnosis and treatment of a wide spectrum of diseases. Methods: We propose a new framework for precisely segmenting retinal vasculatures, constructing retinal vascular network topology, and separating the arteries and veins. A non-local total variation inspired Retinex model is employed to remove the image intensity inhomogeneities and relatively poor contrast. For better generalizability and segmentation performance, a superpixel based line operator is proposed as to distinguish between lines and the edges, thus allowing more tolerance in the position of the respective contours. The concept of dominant sets clustering is adopted to estimate retinal vessel topology and classify the vessel network into arteries and veins. Results: The proposed segmentation method yields competitive results on three pub- lic datasets (STARE, DRIVE, and IOSTAR), and it has superior performance when com- pared with unsupervised segmentation methods, with accuracy of 0.954, 0.957, and 0.964, respectively. The topology estimation approach has been applied to ve public databases 1 (DRIVE,STARE, INSPIRE, IOSTAR, and VICAVR) and achieved high accuracy of 0.830, 0.910, 0.915, 0.928, and 0.889, respectively. The accuracies of arteries / veins classi cation based on the estimated vascular topology on three public databases (INSPIRE, DRIVE and VICAVR) are 0.90.9, 0.910, and 0.907, respectively. Conclusions: The experimental results show that the proposed framework has e ectively addressed crossover problem, a bottleneck issue in segmentation and vascular topology recon- struction. The vascular topology information signi cantly improves the accuracy on arteries / veins classi cation.
dc.language en
dc.rights Attribution-NonCommercial 4.0 International
dc.rights http://creativecommons.org/licenses/by-nc/4.0/
dc.subject retinal vascular
dc.subject segmentation
dc.subject topology
dc.subject superpixel
dc.subject line operator
dc.subject dominant sets
dc.title Retinal vascular segmentation using superpixel-based line operator and its application to vascular topology estimation
dc.type Article


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