» Articles » PMID: 33510811

Choroid Segmentation of Retinal OCT Images Based on CNN Classifier and - Fitter

Overview
Publisher Hindawi
Date 2021 Jan 29
PMID 33510811
Citations 5
Authors
Affiliations
Soon will be listed here.
Abstract

Optical coherence tomography (OCT) is a noninvasive cross-sectional imaging technology used to examine the retinal structure and pathology of the eye. Evaluating the thickness of the choroid using OCT images is of great interests for clinicians and researchers to monitor the choroidal thickness in many ocular diseases for diagnosis and management. However, manual segmentation and thickness profiling of choroid are time-consuming which lead to low efficiency in analyzing a large quantity of OCT images for swift treatment of patients. In this paper, an automatic segmentation approach based on convolutional neural network (CNN) classifier and - (0 < < 1) fitter is presented to identify boundaries of the choroid and to generate thickness profile of the choroid from retinal OCT images. The method of detecting inner choroidal surface is motivated by its biological characteristics after light reflection, while the outer chorioscleral interface segmentation is transferred into a classification and fitting problem. The proposed method is tested in a data set of clinically obtained retinal OCT images with ground-truth marked by clinicians. Our numerical results demonstrate the effectiveness of the proposed approach to achieve stable and clinically accurate autosegmentation of the choroid.

Citing Articles

Applications of Artificial Intelligence in Choroid Visualization for Myopia: A Comprehensive Scoping Review.

Alhalafi A Middle East Afr J Ophthalmol. 2025; 30(4):189-202.

PMID: 39959595 PMC: 11823532. DOI: 10.4103/meajo.meajo_154_24.


A novel multi-scale and fine-grained network for large choroidal vessels segmentation in OCT.

Huang W, Yan Q, Mou L, Zhao Y, Chen W Front Cell Dev Biol. 2025; 13:1508358.

PMID: 39958890 PMC: 11827571. DOI: 10.3389/fcell.2025.1508358.


Choroidal Optical Coherence Tomography Angiography: Noninvasive Choroidal Vessel Analysis via Deep Learning.

Zhu L, Li J, Hu Y, Zhu R, Zeng S, Rong P Health Data Sci. 2024; 4:0170.

PMID: 39257642 PMC: 11383389. DOI: 10.34133/hds.0170.


A Deep Learning-Based Fully Automated Program for Choroidal Structure Analysis Within the Region of Interest in Myopic Children.

Xuan M, Wang W, Shi D, Tong J, Zhu Z, Jiang Y Transl Vis Sci Technol. 2023; 12(3):22.

PMID: 36947047 PMC: 10050911. DOI: 10.1167/tvst.12.3.22.


Choroidal layer segmentation in OCT images by a boundary enhancement network.

Wu W, Gong Y, Hao H, Zhang J, Su P, Yan Q Front Cell Dev Biol. 2022; 10:1060241.

PMID: 36438560 PMC: 9691264. DOI: 10.3389/fcell.2022.1060241.


References
1.
Keller B, Cunefare D, Grewal D, Mahmoud T, Izatt J, Farsiu S . Length-adaptive graph search for automatic segmentation of pathological features in optical coherence tomography images. J Biomed Opt. 2016; 21(7):76015. PMC: 4963530. DOI: 10.1117/1.JBO.21.7.076015. View

2.
Sezer T, Altinisik M, Koytak I, Ozdemir M . The Choroid and Optical Coherence Tomography. Turk J Ophthalmol. 2016; 46(1):30-37. PMC: 5076307. DOI: 10.4274/tjo.10693. View

3.
LaRocca F, Chiu S, McNabb R, Kuo A, Izatt J, Farsiu S . Robust automatic segmentation of corneal layer boundaries in SDOCT images using graph theory and dynamic programming. Biomed Opt Express. 2011; 2(6):1524-38. PMC: 3114221. DOI: 10.1364/BOE.2.001524. View

4.
Mayer M, Hornegger J, Mardin C, Tornow R . Retinal Nerve Fiber Layer Segmentation on FD-OCT Scans of Normal Subjects and Glaucoma Patients. Biomed Opt Express. 2011; 1(5):1358-1383. PMC: 3018129. DOI: 10.1364/BOE.1.001358. View

5.
Esmaeelpour M, Povazay B, Hermann B, Hofer B, Kajic V, Kapoor K . Three-dimensional 1060-nm OCT: choroidal thickness maps in normal subjects and improved posterior segment visualization in cataract patients. Invest Ophthalmol Vis Sci. 2010; 51(10):5260-6. DOI: 10.1167/iovs.10-5196. View