» Articles » PMID: 35308538

A Few-Shot Learning-Based Retinal Vessel Segmentation Method for Assisting in the Central Serous Chorioretinopathy Laser Surgery

Overview
Specialty General Medicine
Date 2022 Mar 21
PMID 35308538
Authors
Affiliations
Soon will be listed here.
Abstract

Background: The location of retinal vessels is an important prerequisite for Central Serous Chorioretinopathy (CSC) Laser Surgery, which does not only assist the ophthalmologist in marking the location of the leakage point (LP) on the fundus color image but also avoids the damage of the laser spot to the vessel tissue, as well as the low efficiency of the surgery caused by the absorption of laser energy by retinal vessels. In acquiring an excellent intra- and cross-domain adaptability, the existing deep learning (DL)-based vessel segmentation scheme must be driven by big data, which makes the densely annotated work tedious and costly.

Methods: This paper aims to explore a new vessel segmentation method with a few samples and annotations to alleviate the above problems. Firstly, a key solution is presented to transform the vessel segmentation scene into the few-shot learning task, which lays a foundation for the vessel segmentation task with a few samples and annotations. Then, we improve the existing few-shot learning framework as our baseline model to adapt to the vessel segmentation scenario. Next, the baseline model is upgraded from the following three aspects: (1) A multi-scale class prototype extraction technique is designed to obtain more sufficient vessel features for better utilizing the information from the support images; (2) The multi-scale vessel features of the query images, inferred by the support image class prototype information, are gradually fused to provide more effective guidance for the vessel extraction tasks; and (3) A multi-scale attention module is proposed to promote the consideration of the global information in the upgraded model to assist vessel localization. Concurrently, the integrated framework is further conceived to appropriately alleviate the low performance of a single model in the cross-domain vessel segmentation scene, enabling to boost the domain adaptabilities of both the baseline and the upgraded models.

Results: Extensive experiments showed that the upgraded operation could further improve the performance of vessel segmentation significantly. Compared with the listed methods, both the baseline and the upgraded models achieved competitive results on the three public retinal image datasets (i.e., CHASE_DB, DRIVE, and STARE). In the practical application of private CSC datasets, the integrated scheme partially enhanced the domain adaptabilities of the two proposed models.

Citing Articles

Systematic bibliometric and visualized analysis of research hotspots and trends on the application of artificial intelligence in glaucoma from 2013 to 2022.

Liu C, Wang L, Zhu K, Liu C, Duan J Int J Ophthalmol. 2024; 17(9):1731-1742.

PMID: 39296573 PMC: 11367425. DOI: 10.18240/ijo.2024.09.22.


Artificial intelligence in chorioretinal pathology through fundoscopy: a comprehensive review.

Driban M, Yan A, Selvam A, Ong J, Vupparaboina K, Chhablani J Int J Retina Vitreous. 2024; 10(1):36.

PMID: 38654344 PMC: 11036694. DOI: 10.1186/s40942-024-00554-4.


Hypermixed Convolutional Neural Network for Retinal Vein Occlusion Classification.

Zhang G, Sun B, Zhang Z, Wu S, Zhuo G, Rong H Dis Markers. 2022; 2022:1730501.

PMID: 36408465 PMC: 9674409. DOI: 10.1155/2022/1730501.


Systematic Bibliometric and Visualized Analysis of Research Hotspots and Trends on the Application of Artificial Intelligence in Ophthalmic Disease Diagnosis.

Zhao J, Lu Y, Zhu S, Li K, Jiang Q, Yang W Front Pharmacol. 2022; 13:930520.

PMID: 35754490 PMC: 9214201. DOI: 10.3389/fphar.2022.930520.

References
1.
Xu M, Qi S, Yue Y, Teng Y, Xu L, Yao Y . Segmentation of lung parenchyma in CT images using CNN trained with the clustering algorithm generated dataset. Biomed Eng Online. 2019; 18(1):2. PMC: 6317251. DOI: 10.1186/s12938-018-0619-9. View

2.
Zhou L, Yu Q, Xu X, Gu Y, Yang J . Improving dense conditional random field for retinal vessel segmentation by discriminative feature learning and thin-vessel enhancement. Comput Methods Programs Biomed. 2017; 148:13-25. DOI: 10.1016/j.cmpb.2017.06.016. View

3.
Cui H, Wei D, Ma K, Gu S, Zheng Y . A Unified Framework for Generalized Low-Shot Medical Image Segmentation With Scarce Data. IEEE Trans Med Imaging. 2020; 40(10):2656-2671. DOI: 10.1109/TMI.2020.3045775. View

4.
Staal J, Abramoff M, Niemeijer M, Viergever M, van Ginneken B . Ridge-based vessel segmentation in color images of the retina. IEEE Trans Med Imaging. 2004; 23(4):501-9. DOI: 10.1109/TMI.2004.825627. View

5.
Tian S, Wang M, Yuan F, Dai N, Sun Y, Xie W . Efficient Computer-Aided Design of Dental Inlay Restoration: A Deep Adversarial Framework. IEEE Trans Med Imaging. 2021; 40(9):2415-2427. DOI: 10.1109/TMI.2021.3077334. View