
Dual-consistency semi-supervision combined with self-supervision for vessel segmentation in retinal OCTA images
Author(s) -
Zailiang Chen,
Yuchen Xiong,
Hao Wei,
Rongchang Zhao,
Xuanchu Duan,
Hailan Shen
Publication year - 2022
Publication title -
biomedical optics express
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.362
H-Index - 86
ISSN - 2156-7085
DOI - 10.1364/boe.458004
Subject(s) - overfitting , computer science , segmentation , artificial intelligence , labeled data , consistency (knowledge bases) , pattern recognition (psychology) , pixel , feature (linguistics) , optical coherence tomography , computer vision , machine learning , artificial neural network , medicine , linguistics , philosophy , ophthalmology
Optical coherence tomography angiography(OCTA) is an advanced noninvasive vascular imaging technique that has important implications in many vision-related diseases. The automatic segmentation of retinal vessels in OCTA is understudied, and the existing segmentation methods require large-scale pixel-level annotated images. However, manually annotating labels is time-consuming and labor-intensive. Therefore, we propose a dual-consistency semi-supervised segmentation network incorporating multi-scale self-supervised puzzle subtasks(DCSS-Net) to tackle the challenge of limited annotations. First, we adopt a novel self-supervised task in assisting semi-supervised networks in training to learn better feature representations. Second, we propose a dual-consistency regularization strategy that imposed data-based and feature-based perturbation to effectively utilize a large number of unlabeled data, alleviate the overfitting of the model, and generate more accurate segmentation predictions. Experimental results on two OCTA retina datasets validate the effectiveness of our DCSS-Net. With very little labeled data, the performance of our method is comparable with fully supervised methods trained on the entire labeled dataset.