Chen Zailiang, Xiong Yuchen, Wei Hao, Zhao Rongchang, Duan Xuanchu, Shen Hailan
School of Information Science and Engineering, Central South University, Changsha 410083, China.
Changsha Aier Eye Hospital, Changsha 410015, China.
Biomed Opt Express. 2022 Apr 21;13(5):2824-2834. doi: 10.1364/BOE.458004. eCollection 2022 May 1.
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.
光学相干断层扫描血管造影(OCTA)是一种先进的非侵入性血管成像技术,在许多与视力相关的疾病中具有重要意义。OCTA中视网膜血管的自动分割研究较少,现有的分割方法需要大规模的像素级标注图像。然而,手动标注标签既耗时又费力。因此,我们提出了一种结合多尺度自监督拼图子任务的双一致性半监督分割网络(DCSS-Net)来应对标注有限的挑战。首先,我们采用一种新颖的自监督任务来辅助半监督网络训练,以学习更好的特征表示。其次,我们提出了一种双一致性正则化策略,对基于数据和基于特征的扰动进行约束,以有效利用大量未标注数据,减轻模型的过拟合,并生成更准确的分割预测。在两个OCTA视网膜数据集上的实验结果验证了我们的DCSS-Net的有效性。在只有很少标注数据的情况下,我们方法的性能与在整个标注数据集上训练的全监督方法相当。