Lou Shiliang, Chen Xiaodong, Wang Yi, Cai Huaiyu, Chen Si, Liu Linbo
Opt Express. 2023 Feb 13;31(4):6862-6876. doi: 10.1364/OE.472154.
Morphology and functional metrics of retinal layers are important biomarkers for many human ophthalmic diseases. Automatic and accurate segmentation of retinal layers is crucial for disease diagnosis and research. To improve the performance of retinal layer segmentation, a multiscale joint segmentation framework for retinal optical coherence tomography (OCT) images based on bidirectional wave algorithm and improved graph theory is proposed. In this framework, the bidirectional wave algorithm was used to segment edge information in multiscale images, and the improved graph theory was used to modify edge information globally, to realize automatic and accurate segmentation of eight retinal layer boundaries. This framework was tested on two public datasets and two OCT imaging systems. The test results show that, compared with other state-of-the-art methods, this framework does not need data pre-training and parameter pre-adjustment on different datasets, and can achieve sub-pixel retinal layer segmentation on a low-configuration computer.
视网膜各层的形态学和功能指标是许多人类眼科疾病的重要生物标志物。视网膜层的自动且准确分割对于疾病诊断和研究至关重要。为提高视网膜层分割的性能,提出了一种基于双向波算法和改进图论的视网膜光学相干断层扫描(OCT)图像多尺度联合分割框架。在此框架中,双向波算法用于分割多尺度图像中的边缘信息,改进图论用于全局修改边缘信息,以实现八个视网膜层边界的自动且准确分割。该框架在两个公共数据集和两个OCT成像系统上进行了测试。测试结果表明,与其他最先进的方法相比,该框架无需在不同数据集上进行数据预训练和参数预调整,并且能够在低配置计算机上实现亚像素级的视网膜层分割。