Ruan Yanan, Xue Jie, Li Tianlai, Liu Danhua, Lu Hua, Chen Meirong, Liu Tingting, Niu Sijie, Li Dengwang
Shandong Key Laboratory of Medical Physics and Image Processing, Shandong Provincial Engineering and Technical Center of Light Manipulation, School of Physics and Electronics, Shandong Normal University, Jinan, 250014, China.
These authors have contributed equally to this work.
Biomed Opt Express. 2019 Jul 15;10(8):3987-4002. doi: 10.1364/BOE.10.003987. eCollection 2019 Aug 1.
As a function of the spatial position of the optical coherence tomography (OCT) image, retinal layer thickness is an important diagnostic indicator for many retinal diseases. Reliable segmentation of the retinal layer is necessary for extracting useful clinical information. However, manual segmentation of these layers is time-consuming and prone to bias. Furthermore, due to speckle noise, low image contrast, retinal detachment, and also irregular morphological features make the automatic segmentation task challenging. To alleviate these challenges, in this paper, we propose a new coarse-fine framework combining the full convolutional network (FCN) with a multiphase level set (named FCN-MLS) for automatic segmentation of nine boundaries in retinal spectral OCT images. In the coarse stage, FCN is used to learn the characteristics of specific retinal layer boundaries and achieve classification of four retinal layers. The boundaries are then extracted and the remaining boundaries are initialized based on a priori information about the thickness of the retinal layer. In order to prevent the overlapping of the segmentation interfaces, a regional restriction technique is used in the multi-phase level to evolve the boundaries to achieve fine nine retinal layers segmentation. Experimental results on 1280 B-scans show that the proposed method can segment nine retinal boundaries accurately. Compared with the manual delineation, the overall mean absolute boundary location difference and the overall mean absolute thickness difference were 5.88 ± 2.38μm and 5.81 ± 2.19μm, which showed a good consistency with manual segmentation by the physicians. Our experimental results also outperform state-of-the-art methods.
作为光学相干断层扫描(OCT)图像空间位置的一个函数,视网膜层厚度是许多视网膜疾病的重要诊断指标。对视网膜层进行可靠分割对于提取有用的临床信息是必要的。然而,手动分割这些层既耗时又容易产生偏差。此外,由于散斑噪声、低图像对比度、视网膜脱离以及不规则的形态特征,使得自动分割任务具有挑战性。为了缓解这些挑战,在本文中,我们提出了一种新的粗细框架,将全卷积网络(FCN)与多相水平集相结合(命名为FCN-MLS),用于视网膜光谱OCT图像中九个边界的自动分割。在粗分割阶段,使用FCN学习特定视网膜层边界的特征并实现四个视网膜层的分类。然后提取边界,并根据视网膜层厚度的先验信息初始化其余边界。为了防止分割界面的重叠,在多相水平集中使用区域限制技术来演化边界,以实现九个视网膜层的精细分割。对1280次B扫描的实验结果表明,所提出的方法能够准确分割九个视网膜边界。与手动描绘相比,总体平均绝对边界位置差异和总体平均绝对厚度差异分别为5.88±2.38μm和5.81±2.19μm,与医生的手动分割显示出良好的一致性。我们的实验结果也优于现有方法。