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A Level Set Method with Region-Scalable Fitting Energy for Retinal Layer Segmentation in Spectral-Domain Optical Coherence Tomography Images

机译:具有区域可伸缩的拟合能量的水平集方法,用于光谱域光学相干断层摄影图像中的视网膜分段

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Retinal layer segmentation of spectral-domain optical coherence tomography images plays an important role during diagnosis and analysis of ophthalmic diseases. In this paper, a novel variational level set framework with region-scalable fitting energy is proposed for automated retinal layer segmentation in SD-OCT. To the best of our knowledge, it is the first time that level set based method succeeds in ten retinal layers segmentation. The proposed framework consists of three steps. First, an anisotropic nonlinear diffusion filter is applied for speckle noise reduction and ROI contrast enhancement. Second, Canny edge detectors are used to extract initial layers: nerve fiber layer, connecting cilia and retinal pigment epithelium. Finally, the rest retinal layers are segmented by means of level set model combined with prior knowledge of retinal thickness and morphology, for which the energy function consists of region-scalable fitting energy data term, area constraint term, regularization term and length penalty term. The proposed method was tested on 50 retinal SD-OCT B-scans from 50 normal subjects. The overall unsigned border position error is 5.92 +/- 4.72 mu m. The result showed that data terms with border weight terms can keep layer segmentation results in strong border while retaining its fitting capability in weak border. The proposed method achieves better segmentation result than other active contour models.
机译:光谱域光学相干断层摄影图像的视网膜分割在眼科疾病的诊断和分析期间起着重要作用。本文提出了一种具有区域可伸缩拟合能量的新型变形水平集框架,用于SD-OCT中的自动视网膜分段。据我们所知,基于级别的方法第一次在十个视网膜层分割中成功。拟议的框架包括三个步骤。首先,施加各向异性非线性扩散滤波器用于散斑降噪和ROI对比度增强。其次,罐头边缘探测器用于提取初始层:神经纤维层,连接纤毛和视网膜色素上皮。最后,通过水平设定模型分段,与视网膜厚度和形态的先验知识相结合,能量函数由区域可伸缩的拟合能量数据项,区域约束项,正则化术语和长度惩罚术语组合。在50个正常对象的50个视网膜SD-OCT B扫描上测试了所提出的方法。整体无符号边境位置误差为5.92 +/- 4.72 mu m。结果表明,带有边框权重术语的数据项可以保持层分割导致强边的结果,同时保留其在弱边界中的拟合能力。该方法实现了比其他活动轮廓模型更好的分段结果。

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