Beyond Retinal Layers: An Automatic Active Contour Model with Pre-Fitting Energy for Subretinal Fluid Segmentation in SD-OCT Images

Nursultan Taubaldy, Zexuan Ji
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引用次数: 1

Abstract

Automatically and accurately segment neurosensory retinal detachment (NRD) associated subretinal fluid in spectral-domain optical coherence tomography (SD-OCT) is vital for the evaluation of central serous chorioretinopathy (CSC). A two-stage unsupervised fluid segmentation algorithm is proposed. In the first stage, the candidate fluid region is automatically estimated to obtain the initial curve of the fluid area for the level set method. In the second stage, the local Gaussian pre-fitting energy model is proposed to segment subretinal fluid. The testing data set with 23 longitudinal SD-OCT cube scans from 12 eyes of 12 patients are used to evaluate the proposed algorithm. Comparing with two independent experts' manual segmentations, our algorithm obtained a mean positive predicative value 94.0% and dice similarity coefficient 94.4%, respectively. Without retinal layer segmentation, the proposed algorithm can obtain high segmentation accuracy. Our model may provide reliable subretinal fluid segmentations for NRD from SD-OCT images and shows the potential to improve clinical therapy for CSC.
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超越视网膜层:SD-OCT图像视网膜下液分割的预拟合能量自动主动轮廓模型
在光谱域光学相干断层扫描(SD-OCT)中,自动准确地分割神经感觉性视网膜脱离(NRD)相关的视网膜下液对于评估中枢浆液性脉络膜视网膜病变(CSC)至关重要。提出了一种两阶段无监督流体分割算法。第一阶段,自动估计候选流体区域,得到水平集法流体区域的初始曲线;第二阶段,提出了局部高斯预拟合能量模型对视网膜下液进行分割。使用12例患者12只眼的23个纵向SD-OCT立方体扫描的测试数据集来评估所提出的算法。对比两位独立专家的人工分割,我们的算法平均正预测值为94.0%,骰子相似系数为94.4%。该算法不需要进行视网膜层分割,可以获得较高的分割精度。我们的模型可以从SD-OCT图像中为NRD提供可靠的视网膜下液分割,并显示出改善CSC临床治疗的潜力。
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