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Multimodal Segmentation of Optic Disc and Cup from SD-OCT and Color Fundus Photographs Using a Machine-Learning Graph-Based Approach

机译:使用基于机器学习图的方法从SD-OCT和彩色眼底照片对视盘和杯进行多峰分割

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摘要

In this work, a multimodal approach is proposed to use the complementary information from fundus photographs and spectral domain optical coherence tomography (SD-OCT) volumes in order to segment the optic disc and cup boundaries. The problem is formulated as an optimization problem where the optimal solution is obtained using a machine-learning theoretical graph-based method. In particular, first the fundus photograph is registered to the 2D projection of the SD-OCT volume. Three in-region cost functions are designed using a random forest classifier corresponding to three regions of cup, rim, and background. Next, the volumes are resampled to create radial scans in which the Bruch’s Membrane Opening (BMO) endpoints are easier to detect. Similar to in-region cost function design, the disc-boundary cost function is designed using a random forest classifier for which the features are created by applying the Haar Stationary Wavelet Transform (SWT) to the radial projection image. A multisurface graph-based approach utilizes the in-region and disc-boundary cost images to segment the boundaries of optic disc and cup under feasibility constraints. The approach is evaluated on 25 multimodal image pairs from 25 subjects in a leave-one-out fashion (by subject). The performances of the graph-theoretic approach using three sets of cost functions are compared: 1) using unimodal (OCT only) in-region costs, 2) using multimodal in-region costs, and 3) using multimodal in-region and disc-boundary costs. Results show that the multimodal approaches outperform the unimodal approach in segmenting the optic disc and cup.
机译:在这项工作中,提出了一种多模态方法,以使用眼底照片和光谱域光学相干断层扫描(SD-OCT)量的补充信息来分割视盘和杯状边界。该问题被表述为优化问题,其中使用基于机器学习理论图的方法获得最优解。特别是,首先将眼底照片配准到SD-OCT体积的2D投影。使用随机森林分类器设计了三个区域成本函数,这些分类器对应于杯子,边缘和背景的三个区域。接下来,对体积进行重新采样以创建径向扫描,在该扫描中,更容易检测Bruch的膜开口(BMO)端点。与区域内成本函数设计类似,使用随机森林分类器设计光盘边界成本函数,其特征是通过将Haar平稳小波变换(SWT)应用于径向投影图像来创建特征。基于多表面图的方法利用区域内和圆盘边界成本图像在可行性约束下分割视盘和杯的边界。该方法以一劳永逸的方式(按受试者)对来自25个受试者的25个多峰图像对进行了评估。比较了使用三组成本函数的图论方法的性能:1)使用单峰(仅适用于OCT)区域内成本,2)使用多峰区域内成本,以及3)使用多峰区域内和盘式-边界成本。结果表明,在分割视盘和视盘方面,多峰方法优于单峰方法。

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