Automated choroid segmentation of three-dimensional SD-OCT images by incorporating EDI-OCT images

•We present a novel choroid segmentation strategy for SD-OCT images by incorporating the enhanced depth imaging OCT (EDI-OCT) images.•We present a whole registration method between EDI-OCT and SD-OCT images based on retinal thickness and Bruch's Membrane position.•Experimental results with 768...

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Published inComputer methods and programs in biomedicine Vol. 158; pp. 161 - 171
Main Authors Chen, Qiang, Niu, Sijie, Fang, Wangyi, Shuai, Yuanlu, Fan, Wen, Yuan, Songtao, Liu, Qinghuai
Format Journal Article
LanguageEnglish
Published Ireland Elsevier B.V 01.05.2018
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Summary:•We present a novel choroid segmentation strategy for SD-OCT images by incorporating the enhanced depth imaging OCT (EDI-OCT) images.•We present a whole registration method between EDI-OCT and SD-OCT images based on retinal thickness and Bruch's Membrane position.•Experimental results with 768 images from 6 patients and 210 images from 29 persons demonstrate that our method can achieve high segmentation accuracy for the 3D choroid segmentation of SD-OCT images. The measurement of choroidal volume is more related with eye diseases than choroidal thickness, because the choroidal volume can reflect the diseases comprehensively. The purpose is to automatically segment choroid for three-dimensional (3D) spectral domain optical coherence tomography (SD-OCT) images. We present a novel choroid segmentation strategy for SD-OCT images by incorporating the enhanced depth imaging OCT (EDI-OCT) images. The down boundary of the choroid, namely choroid-sclera junction (CSJ), is almost invisible in SD-OCT images, while visible in EDI-OCT images. During the SD-OCT imaging, the EDI-OCT images can be generated for the same eye. Thus, we present an EDI-OCT-driven choroid segmentation method for SD-OCT images, where the choroid segmentation results of the EDI-OCT images are used to estimate the average choroidal thickness and to improve the construction of the CSJ feature space of the SD-OCT images. We also present a whole registration method between EDI-OCT and SD-OCT images based on retinal thickness and Bruch's Membrane (BM) position. The CSJ surface is obtained with a 3D graph search in the CSJ feature space. Experimental results with 768 images (6 cubes, 128 B-scan images for each cube) from 2 healthy persons, 2 age-related macular degeneration (AMD) and 2 diabetic retinopathy (DR) patients, and 210 B-scan images from other 8 healthy persons and 21 patients demonstrate that our method can achieve high segmentation accuracy. The mean choroid volume difference and overlap ratio for 6 cubes between our proposed method and outlines drawn by experts were −1.96µm3 and 88.56%, respectively. Our method is effective for the 3D choroid segmentation of SD-OCT images because the segmentation accuracy and stability are compared with the manual segmentation.
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ISSN:0169-2607
1872-7565
DOI:10.1016/j.cmpb.2017.11.002