Automated 3-D retinal layer segmentation of macular optical coherence tomography images with serous pigment epithelial detachments.

IEEE Trans. Med. Imaging(2015)

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摘要
Automated retinal layer segmentation of optical coherence tomography (OCT) images has been successful for normal eyes but becomes challenging for eyes with retinal diseases if the retinal morphology experiences critical changes. We propose a method to automatically segment the retinal layers in 3-D OCT data with serous retinal pigment epithelial detachments (PED), which is a prominent feature of many chorioretinal disease processes. The proposed framework consists of the following steps: fast denoising and B-scan alignment, multi-resolution graph search based surface detection, PED region detection and surface correction above the PED region. The proposed technique was evaluated on a dataset with OCT images from 20 subjects diagnosed with PED. The experimental results showed the following. 1) The overall mean unsigned border positioning error for layer segmentation is 7.87±3.36 μm , and is comparable to the mean inter-observer variability ( 7.81±2.56 μm). 2) The true positive volume fraction (TPVF), false positive volume fraction (FPVF) and positive predicative value (PPV) for PED volume segmentation are 87.1%, 0.37%, and 81.2%, respectively. 3) The average running time is 220 s for OCT data of 512 × 64 × 480 voxels.
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关键词
pigment epithelium detachment (ped),ped volume segmentation,optical tomography,diseases,surface correction,automated 3d retinal layer segmentation,biomedical optical imaging,false positive volume fraction,retinal morphology,macular optical coherence tomography imaging,mean unsigned border positioning error,image segmentation,3d oct data,multiresolution graph search based surface detection,fast denoising,optical coherence tomography (oct),retinal layer segmentation,vision defects,serous retinal pigment epithelial detachments,oct imaging,mean interobserver variability,time 220 s,chorioretinal disease processes,retinal diseases,b-scan alignment,medical image processing,true positive volume fraction,ped region detection
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