Ding Weiguang, Young Mei, Bourgault Serge, Lee Sieun, Albiani David A, Kirker Andrew W, Forooghian Farzin, Sarunic Marinko V, Merkur Andrew B, Beg Mirza Faisal
Annu Int Conf IEEE Eng Med Biol Soc. 2013;2013:7388-91. doi: 10.1109/EMBC.2013.6611265.
Age-related macular degeneration (AMD) is the leading cause of blindness in developed countries. Subretinal fluid (SRF) and sub-retinal pigment epithelium (sub-RPE) fluid are signs of AMD and can be detected in optical coherence tomography images. However, manual detection and segmentation of SRFs and sub-RPE fluids are laborious and time consuming. In this paper, a novel pipeline is proposed for automatic detection of SRFs and sub-RPE fluids. First, top and bottom layers of retina are segmented using a graph cut method. Then, a Split Bregman-based segmentation method is used to segment dark regions between layers. These segmented regions are considered as potential fluid candidates, on which a set of features are generated. After that, a random forest classifier is trained to distinguish between the true fluid regions from the falsely detected fluid regions. This method shows reasonable performance in a leave-one-out evaluation using a dataset from 21 patients.
年龄相关性黄斑变性(AMD)是发达国家失明的主要原因。视网膜下液(SRF)和视网膜色素上皮下(sub-RPE)液是AMD的体征,可在光学相干断层扫描图像中检测到。然而,手动检测和分割SRF和sub-RPE液既费力又耗时。本文提出了一种用于自动检测SRF和sub-RPE液的新颖流程。首先,使用图割方法分割视网膜的顶层和底层。然后,使用基于分裂Bregman的分割方法分割层间的暗区。这些分割区域被视为潜在的液性候选区域,并在其上生成一组特征。之后,训练随机森林分类器以区分真正的液性区域和误检测的液性区域。在使用来自21名患者的数据集进行的留一法评估中,该方法显示出合理的性能。