| Literature DB >> 28966847 |
Yupeng Xu1, Ke Yan2, Jinman Kim2, Xiuying Wang2, Changyang Li2, Li Su1, Suqin Yu1, Xun Xu1, Dagan David Feng2.
Abstract
Worldwide, polypoidal choroidal vasculopathy (PCV) is a common vision-threatening exudative maculopathy, and pigment epithelium detachment (PED) is an important clinical characteristic. Thus, precise and efficient PED segmentation is necessary for PCV clinical diagnosis and treatment. We propose a dual-stage learning framework via deep neural networks (DNN) for automated PED segmentation in PCV patients to avoid issues associated with manual PED segmentation (subjectivity, manual segmentation errors, and high time consumption).The optical coherence tomography scans of fifty patients were quantitatively evaluated with different algorithms and clinicians. Dual-stage DNN outperformed existing PED segmentation methods for all segmentation accuracy parameters, including true positive volume fraction (85.74 ± 8.69%), dice similarity coefficient (85.69 ± 8.08%), positive predictive value (86.02 ± 8.99%) and false positive volume fraction (0.38 ± 0.18%). Dual-stage DNN achieves accurate PED quantitative information, works with multiple types of PEDs and agrees well with manual delineation, suggesting that it is a potential automated assistant for PCV management.Entities:
Keywords: (100.0100) Image processing; (100.4996) Pattern recognition, neural networks; (110.4500) Optical coherence tomography; (170.3880) Medical and biological imaging
Year: 2017 PMID: 28966847 PMCID: PMC5611923 DOI: 10.1364/BOE.8.004061
Source DB: PubMed Journal: Biomed Opt Express ISSN: 2156-7085 Impact factor: 3.732