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Automatic Feature Extraction of Optical Coherence Tomography for Lamina Cribrosa Detection
2015
Journal of Image and Graphics
This paper presents a framework to segment and extract key features automatically in Optical Coherence Tomography (OCT) scans. One of the main features to be detected is the Lamina Cribrosa (LC), which is an optic nerve head structure believed to play a crucial role in glaucomatous optic neuropathy. Detection of the LC aids in understanding pathogenesis and detection of glaucoma. Automatic segmentation allows a quick and objective way of identifying the LC. In previous work, LC segmentation has
doi:10.18178/joig.3.2.102-106
fatcat:7ltp4rm3yvbxjfbrluh4strzve