Fully Automatic Epiretinal Membrane Segmentation in OCT Scans Using Convolutional Networks
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Fully Automatic Epiretinal Membrane Segmentation in OCT Scans Using Convolutional NetworksFecha
2022-06Cita bibliográfica
Gende, M., de Moura, J., Novo, J., & Ortega, M. (2022). Fully Automatic Epiretinal Membrane Segmentation in OCT Scans Using Convolutional Networks. In R. El Ouazzani, M. Fattah, & N. Benamar (Eds.), AI Applications for Disease Diagnosis and Treatment (pp. 88-121). IGI Global. https://doi.org/10.4018/978-1-6684-2304-2.ch004
Resumen
[Absctract]: The epiretinal membrane (ERM) is an ocular pathology that can cause visual distortions. To prevent a loss of vision, symptomatic ERM needs to be removed before it can cause irreversible damage. In order to do this, the ERM needs to be located early, so that it can be peeled from the retina. This chapter explores an automatic methodology for ERM segmentation, as well as its intuitive visualization in the form of colour maps. To do this, visual features that are compatible with ERM presence are extracted from ophthalmologic images by using computer vision algorithms and deep learning models. This methodology achieved satisfactory results, reaching a dice coefficient of 0.826 and a Jaccard index of 0.714, contributing to highlight the applicability of deep learning models for the detection of pathological signs in medical images.
Palabras clave
Artificial Neural Network
Epiretinal Membrane (ERM)
Fovea
Inner Limiting Membrane (ILM)
Macula
Optical Coherence Tomography (OCT)
Retina
Segmentation
Epiretinal Membrane (ERM)
Fovea
Inner Limiting Membrane (ILM)
Macula
Optical Coherence Tomography (OCT)
Retina
Segmentation
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Copyright: © 2022 IGI Global
ISBN
9781668423042