Redes neurais multinível para classificação do ângulo da câmara anterior utilizando Imagens OCT-SA
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2021-03-18
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Universidade Federal do Maranhão
Resumo
Glaucoma is identified as one of the main causes of visual impairment, and the main
cause of irreversible blindness. The main forms of the disease are primary open-angle
glaucoma and primary angle-closure glaucoma. In people with angle-closure glaucoma, the
anterior chamber angle narrows, consequently causing an increase in intraocular pressure
causing damage to the optic nerve, causing partial or total vision loss. As the damage is
irreversible, an early diagnosis is essential, but it is hampered due to the fact that the
disease is asymptomatic in early stages. For early detection of the disease, routine imaging
tests are recommended, one of which is Anterior Segment Optical Coherence Tomography,
which allows an angle classification, which is essential for diagnosis. An analysis of this
type of image requires a degree of interpretation on the part of specialists, because of this,
the evaluation of many images requires a lot of time, which can lead to professional fatigue.
The use of automated methods to assist in the interpretation of images would contribute to
get diagnoses more quickly. In this work, an automated method is proposed to classify the
anterior chamber angle, present in Anterior Segment images, based on deep learning, using
convolutional neural networks. Initially, five pre-trained models of convolutional networks
were adjusted to perform feature extraction and classify images. Next, the models were
combined in a multilevel architecture, with the objective of increasing the classification
capacity. As best result achieved an AUC value (Area Under the Curve) of 0.999.
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Glaucoma, Redes neurais convolucionais, Arquitetura multinível, Transferência de aprendizado, Glaucoma, Convolutional neural networks, Multilevel architecture, Transfer learning
Citação
FERREIRA, Marcos Melo. Redes neurais multinível para classificação do ângulo da câmara anterior utilizando Imagens OCT-SA. 2021. 59 f. Dissertação (Programa de Pós-Graduação em Ciência da Computação/CCET) - Universidade Federal do Maranhão, São Luís, 2021.