Aprendizagem Profunda Aplicada ao Diagnóstico do Glaucoma
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Data
2019-02-19
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Universidade Federal do Maranhão
Resumo
Glaucoma is a cluster of ocular diseases that cause damage to the eye’s optic nerve and
cause successive narrowing of the visual field in affected patients, due to an increase in
intraocular pressure, which can lead the patient to blindness at an advanced stage without
clinical reversal. For several years, from techniques of manual analysis of the internal
structures of the eye to the use of deep learning with convolutional neural networks (CNNs)
were successfully used in the diagnosis of glaucoma. However, building a deep learning
network requires a lot of effort that in many situations is not always able to achieve
satisfactory results due to the amount of parameters that need to be configured to adapt
the CNN architecture to the problem in question. The objective of this work is to use a
hyperparameter search technic to select the tuned parameters of a genetic algorithm (GA)
to select the best CNN architecture through evolutionary techniques and to be able to aid
in the accurate diagnosis of glaucoma, in eye fund images. The proposed methodology was
applied in 455 images from RIM-ONE dataset, in its version 2 (r2), with resized images to
96x96 pixels in the RGB color model. The selected CNN by AG, after its training, achieved
for the diagnosis of glaucoma the results of 96.63% for accuracy, 94.87% for sensitivity,
98.00% for specificity, 97.37% for precision and 96.10% for f-score.
Descrição
Palavras-chave
Diagnóstico de glaucoma, Aprendizagem profunda, Meta learning, Algoritmos genéticos, Glaucoma diagnosis, Deep learning, Meta learning, Genetic algorithms
Citação
LIMA, Alan Carlos de Moura. Aprendizagem Profunda Aplicada ao Diagnóstico do Glaucoma. 2019. 78 f. Dissertação (Programa de Pós-Graduação em Ciência da Computação / CCET) - Universidade Federal do Maranhão, São Luís.