Detection of retinal diseases from ophthalmological images based on convolutional neural network architecture

Detalhes bibliográficos
Autor(a) principal: Taş, Safiye Pelin
Data de Publicação: 2022
Outros Autores: Barın, Sezin, Güraksın, Gür Emre
Tipo de documento: Artigo
Idioma: eng
Título da fonte: Acta scientiarum. Technology (Online)
Texto Completo: http://www.periodicos.uem.br/ojs/index.php/ActaSciTechnol/article/view/61181
Resumo: The retina is an eye layer that incorporates light- and color-sensitive cells as well as nerve fibers. It collects light and distributes it to the brain for image processing through the use of the optic nerve. Diseases that end up causing vision loss and blindness are generated by retinal ailments. As a result, it is imperative to diagnose and treat certain disorders as early as possible. Optical coherence tomography (OCT), an angiography imaging technique, is operated to help diagnose retinal disorders. Deep learning approaches, which are extensively utilized, have now become a convenient way for diagnosing retinal illnesses through OCT images as a result of their effective outcomes in interpreting medical images. To diagnose retinal disorders utilizing OCT scans, this investigation developed a hybrid methodology based on image pre-processing and convolutional neural networks (CNNs) (a deep learning method). Image pre-processing techniques including background filling, resizing, noise reduction, and highlighting are exercised at the pre-processing stage. The segmentation process provides a new CNN architecture with five convolution layers that does have a low computational cost. Compared to other publications using the same data set, the proposed method seems to have a success rate of 99.48 percent in the detection of retinal disorders, closing a significant gap in the literature. The proposed approach has the advantage of maintaining low computing costs in comparison to other studies in the literature. When the conclusions are regarded, it is noticed that the suggested method might be exerted as a decision support system to assist physicians in the clinical context during the diagnosis of retinal disorders.
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spelling Detection of retinal diseases from ophthalmological images based on convolutional neural network architectureDetection of retinal diseases from ophthalmological images based on convolutional neural network architectureConvolutional neural network; image processing; opthalmological images; retinal diseases.Convolutional neural network; image processing; opthalmological images; retinal diseases.The retina is an eye layer that incorporates light- and color-sensitive cells as well as nerve fibers. It collects light and distributes it to the brain for image processing through the use of the optic nerve. Diseases that end up causing vision loss and blindness are generated by retinal ailments. As a result, it is imperative to diagnose and treat certain disorders as early as possible. Optical coherence tomography (OCT), an angiography imaging technique, is operated to help diagnose retinal disorders. Deep learning approaches, which are extensively utilized, have now become a convenient way for diagnosing retinal illnesses through OCT images as a result of their effective outcomes in interpreting medical images. To diagnose retinal disorders utilizing OCT scans, this investigation developed a hybrid methodology based on image pre-processing and convolutional neural networks (CNNs) (a deep learning method). Image pre-processing techniques including background filling, resizing, noise reduction, and highlighting are exercised at the pre-processing stage. The segmentation process provides a new CNN architecture with five convolution layers that does have a low computational cost. Compared to other publications using the same data set, the proposed method seems to have a success rate of 99.48 percent in the detection of retinal disorders, closing a significant gap in the literature. The proposed approach has the advantage of maintaining low computing costs in comparison to other studies in the literature. When the conclusions are regarded, it is noticed that the suggested method might be exerted as a decision support system to assist physicians in the clinical context during the diagnosis of retinal disorders.The retina is an eye layer that incorporates light- and color-sensitive cells as well as nerve fibers. It collects light and distributes it to the brain for image processing through the use of the optic nerve. Diseases that end up causing vision loss and blindness are generated by retinal ailments. As a result, it is imperative to diagnose and treat certain disorders as early as possible. Optical coherence tomography (OCT), an angiography imaging technique, is operated to help diagnose retinal disorders. Deep learning approaches, which are extensively utilized, have now become a convenient way for diagnosing retinal illnesses through OCT images as a result of their effective outcomes in interpreting medical images. To diagnose retinal disorders utilizing OCT scans, this investigation developed a hybrid methodology based on image pre-processing and convolutional neural networks (CNNs) (a deep learning method). Image pre-processing techniques including background filling, resizing, noise reduction, and highlighting are exercised at the pre-processing stage. The segmentation process provides a new CNN architecture with five convolution layers that does have a low computational cost. Compared to other publications using the same data set, the proposed method seems to have a success rate of 99.48 percent in the detection of retinal disorders, closing a significant gap in the literature. The proposed approach has the advantage of maintaining low computing costs in comparison to other studies in the literature. When the conclusions are regarded, it is noticed that the suggested method might be exerted as a decision support system to assist physicians in the clinical context during the diagnosis of retinal disorders.Universidade Estadual De Maringá2022-07-28info:eu-repo/semantics/articleinfo:eu-repo/semantics/publishedVersionapplication/pdfhttp://www.periodicos.uem.br/ojs/index.php/ActaSciTechnol/article/view/6118110.4025/actascitechnol.v44i1.61181Acta Scientiarum. Technology; Vol 44 (2022): Publicação contínua; e61181Acta Scientiarum. Technology; v. 44 (2022): Publicação contínua; e611811806-25631807-8664reponame:Acta scientiarum. Technology (Online)instname:Universidade Estadual de Maringá (UEM)instacron:UEMenghttp://www.periodicos.uem.br/ojs/index.php/ActaSciTechnol/article/view/61181/751375154624Copyright (c) 2022 Acta Scientiarum. Technologyhttp://creativecommons.org/licenses/by/4.0info:eu-repo/semantics/openAccessTaş, Safiye PelinBarın, SezinGüraksın, Gür Emre2022-08-22T17:00:03Zoai:periodicos.uem.br/ojs:article/61181Revistahttps://www.periodicos.uem.br/ojs/index.php/ActaSciTechnol/indexPUBhttps://www.periodicos.uem.br/ojs/index.php/ActaSciTechnol/oai||actatech@uem.br1807-86641806-2563opendoar:2022-08-22T17:00:03Acta scientiarum. Technology (Online) - Universidade Estadual de Maringá (UEM)false
dc.title.none.fl_str_mv Detection of retinal diseases from ophthalmological images based on convolutional neural network architecture
Detection of retinal diseases from ophthalmological images based on convolutional neural network architecture
title Detection of retinal diseases from ophthalmological images based on convolutional neural network architecture
spellingShingle Detection of retinal diseases from ophthalmological images based on convolutional neural network architecture
Taş, Safiye Pelin
Convolutional neural network; image processing; opthalmological images; retinal diseases.
Convolutional neural network; image processing; opthalmological images; retinal diseases.
title_short Detection of retinal diseases from ophthalmological images based on convolutional neural network architecture
title_full Detection of retinal diseases from ophthalmological images based on convolutional neural network architecture
title_fullStr Detection of retinal diseases from ophthalmological images based on convolutional neural network architecture
title_full_unstemmed Detection of retinal diseases from ophthalmological images based on convolutional neural network architecture
title_sort Detection of retinal diseases from ophthalmological images based on convolutional neural network architecture
author Taş, Safiye Pelin
author_facet Taş, Safiye Pelin
Barın, Sezin
Güraksın, Gür Emre
author_role author
author2 Barın, Sezin
Güraksın, Gür Emre
author2_role author
author
dc.contributor.author.fl_str_mv Taş, Safiye Pelin
Barın, Sezin
Güraksın, Gür Emre
dc.subject.por.fl_str_mv Convolutional neural network; image processing; opthalmological images; retinal diseases.
Convolutional neural network; image processing; opthalmological images; retinal diseases.
topic Convolutional neural network; image processing; opthalmological images; retinal diseases.
Convolutional neural network; image processing; opthalmological images; retinal diseases.
description The retina is an eye layer that incorporates light- and color-sensitive cells as well as nerve fibers. It collects light and distributes it to the brain for image processing through the use of the optic nerve. Diseases that end up causing vision loss and blindness are generated by retinal ailments. As a result, it is imperative to diagnose and treat certain disorders as early as possible. Optical coherence tomography (OCT), an angiography imaging technique, is operated to help diagnose retinal disorders. Deep learning approaches, which are extensively utilized, have now become a convenient way for diagnosing retinal illnesses through OCT images as a result of their effective outcomes in interpreting medical images. To diagnose retinal disorders utilizing OCT scans, this investigation developed a hybrid methodology based on image pre-processing and convolutional neural networks (CNNs) (a deep learning method). Image pre-processing techniques including background filling, resizing, noise reduction, and highlighting are exercised at the pre-processing stage. The segmentation process provides a new CNN architecture with five convolution layers that does have a low computational cost. Compared to other publications using the same data set, the proposed method seems to have a success rate of 99.48 percent in the detection of retinal disorders, closing a significant gap in the literature. The proposed approach has the advantage of maintaining low computing costs in comparison to other studies in the literature. When the conclusions are regarded, it is noticed that the suggested method might be exerted as a decision support system to assist physicians in the clinical context during the diagnosis of retinal disorders.
publishDate 2022
dc.date.none.fl_str_mv 2022-07-28
dc.type.driver.fl_str_mv info:eu-repo/semantics/article
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dc.identifier.uri.fl_str_mv http://www.periodicos.uem.br/ojs/index.php/ActaSciTechnol/article/view/61181
10.4025/actascitechnol.v44i1.61181
url http://www.periodicos.uem.br/ojs/index.php/ActaSciTechnol/article/view/61181
identifier_str_mv 10.4025/actascitechnol.v44i1.61181
dc.language.iso.fl_str_mv eng
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dc.relation.none.fl_str_mv http://www.periodicos.uem.br/ojs/index.php/ActaSciTechnol/article/view/61181/751375154624
dc.rights.driver.fl_str_mv Copyright (c) 2022 Acta Scientiarum. Technology
http://creativecommons.org/licenses/by/4.0
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rights_invalid_str_mv Copyright (c) 2022 Acta Scientiarum. Technology
http://creativecommons.org/licenses/by/4.0
eu_rights_str_mv openAccess
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dc.publisher.none.fl_str_mv Universidade Estadual De Maringá
publisher.none.fl_str_mv Universidade Estadual De Maringá
dc.source.none.fl_str_mv Acta Scientiarum. Technology; Vol 44 (2022): Publicação contínua; e61181
Acta Scientiarum. Technology; v. 44 (2022): Publicação contínua; e61181
1806-2563
1807-8664
reponame:Acta scientiarum. Technology (Online)
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reponame_str Acta scientiarum. Technology (Online)
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