Comparison of segmentation models used to identify mature and immature lymphocytes in blood film

Detalhes bibliográficos
Autor(a) principal: Alonso Junior, Avelino
Data de Publicação: 2022
Outros Autores: Marinho, Matheus, Medeiros, Ana Clara Fragoso de, Bastos Filho, Carmelo José Albanez
Tipo de documento: Artigo
Idioma: por
Título da fonte: Revista de Engenharia e Pesquisa Aplicada
Texto Completo: http://revistas.poli.br/index.php/repa/article/view/2207
Resumo: Acute Lymphocytic Leukemia (ALL) affects about 75 thousand people a year, among these 80% are children, being a highly invasive and fatal disease, rapid diagnosis is of great importance, traditional diagnostic methods are expensive and time-consuming, therefore, the use of image segmentation methods using artificial intelligence can help detect the elements of interest in blood slides, the lymphoblasts. This work compared the models: Segnet, Mobilenet Segnet, Vgg Segnet, Resnet50 Segnet, Vgg Unet, Resnet50 Unet, Mobilenet Unet, FCN 8, FCN 32 and FCN 32 Mobilenet, by pixel precision and execution time. The ALL-IDB database was used, containing blood slides from healthy patients and possible ALL. As a result, it was observed that MobileNet networks performed better, among them, Mobilenet Unet stood out, where the result of the mean average precision of the classes was 83.4%.
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spelling Comparison of segmentation models used to identify mature and immature lymphocytes in blood filmComparação de Modelos de Segmentação Utilizados na Identificação de Linfócitos Maduros e Imaturos Em Lâminas SanguíneasAcute Lymphocytic Leukemia (ALL) affects about 75 thousand people a year, among these 80% are children, being a highly invasive and fatal disease, rapid diagnosis is of great importance, traditional diagnostic methods are expensive and time-consuming, therefore, the use of image segmentation methods using artificial intelligence can help detect the elements of interest in blood slides, the lymphoblasts. This work compared the models: Segnet, Mobilenet Segnet, Vgg Segnet, Resnet50 Segnet, Vgg Unet, Resnet50 Unet, Mobilenet Unet, FCN 8, FCN 32 and FCN 32 Mobilenet, by pixel precision and execution time. The ALL-IDB database was used, containing blood slides from healthy patients and possible ALL. As a result, it was observed that MobileNet networks performed better, among them, Mobilenet Unet stood out, where the result of the mean average precision of the classes was 83.4%.A Leucemia Linfocítica Aguda (LLA) atinge cerca de 75 mil pessoas por ano, dentre estas 80% são crianças, sendo uma doença altamente invasiva e fatal o diagnóstico rápido é de grande importância, os métodos tradicionais de diagnóstico são caros e demorados, portanto, a utilização de métodos de segmentação de imagem utilizando inteligência artificial, podem auxiliar na detecção dos elementos de interesse em lâminas de sangue, os linfoblastos. Este trabalho comparou os modelos: Segnet, Mobilenet Segnet, Vgg Segnet, Resnet50 Segnet, Vgg Unet, Resnet50 Unet, Mobilenet Unet, FCN 8, FCN 32 e FCN 32 Mobilenet, pela precisão por pixel e tempo de execução. Utilizou-se a base de dados ALL-IDB, contendo lâminas de sangue de pacientes saudáveis e possíveis LLA. Como resultado, observou-se que as redes MobileNet desempenharam melhor, dentre elas, destacou-se a Mobilenet Unet onde o resultado da precisão média das classes foi de 83,4%.Escola Politécnica de Pernambuco2022-07-15info:eu-repo/semantics/articleinfo:eu-repo/semantics/publishedVersionAvaliado pelos paresapplication/pdftext/htmlhttp://revistas.poli.br/index.php/repa/article/view/220710.25286/repa.v7i2.2207Journal of Engineering and Applied Research; Vol 7 No 2 (2022): Edição Especial em Inteligência Artificial; 12-22Revista de Engenharia e Pesquisa Aplicada; v. 7 n. 2 (2022): Edição Especial em Inteligência Artificial; 12-222525-425110.25286/repa.v7i2reponame:Revista de Engenharia e Pesquisa Aplicadainstname:Universidade Federal de Pernambuco (UFPE)instacron:UFPEporhttp://revistas.poli.br/index.php/repa/article/view/2207/813http://revistas.poli.br/index.php/repa/article/view/2207/814-Copyright (c) 2022 Thaise dos Santos Tenório, Avelino Alonso Junior, Matheus Marinho, Ana Clara Fragoso de Medeiros, Carmelo José Albanez Bastos Filhohttp://creativecommons.org/licenses/by-nc/4.0info:eu-repo/semantics/openAccessAlonso Junior, AvelinoMarinho, MatheusMedeiros, Ana Clara Fragoso deBastos Filho, Carmelo José Albanez2022-07-17T20:06:52Zoai:ojs.poli.br:article/2207Revistahttp://revistas.poli.br/index.php/repaONGhttp://revistas.poli.br/index.php/repa/oai||repa@poli.br2525-42512525-4251opendoar:2022-07-17T20:06:52Revista de Engenharia e Pesquisa Aplicada - Universidade Federal de Pernambuco (UFPE)false
dc.title.none.fl_str_mv Comparison of segmentation models used to identify mature and immature lymphocytes in blood film
Comparação de Modelos de Segmentação Utilizados na Identificação de Linfócitos Maduros e Imaturos Em Lâminas Sanguíneas
title Comparison of segmentation models used to identify mature and immature lymphocytes in blood film
spellingShingle Comparison of segmentation models used to identify mature and immature lymphocytes in blood film
Alonso Junior, Avelino
title_short Comparison of segmentation models used to identify mature and immature lymphocytes in blood film
title_full Comparison of segmentation models used to identify mature and immature lymphocytes in blood film
title_fullStr Comparison of segmentation models used to identify mature and immature lymphocytes in blood film
title_full_unstemmed Comparison of segmentation models used to identify mature and immature lymphocytes in blood film
title_sort Comparison of segmentation models used to identify mature and immature lymphocytes in blood film
author Alonso Junior, Avelino
author_facet Alonso Junior, Avelino
Marinho, Matheus
Medeiros, Ana Clara Fragoso de
Bastos Filho, Carmelo José Albanez
author_role author
author2 Marinho, Matheus
Medeiros, Ana Clara Fragoso de
Bastos Filho, Carmelo José Albanez
author2_role author
author
author
dc.contributor.author.fl_str_mv Alonso Junior, Avelino
Marinho, Matheus
Medeiros, Ana Clara Fragoso de
Bastos Filho, Carmelo José Albanez
description Acute Lymphocytic Leukemia (ALL) affects about 75 thousand people a year, among these 80% are children, being a highly invasive and fatal disease, rapid diagnosis is of great importance, traditional diagnostic methods are expensive and time-consuming, therefore, the use of image segmentation methods using artificial intelligence can help detect the elements of interest in blood slides, the lymphoblasts. This work compared the models: Segnet, Mobilenet Segnet, Vgg Segnet, Resnet50 Segnet, Vgg Unet, Resnet50 Unet, Mobilenet Unet, FCN 8, FCN 32 and FCN 32 Mobilenet, by pixel precision and execution time. The ALL-IDB database was used, containing blood slides from healthy patients and possible ALL. As a result, it was observed that MobileNet networks performed better, among them, Mobilenet Unet stood out, where the result of the mean average precision of the classes was 83.4%.
publishDate 2022
dc.date.none.fl_str_mv 2022-07-15
dc.type.driver.fl_str_mv info:eu-repo/semantics/article
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dc.identifier.uri.fl_str_mv http://revistas.poli.br/index.php/repa/article/view/2207
10.25286/repa.v7i2.2207
url http://revistas.poli.br/index.php/repa/article/view/2207
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dc.language.iso.fl_str_mv por
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dc.relation.none.fl_str_mv http://revistas.poli.br/index.php/repa/article/view/2207/813
http://revistas.poli.br/index.php/repa/article/view/2207/814
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dc.publisher.none.fl_str_mv Escola Politécnica de Pernambuco
publisher.none.fl_str_mv Escola Politécnica de Pernambuco
dc.source.none.fl_str_mv Journal of Engineering and Applied Research; Vol 7 No 2 (2022): Edição Especial em Inteligência Artificial; 12-22
Revista de Engenharia e Pesquisa Aplicada; v. 7 n. 2 (2022): Edição Especial em Inteligência Artificial; 12-22
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10.25286/repa.v7i2
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repository.name.fl_str_mv Revista de Engenharia e Pesquisa Aplicada - Universidade Federal de Pernambuco (UFPE)
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