Multi-categorical classification using deep learning applied to the diagnosis of gastric cancer

Detalhes bibliográficos
Autor(a) principal: Kloeckner,Jonas
Data de Publicação: 2020
Outros Autores: Sansonowicz,Tatiana K, Rodrigues,Áttila L, Nunes,Tatiana W. N
Tipo de documento: Artigo
Idioma: eng
Título da fonte: Jornal Brasileiro de Patologia e Medicina Laboratorial (Online)
Texto Completo: http://old.scielo.br/scielo.php?script=sci_arttext&pid=S1676-24442020000100409
Resumo: ABSTRACT Introduction: Pathologists currently face a substantial increase in workload and complexity of their diagnosis work on different types of cancer. This is due to the increased incidence and detection of neoplasms, associated with diagnostic subspecialization and the advent of personalized medicine. There are numerous treatments available for different types of cancer, and the diagnosis must be dispensed quickly and accurately for each case. Deep learning is a tool that has been used in daily life, including image detection, and there is growing interest in its application in Medicine and especially in Pathology, where it has a revolutionary potential. Objective: In this article, we present deep learning, in particular convolutional neural networks, as a potential technique for the analysis of digitized images of histopathological slides, detecting identifiable patterns in an automated manner, introducing the possibility of applying this technology as an auxiliary tool in the diagnosis of neoplasms, especially in gastric cancer, the object of this preliminary study. Method: From a database of digitized images of histopathological slides representative of gastric cancer, we identified three morphological patterns of neoplasia, as well as non-neoplastic tissue patterns, with which we train a convolutional neural network algorithm, designed to identify and categorize similar images within these standards, in an automated manner. Results: The results of identification and automatic classification in the defined categories were satisfactory, with ROC curves above 0.9. Conclusion: The results show the potential application of convolutional neural networks for digitized slides of gastric cancer, in accordance with international literature findings.
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spelling Multi-categorical classification using deep learning applied to the diagnosis of gastric cancerneural networks (computer)gastric neoplasmsdeep learning/machine learning modelABSTRACT Introduction: Pathologists currently face a substantial increase in workload and complexity of their diagnosis work on different types of cancer. This is due to the increased incidence and detection of neoplasms, associated with diagnostic subspecialization and the advent of personalized medicine. There are numerous treatments available for different types of cancer, and the diagnosis must be dispensed quickly and accurately for each case. Deep learning is a tool that has been used in daily life, including image detection, and there is growing interest in its application in Medicine and especially in Pathology, where it has a revolutionary potential. Objective: In this article, we present deep learning, in particular convolutional neural networks, as a potential technique for the analysis of digitized images of histopathological slides, detecting identifiable patterns in an automated manner, introducing the possibility of applying this technology as an auxiliary tool in the diagnosis of neoplasms, especially in gastric cancer, the object of this preliminary study. Method: From a database of digitized images of histopathological slides representative of gastric cancer, we identified three morphological patterns of neoplasia, as well as non-neoplastic tissue patterns, with which we train a convolutional neural network algorithm, designed to identify and categorize similar images within these standards, in an automated manner. Results: The results of identification and automatic classification in the defined categories were satisfactory, with ROC curves above 0.9. Conclusion: The results show the potential application of convolutional neural networks for digitized slides of gastric cancer, in accordance with international literature findings.Sociedade Brasileira de Patologia Clínica2020-01-01info:eu-repo/semantics/articleinfo:eu-repo/semantics/publishedVersiontext/htmlhttp://old.scielo.br/scielo.php?script=sci_arttext&pid=S1676-24442020000100409Jornal Brasileiro de Patologia e Medicina Laboratorial v.56 2020reponame:Jornal Brasileiro de Patologia e Medicina Laboratorial (Online)instname:Sociedade Brasileira de Patologia (SBP)instacron:SBP10.5935/1676-2444.20200013info:eu-repo/semantics/openAccessKloeckner,JonasSansonowicz,Tatiana KRodrigues,Áttila LNunes,Tatiana W. Neng2020-05-06T00:00:00Zoai:scielo:S1676-24442020000100409Revistahttp://www.scielo.br/jbpmlhttps://old.scielo.br/oai/scielo-oai.php||jbpml@sbpc.org.br1678-47741676-2444opendoar:2020-05-06T00:00Jornal Brasileiro de Patologia e Medicina Laboratorial (Online) - Sociedade Brasileira de Patologia (SBP)false
dc.title.none.fl_str_mv Multi-categorical classification using deep learning applied to the diagnosis of gastric cancer
title Multi-categorical classification using deep learning applied to the diagnosis of gastric cancer
spellingShingle Multi-categorical classification using deep learning applied to the diagnosis of gastric cancer
Kloeckner,Jonas
neural networks (computer)
gastric neoplasms
deep learning/machine learning model
title_short Multi-categorical classification using deep learning applied to the diagnosis of gastric cancer
title_full Multi-categorical classification using deep learning applied to the diagnosis of gastric cancer
title_fullStr Multi-categorical classification using deep learning applied to the diagnosis of gastric cancer
title_full_unstemmed Multi-categorical classification using deep learning applied to the diagnosis of gastric cancer
title_sort Multi-categorical classification using deep learning applied to the diagnosis of gastric cancer
author Kloeckner,Jonas
author_facet Kloeckner,Jonas
Sansonowicz,Tatiana K
Rodrigues,Áttila L
Nunes,Tatiana W. N
author_role author
author2 Sansonowicz,Tatiana K
Rodrigues,Áttila L
Nunes,Tatiana W. N
author2_role author
author
author
dc.contributor.author.fl_str_mv Kloeckner,Jonas
Sansonowicz,Tatiana K
Rodrigues,Áttila L
Nunes,Tatiana W. N
dc.subject.por.fl_str_mv neural networks (computer)
gastric neoplasms
deep learning/machine learning model
topic neural networks (computer)
gastric neoplasms
deep learning/machine learning model
description ABSTRACT Introduction: Pathologists currently face a substantial increase in workload and complexity of their diagnosis work on different types of cancer. This is due to the increased incidence and detection of neoplasms, associated with diagnostic subspecialization and the advent of personalized medicine. There are numerous treatments available for different types of cancer, and the diagnosis must be dispensed quickly and accurately for each case. Deep learning is a tool that has been used in daily life, including image detection, and there is growing interest in its application in Medicine and especially in Pathology, where it has a revolutionary potential. Objective: In this article, we present deep learning, in particular convolutional neural networks, as a potential technique for the analysis of digitized images of histopathological slides, detecting identifiable patterns in an automated manner, introducing the possibility of applying this technology as an auxiliary tool in the diagnosis of neoplasms, especially in gastric cancer, the object of this preliminary study. Method: From a database of digitized images of histopathological slides representative of gastric cancer, we identified three morphological patterns of neoplasia, as well as non-neoplastic tissue patterns, with which we train a convolutional neural network algorithm, designed to identify and categorize similar images within these standards, in an automated manner. Results: The results of identification and automatic classification in the defined categories were satisfactory, with ROC curves above 0.9. Conclusion: The results show the potential application of convolutional neural networks for digitized slides of gastric cancer, in accordance with international literature findings.
publishDate 2020
dc.date.none.fl_str_mv 2020-01-01
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Sociedade Brasileira de Patologia Clínica
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Sociedade Brasileira de Patologia Clínica
dc.source.none.fl_str_mv Jornal Brasileiro de Patologia e Medicina Laboratorial v.56 2020
reponame:Jornal Brasileiro de Patologia e Medicina Laboratorial (Online)
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