Artificial intelligence algorithm for the histopathological diagnosis of skin cancer

Detalhes bibliográficos
Autor(a) principal: Kuiava, Victor Antonio
Data de Publicação: 2021
Outros Autores: Kuiava, Eliseu Luiz, Chielle, Eduardo Ottobelli, De Bittencourt, Francisco Madalosso
Tipo de documento: Artigo
Idioma: eng
Título da fonte: Clinical and Biomedical Research
Texto Completo: https://seer.ufrgs.br/index.php/hcpa/article/view/108236
Resumo: Introduction: Cutaneous neoplasms are the most common cancers in the world, and have high morbidity rates. A definitive diagnosis can only be obtained after histopathological evaluation of the lesions. Objective: To develop an artificial intelligence program to establish the histopathological diagnosis of cutaneous lesions. Methodology: A deep learning program was built using three neural network architectures: MobileNet, Inception and convolutional networks. A database was constructed using 2732 images of melanomas, basal and squamous cell carcinomas, and normal skin. The validation set consisted of 284 images from all 4 categories, allowing for the calculation of sensitivity and specificity. All images were provided by the Path Presenter website. Results: The sensitivity and specificity of the MobileNet model were 92% (95%CI, 83-100%) and 97% (95%CI, 90-100%), respectively; corresponding figures for the Inception model were 98.3% (95%CI, 86-100%) and 98.8% (95%CI, 98.2-100%); lastly, the sensitivity and specificity of the convolutional network model were 91.6% (95%CI, 73.8-100%) and 95.7% (95%CI, 94.4-97.2%). The maximum sensitivity for the differentiation of malignant conditions was 91%, and specificity was 95.4%. Conclusion: The program developed in the present study can efficiently distinguish between the main types of skin cancer with high sensitivity and specificity.
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spelling Artificial intelligence algorithm for the histopathological diagnosis of skin cancerSkin lesionsArtificial IntelligenceDiagnosisNeoplasmsMelanoma.Skin woundArtificial IntelligenceDiagnosisNeoplasmsMelanomaIntroduction: Cutaneous neoplasms are the most common cancers in the world, and have high morbidity rates. A definitive diagnosis can only be obtained after histopathological evaluation of the lesions. Objective: To develop an artificial intelligence program to establish the histopathological diagnosis of cutaneous lesions. Methodology: A deep learning program was built using three neural network architectures: MobileNet, Inception and convolutional networks. A database was constructed using 2732 images of melanomas, basal and squamous cell carcinomas, and normal skin. The validation set consisted of 284 images from all 4 categories, allowing for the calculation of sensitivity and specificity. All images were provided by the Path Presenter website. Results: The sensitivity and specificity of the MobileNet model were 92% (95%CI, 83-100%) and 97% (95%CI, 90-100%), respectively; corresponding figures for the Inception model were 98.3% (95%CI, 86-100%) and 98.8% (95%CI, 98.2-100%); lastly, the sensitivity and specificity of the convolutional network model were 91.6% (95%CI, 73.8-100%) and 95.7% (95%CI, 94.4-97.2%). The maximum sensitivity for the differentiation of malignant conditions was 91%, and specificity was 95.4%. Conclusion: The program developed in the present study can efficiently distinguish between the main types of skin cancer with high sensitivity and specificity.HCPA/FAMED/UFRGS2021-04-13info:eu-repo/semantics/articleinfo:eu-repo/semantics/publishedVersionPeer-reviewed ArticleAvaliado por Paresapplication/pdfhttps://seer.ufrgs.br/index.php/hcpa/article/view/108236Clinical & Biomedical Research; Vol. 40 No. 4 (2020): Clinical and Biomedical ResearchClinical and Biomedical Research; v. 40 n. 4 (2020): Clinical and Biomedical Research2357-9730reponame:Clinical and Biomedical Researchinstname:Universidade Federal do Rio Grande do Sul (UFRGS)instacron:UFRGSenghttps://seer.ufrgs.br/index.php/hcpa/article/view/108236/pdfCopyright (c) 2021 Clinical and Biomedical Researchinfo:eu-repo/semantics/openAccessKuiava, Victor AntonioKuiava, Eliseu LuizChielle, Eduardo OttobelliDe Bittencourt, Francisco Madalosso2024-01-19T14:20:54Zoai:seer.ufrgs.br:article/108236Revistahttps://www.seer.ufrgs.br/index.php/hcpaPUBhttps://seer.ufrgs.br/index.php/hcpa/oai||cbr@hcpa.edu.br2357-97302357-9730opendoar:2024-01-19T14:20:54Clinical and Biomedical Research - Universidade Federal do Rio Grande do Sul (UFRGS)false
dc.title.none.fl_str_mv Artificial intelligence algorithm for the histopathological diagnosis of skin cancer
title Artificial intelligence algorithm for the histopathological diagnosis of skin cancer
spellingShingle Artificial intelligence algorithm for the histopathological diagnosis of skin cancer
Kuiava, Victor Antonio
Skin lesions
Artificial Intelligence
Diagnosis
Neoplasms
Melanoma.
Skin wound
Artificial Intelligence
Diagnosis
Neoplasms
Melanoma
title_short Artificial intelligence algorithm for the histopathological diagnosis of skin cancer
title_full Artificial intelligence algorithm for the histopathological diagnosis of skin cancer
title_fullStr Artificial intelligence algorithm for the histopathological diagnosis of skin cancer
title_full_unstemmed Artificial intelligence algorithm for the histopathological diagnosis of skin cancer
title_sort Artificial intelligence algorithm for the histopathological diagnosis of skin cancer
author Kuiava, Victor Antonio
author_facet Kuiava, Victor Antonio
Kuiava, Eliseu Luiz
Chielle, Eduardo Ottobelli
De Bittencourt, Francisco Madalosso
author_role author
author2 Kuiava, Eliseu Luiz
Chielle, Eduardo Ottobelli
De Bittencourt, Francisco Madalosso
author2_role author
author
author
dc.contributor.author.fl_str_mv Kuiava, Victor Antonio
Kuiava, Eliseu Luiz
Chielle, Eduardo Ottobelli
De Bittencourt, Francisco Madalosso
dc.subject.por.fl_str_mv Skin lesions
Artificial Intelligence
Diagnosis
Neoplasms
Melanoma.
Skin wound
Artificial Intelligence
Diagnosis
Neoplasms
Melanoma
topic Skin lesions
Artificial Intelligence
Diagnosis
Neoplasms
Melanoma.
Skin wound
Artificial Intelligence
Diagnosis
Neoplasms
Melanoma
description Introduction: Cutaneous neoplasms are the most common cancers in the world, and have high morbidity rates. A definitive diagnosis can only be obtained after histopathological evaluation of the lesions. Objective: To develop an artificial intelligence program to establish the histopathological diagnosis of cutaneous lesions. Methodology: A deep learning program was built using three neural network architectures: MobileNet, Inception and convolutional networks. A database was constructed using 2732 images of melanomas, basal and squamous cell carcinomas, and normal skin. The validation set consisted of 284 images from all 4 categories, allowing for the calculation of sensitivity and specificity. All images were provided by the Path Presenter website. Results: The sensitivity and specificity of the MobileNet model were 92% (95%CI, 83-100%) and 97% (95%CI, 90-100%), respectively; corresponding figures for the Inception model were 98.3% (95%CI, 86-100%) and 98.8% (95%CI, 98.2-100%); lastly, the sensitivity and specificity of the convolutional network model were 91.6% (95%CI, 73.8-100%) and 95.7% (95%CI, 94.4-97.2%). The maximum sensitivity for the differentiation of malignant conditions was 91%, and specificity was 95.4%. Conclusion: The program developed in the present study can efficiently distinguish between the main types of skin cancer with high sensitivity and specificity.
publishDate 2021
dc.date.none.fl_str_mv 2021-04-13
dc.type.driver.fl_str_mv info:eu-repo/semantics/article
info:eu-repo/semantics/publishedVersion
Peer-reviewed Article
Avaliado por Pares
format article
status_str publishedVersion
dc.identifier.uri.fl_str_mv https://seer.ufrgs.br/index.php/hcpa/article/view/108236
url https://seer.ufrgs.br/index.php/hcpa/article/view/108236
dc.language.iso.fl_str_mv eng
language eng
dc.relation.none.fl_str_mv https://seer.ufrgs.br/index.php/hcpa/article/view/108236/pdf
dc.rights.driver.fl_str_mv Copyright (c) 2021 Clinical and Biomedical Research
info:eu-repo/semantics/openAccess
rights_invalid_str_mv Copyright (c) 2021 Clinical and Biomedical Research
eu_rights_str_mv openAccess
dc.format.none.fl_str_mv application/pdf
dc.publisher.none.fl_str_mv HCPA/FAMED/UFRGS
publisher.none.fl_str_mv HCPA/FAMED/UFRGS
dc.source.none.fl_str_mv Clinical & Biomedical Research; Vol. 40 No. 4 (2020): Clinical and Biomedical Research
Clinical and Biomedical Research; v. 40 n. 4 (2020): Clinical and Biomedical Research
2357-9730
reponame:Clinical and Biomedical Research
instname:Universidade Federal do Rio Grande do Sul (UFRGS)
instacron:UFRGS
instname_str Universidade Federal do Rio Grande do Sul (UFRGS)
instacron_str UFRGS
institution UFRGS
reponame_str Clinical and Biomedical Research
collection Clinical and Biomedical Research
repository.name.fl_str_mv Clinical and Biomedical Research - Universidade Federal do Rio Grande do Sul (UFRGS)
repository.mail.fl_str_mv ||cbr@hcpa.edu.br
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