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Deep learning with deep convolutional neural network using FDG-PET/CT for malignant pleural mesothelioma diagnosis

Objectives: This study analyzed an artificial intelligence (AI) deep learning method with a three-dimensional deep convolutional neural network (3D DCNN) in regard to diagnostic accuracy to differentiate malignant pleural mesothelioma (MPM) from benign pleural disease using FDG-PET/CT results. Resul...

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Autores principales: Kitajima, Kazuhiro, Matsuo, Hidetoshi, Kono, Atsushi, Kuribayashi, Kozo, Kijima, Takashi, Hashimoto, Masaki, Hasegawa, Seiki, Murakami, Takamichi, Yamakado, Koichiro
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Impact Journals LLC 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8202770/
https://www.ncbi.nlm.nih.gov/pubmed/34136087
http://dx.doi.org/10.18632/oncotarget.27979
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author Kitajima, Kazuhiro
Matsuo, Hidetoshi
Kono, Atsushi
Kuribayashi, Kozo
Kijima, Takashi
Hashimoto, Masaki
Hasegawa, Seiki
Murakami, Takamichi
Yamakado, Koichiro
author_facet Kitajima, Kazuhiro
Matsuo, Hidetoshi
Kono, Atsushi
Kuribayashi, Kozo
Kijima, Takashi
Hashimoto, Masaki
Hasegawa, Seiki
Murakami, Takamichi
Yamakado, Koichiro
author_sort Kitajima, Kazuhiro
collection PubMed
description Objectives: This study analyzed an artificial intelligence (AI) deep learning method with a three-dimensional deep convolutional neural network (3D DCNN) in regard to diagnostic accuracy to differentiate malignant pleural mesothelioma (MPM) from benign pleural disease using FDG-PET/CT results. Results: For protocol A, the area under the ROC curve (AUC)/sensitivity/specificity/accuracy values were 0.825/77.9% (81/104)/76.4% (55/72)/77.3% (136/176), while those for protocol B were 0.854/80.8% (84/104)/77.8% (56/72)/79.5% (140/176), for protocol C were 0.881/85.6% (89/104)/75.0% (54/72)/81.3% (143/176), and for protocol D were 0.896/88.5% (92/104)/73.6% (53/72)/82.4% (145/176). Protocol D showed significantly better diagnostic performance as compared to A, B, and C in ROC analysis (p = 0.031, p = 0.0020, p = 0.041, respectively). Materials and Methods: Eight hundred seventy-five consecutive patients with histologically proven or suspected MPM, shown by history, physical examination findings, and chest CT results, who underwent FDG-PET/CT examinations between 2007 and 2017 were investigated in a retrospective manner. There were 525 patients (314 MPM, 211 benign pleural disease) in the deep learning training set, 174 (102 MPM, 72 benign pleural disease) in the validation set, and 176 (104 MPM, 72 benign pleural disease) in the test set. Using AI with PET/CT alone (protocol A), human visual reading (protocol B), a quantitative method that incorporated maximum standardized uptake value (SUVmax) (protocol C), and a combination of PET/CT, SUVmax, gender, and age (protocol D), obtained data were subjected to ROC curve analyses. Conclusions: Deep learning with 3D DCNN in combination with FDG-PET/CT imaging results as well as clinical features comprise a novel potential tool shows flexibility for differential diagnosis of MPM.
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spelling pubmed-82027702021-06-15 Deep learning with deep convolutional neural network using FDG-PET/CT for malignant pleural mesothelioma diagnosis Kitajima, Kazuhiro Matsuo, Hidetoshi Kono, Atsushi Kuribayashi, Kozo Kijima, Takashi Hashimoto, Masaki Hasegawa, Seiki Murakami, Takamichi Yamakado, Koichiro Oncotarget Research Paper Objectives: This study analyzed an artificial intelligence (AI) deep learning method with a three-dimensional deep convolutional neural network (3D DCNN) in regard to diagnostic accuracy to differentiate malignant pleural mesothelioma (MPM) from benign pleural disease using FDG-PET/CT results. Results: For protocol A, the area under the ROC curve (AUC)/sensitivity/specificity/accuracy values were 0.825/77.9% (81/104)/76.4% (55/72)/77.3% (136/176), while those for protocol B were 0.854/80.8% (84/104)/77.8% (56/72)/79.5% (140/176), for protocol C were 0.881/85.6% (89/104)/75.0% (54/72)/81.3% (143/176), and for protocol D were 0.896/88.5% (92/104)/73.6% (53/72)/82.4% (145/176). Protocol D showed significantly better diagnostic performance as compared to A, B, and C in ROC analysis (p = 0.031, p = 0.0020, p = 0.041, respectively). Materials and Methods: Eight hundred seventy-five consecutive patients with histologically proven or suspected MPM, shown by history, physical examination findings, and chest CT results, who underwent FDG-PET/CT examinations between 2007 and 2017 were investigated in a retrospective manner. There were 525 patients (314 MPM, 211 benign pleural disease) in the deep learning training set, 174 (102 MPM, 72 benign pleural disease) in the validation set, and 176 (104 MPM, 72 benign pleural disease) in the test set. Using AI with PET/CT alone (protocol A), human visual reading (protocol B), a quantitative method that incorporated maximum standardized uptake value (SUVmax) (protocol C), and a combination of PET/CT, SUVmax, gender, and age (protocol D), obtained data were subjected to ROC curve analyses. Conclusions: Deep learning with 3D DCNN in combination with FDG-PET/CT imaging results as well as clinical features comprise a novel potential tool shows flexibility for differential diagnosis of MPM. Impact Journals LLC 2021-06-08 /pmc/articles/PMC8202770/ /pubmed/34136087 http://dx.doi.org/10.18632/oncotarget.27979 Text en Copyright: © 2021 Kitajima et al. https://creativecommons.org/licenses/by/3.0/This is an open access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/3.0/) (CC BY 3.0), which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Paper
Kitajima, Kazuhiro
Matsuo, Hidetoshi
Kono, Atsushi
Kuribayashi, Kozo
Kijima, Takashi
Hashimoto, Masaki
Hasegawa, Seiki
Murakami, Takamichi
Yamakado, Koichiro
Deep learning with deep convolutional neural network using FDG-PET/CT for malignant pleural mesothelioma diagnosis
title Deep learning with deep convolutional neural network using FDG-PET/CT for malignant pleural mesothelioma diagnosis
title_full Deep learning with deep convolutional neural network using FDG-PET/CT for malignant pleural mesothelioma diagnosis
title_fullStr Deep learning with deep convolutional neural network using FDG-PET/CT for malignant pleural mesothelioma diagnosis
title_full_unstemmed Deep learning with deep convolutional neural network using FDG-PET/CT for malignant pleural mesothelioma diagnosis
title_short Deep learning with deep convolutional neural network using FDG-PET/CT for malignant pleural mesothelioma diagnosis
title_sort deep learning with deep convolutional neural network using fdg-pet/ct for malignant pleural mesothelioma diagnosis
topic Research Paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8202770/
https://www.ncbi.nlm.nih.gov/pubmed/34136087
http://dx.doi.org/10.18632/oncotarget.27979
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