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Deep-learning algorithm to detect fibrosing interstitial lung disease on chest radiographs

BACKGROUND: Antifibrotic therapies are available to treat chronic fibrosing interstitial lung diseases (CF-ILDs), including idiopathic pulmonary fibrosis. Early use of these treatments is recommended to slow deterioration of respiratory function and to prevent acute exacerbation. However, identifyin...

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Autores principales: Nishikiori, Hirotaka, Kuronuma, Koji, Hirota, Kenichi, Yama, Naoya, Suzuki, Tomohiro, Onodera, Maki, Onodera, Koichi, Ikeda, Kimiyuki, Mori, Yuki, Asai, Yuichiro, Takagi, Yuzo, Honda, Seiwa, Ohnishi, Hirofumi, Hatakenaka, Masamitsu, Takahashi, Hiroki, Chiba, Hirofumi
Formato: Online Artículo Texto
Lenguaje:English
Publicado: European Respiratory Society 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9932351/
https://www.ncbi.nlm.nih.gov/pubmed/36202411
http://dx.doi.org/10.1183/13993003.02269-2021
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author Nishikiori, Hirotaka
Kuronuma, Koji
Hirota, Kenichi
Yama, Naoya
Suzuki, Tomohiro
Onodera, Maki
Onodera, Koichi
Ikeda, Kimiyuki
Mori, Yuki
Asai, Yuichiro
Takagi, Yuzo
Honda, Seiwa
Ohnishi, Hirofumi
Hatakenaka, Masamitsu
Takahashi, Hiroki
Chiba, Hirofumi
author_facet Nishikiori, Hirotaka
Kuronuma, Koji
Hirota, Kenichi
Yama, Naoya
Suzuki, Tomohiro
Onodera, Maki
Onodera, Koichi
Ikeda, Kimiyuki
Mori, Yuki
Asai, Yuichiro
Takagi, Yuzo
Honda, Seiwa
Ohnishi, Hirofumi
Hatakenaka, Masamitsu
Takahashi, Hiroki
Chiba, Hirofumi
author_sort Nishikiori, Hirotaka
collection PubMed
description BACKGROUND: Antifibrotic therapies are available to treat chronic fibrosing interstitial lung diseases (CF-ILDs), including idiopathic pulmonary fibrosis. Early use of these treatments is recommended to slow deterioration of respiratory function and to prevent acute exacerbation. However, identifying patients in the early stages of CF-ILD using chest radiographs is challenging. In this study, we developed and tested a deep-learning algorithm to detect CF-ILD using chest radiograph images. METHOD: From the image archive of Sapporo Medical University Hospital, 653 chest radiographs from 263 patients with CF-ILDs and 506 from 506 patients without CF-ILD were identified; 921 were used for deep learning and 238 were used for algorithm testing. The algorithm was designed to output a numerical score ranging from 0 to 1, representing the probability of CF-ILD. Using the testing dataset, the algorithm's capability to identify CF-ILD was compared with that of doctors. A second dataset, in which CF-ILD was confirmed using computed tomography images, was used to further evaluate the algorithm's performance. RESULTS: The area under the receiver operating characteristic curve, which indicates the algorithm's detection capability, was 0.979. Using a score cut-off of 0.267, the sensitivity and specificity of detection were 0.896 and 1.000, respectively. These data showed that the algorithm's performance was noninferior to that of doctors, including pulmonologists and radiologists; performance was verified using the second dataset. CONCLUSIONS: We developed a deep-learning algorithm to detect CF-ILDs using chest radiograph images. The algorithm's detection capability was noninferior to that of doctors.
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spelling pubmed-99323512023-02-17 Deep-learning algorithm to detect fibrosing interstitial lung disease on chest radiographs Nishikiori, Hirotaka Kuronuma, Koji Hirota, Kenichi Yama, Naoya Suzuki, Tomohiro Onodera, Maki Onodera, Koichi Ikeda, Kimiyuki Mori, Yuki Asai, Yuichiro Takagi, Yuzo Honda, Seiwa Ohnishi, Hirofumi Hatakenaka, Masamitsu Takahashi, Hiroki Chiba, Hirofumi Eur Respir J Original Research Articles BACKGROUND: Antifibrotic therapies are available to treat chronic fibrosing interstitial lung diseases (CF-ILDs), including idiopathic pulmonary fibrosis. Early use of these treatments is recommended to slow deterioration of respiratory function and to prevent acute exacerbation. However, identifying patients in the early stages of CF-ILD using chest radiographs is challenging. In this study, we developed and tested a deep-learning algorithm to detect CF-ILD using chest radiograph images. METHOD: From the image archive of Sapporo Medical University Hospital, 653 chest radiographs from 263 patients with CF-ILDs and 506 from 506 patients without CF-ILD were identified; 921 were used for deep learning and 238 were used for algorithm testing. The algorithm was designed to output a numerical score ranging from 0 to 1, representing the probability of CF-ILD. Using the testing dataset, the algorithm's capability to identify CF-ILD was compared with that of doctors. A second dataset, in which CF-ILD was confirmed using computed tomography images, was used to further evaluate the algorithm's performance. RESULTS: The area under the receiver operating characteristic curve, which indicates the algorithm's detection capability, was 0.979. Using a score cut-off of 0.267, the sensitivity and specificity of detection were 0.896 and 1.000, respectively. These data showed that the algorithm's performance was noninferior to that of doctors, including pulmonologists and radiologists; performance was verified using the second dataset. CONCLUSIONS: We developed a deep-learning algorithm to detect CF-ILDs using chest radiograph images. The algorithm's detection capability was noninferior to that of doctors. European Respiratory Society 2023-02-16 /pmc/articles/PMC9932351/ /pubmed/36202411 http://dx.doi.org/10.1183/13993003.02269-2021 Text en Copyright ©The authors 2023. https://creativecommons.org/licenses/by-nc/4.0/This version is distributed under the terms of the Creative Commons Attribution Non-Commercial Licence 4.0. For commercial reproduction rights and permissions contact permissions@ersnet.org (mailto:permissions@ersnet.org)
spellingShingle Original Research Articles
Nishikiori, Hirotaka
Kuronuma, Koji
Hirota, Kenichi
Yama, Naoya
Suzuki, Tomohiro
Onodera, Maki
Onodera, Koichi
Ikeda, Kimiyuki
Mori, Yuki
Asai, Yuichiro
Takagi, Yuzo
Honda, Seiwa
Ohnishi, Hirofumi
Hatakenaka, Masamitsu
Takahashi, Hiroki
Chiba, Hirofumi
Deep-learning algorithm to detect fibrosing interstitial lung disease on chest radiographs
title Deep-learning algorithm to detect fibrosing interstitial lung disease on chest radiographs
title_full Deep-learning algorithm to detect fibrosing interstitial lung disease on chest radiographs
title_fullStr Deep-learning algorithm to detect fibrosing interstitial lung disease on chest radiographs
title_full_unstemmed Deep-learning algorithm to detect fibrosing interstitial lung disease on chest radiographs
title_short Deep-learning algorithm to detect fibrosing interstitial lung disease on chest radiographs
title_sort deep-learning algorithm to detect fibrosing interstitial lung disease on chest radiographs
topic Original Research Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9932351/
https://www.ncbi.nlm.nih.gov/pubmed/36202411
http://dx.doi.org/10.1183/13993003.02269-2021
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