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Deep Learning-based Artificial Intelligence Improves Accuracy of Error-prone Lung Nodules

Introduction: Early detection of lung cancer is one way to improve outcomes. Improving the detection of nodules on chest CT scans is important. Previous artificial intelligence (AI) modules show rapid advantages, which improves the performance of detecting lung nodules in some datasets. However, the...

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Autores principales: Lan, Chou-Chin, Hsieh, Min-Shiau, Hsiao, Jong-Kai, Wu, Chih-Wei, Yang, Hao-Hsiang, Chen, Yi, Hsieh, Po-Chun, Tzeng, I-Shiang, Wu, Yao-Kuang
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Ivyspring International Publisher 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8964321/
https://www.ncbi.nlm.nih.gov/pubmed/35370462
http://dx.doi.org/10.7150/ijms.69400
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author Lan, Chou-Chin
Hsieh, Min-Shiau
Hsiao, Jong-Kai
Wu, Chih-Wei
Yang, Hao-Hsiang
Chen, Yi
Hsieh, Po-Chun
Tzeng, I-Shiang
Wu, Yao-Kuang
author_facet Lan, Chou-Chin
Hsieh, Min-Shiau
Hsiao, Jong-Kai
Wu, Chih-Wei
Yang, Hao-Hsiang
Chen, Yi
Hsieh, Po-Chun
Tzeng, I-Shiang
Wu, Yao-Kuang
author_sort Lan, Chou-Chin
collection PubMed
description Introduction: Early detection of lung cancer is one way to improve outcomes. Improving the detection of nodules on chest CT scans is important. Previous artificial intelligence (AI) modules show rapid advantages, which improves the performance of detecting lung nodules in some datasets. However, they have a high false-positive (FP) rate. Its effectiveness in clinical practice has not yet been fully proven. We aimed to use AI assistance in CT scans to decrease FP. Materials and methods: CT images of 60 patients were obtained. Five senior doctors who were blinded to these cases participated in this study for the detection of lung nodules. Two doctors performed manual detection and labeling of lung nodules without AI assistance. Another three doctors used AI assistance to detect and label lung nodules before manual interpretation. The AI program is based on a deep learning framework. Results: In total, 266 nodules were identified. For doctors without AI assistance, the FP was 0.617-0.650/scan and the sensitivity was 59.2-67.0%. For doctors with AI assistance, the FP was 0.067 to 0.2/scan and the sensitivity was 59.2-77.3% This AI-assisted program significantly reduced FP. The error-prone characteristics of lung nodules were central locations, ground-glass appearances, and small sizes. The AI-assisted program improved the detection of error-prone nodules. Conclusions: Detection of lung nodules is important for lung cancer treatment. When facing a large number of CT scans, error-prone nodules are a great challenge for doctors. The AI-assisted program improved the performance of detecting lung nodules, especially for error-prone nodules.
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spelling pubmed-89643212022-03-31 Deep Learning-based Artificial Intelligence Improves Accuracy of Error-prone Lung Nodules Lan, Chou-Chin Hsieh, Min-Shiau Hsiao, Jong-Kai Wu, Chih-Wei Yang, Hao-Hsiang Chen, Yi Hsieh, Po-Chun Tzeng, I-Shiang Wu, Yao-Kuang Int J Med Sci Research Paper Introduction: Early detection of lung cancer is one way to improve outcomes. Improving the detection of nodules on chest CT scans is important. Previous artificial intelligence (AI) modules show rapid advantages, which improves the performance of detecting lung nodules in some datasets. However, they have a high false-positive (FP) rate. Its effectiveness in clinical practice has not yet been fully proven. We aimed to use AI assistance in CT scans to decrease FP. Materials and methods: CT images of 60 patients were obtained. Five senior doctors who were blinded to these cases participated in this study for the detection of lung nodules. Two doctors performed manual detection and labeling of lung nodules without AI assistance. Another three doctors used AI assistance to detect and label lung nodules before manual interpretation. The AI program is based on a deep learning framework. Results: In total, 266 nodules were identified. For doctors without AI assistance, the FP was 0.617-0.650/scan and the sensitivity was 59.2-67.0%. For doctors with AI assistance, the FP was 0.067 to 0.2/scan and the sensitivity was 59.2-77.3% This AI-assisted program significantly reduced FP. The error-prone characteristics of lung nodules were central locations, ground-glass appearances, and small sizes. The AI-assisted program improved the detection of error-prone nodules. Conclusions: Detection of lung nodules is important for lung cancer treatment. When facing a large number of CT scans, error-prone nodules are a great challenge for doctors. The AI-assisted program improved the performance of detecting lung nodules, especially for error-prone nodules. Ivyspring International Publisher 2022-03-06 /pmc/articles/PMC8964321/ /pubmed/35370462 http://dx.doi.org/10.7150/ijms.69400 Text en © The author(s) https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/). See http://ivyspring.com/terms for full terms and conditions.
spellingShingle Research Paper
Lan, Chou-Chin
Hsieh, Min-Shiau
Hsiao, Jong-Kai
Wu, Chih-Wei
Yang, Hao-Hsiang
Chen, Yi
Hsieh, Po-Chun
Tzeng, I-Shiang
Wu, Yao-Kuang
Deep Learning-based Artificial Intelligence Improves Accuracy of Error-prone Lung Nodules
title Deep Learning-based Artificial Intelligence Improves Accuracy of Error-prone Lung Nodules
title_full Deep Learning-based Artificial Intelligence Improves Accuracy of Error-prone Lung Nodules
title_fullStr Deep Learning-based Artificial Intelligence Improves Accuracy of Error-prone Lung Nodules
title_full_unstemmed Deep Learning-based Artificial Intelligence Improves Accuracy of Error-prone Lung Nodules
title_short Deep Learning-based Artificial Intelligence Improves Accuracy of Error-prone Lung Nodules
title_sort deep learning-based artificial intelligence improves accuracy of error-prone lung nodules
topic Research Paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8964321/
https://www.ncbi.nlm.nih.gov/pubmed/35370462
http://dx.doi.org/10.7150/ijms.69400
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