Automatic detect lung node with deep learning in segmentation and imbalance data labeling

Abstract In this study, a novel method with the U-Net-based network architecture, 2D U-Net, is employed to segment the position of lung nodules, which are an early symptom of lung cancer and have a high probability of becoming a carcinoma, especially when a lung nodule is bigger than 15  $$\mathrm{m...

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Main Authors: Ting-Wei Chiu, Yu-Lin Tsai, Shun-Feng Su
Format: Article
Language:English
Published: Nature Publishing Group 2021-05-01
Series:Scientific Reports
Online Access:https://doi.org/10.1038/s41598-021-90599-4
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spelling doaj-b06b32aa28454d3185a755c627a8e2e62021-05-30T11:37:30ZengNature Publishing GroupScientific Reports2045-23222021-05-0111111010.1038/s41598-021-90599-4Automatic detect lung node with deep learning in segmentation and imbalance data labelingTing-Wei Chiu0Yu-Lin Tsai1Shun-Feng Su2Department of Electrical Engineering in National Taiwan University of Science and TechnologyDepartment of Electrical Engineering in National Taiwan University of Science and TechnologyDepartment of Electrical Engineering in National Taiwan University of Science and TechnologyAbstract In this study, a novel method with the U-Net-based network architecture, 2D U-Net, is employed to segment the position of lung nodules, which are an early symptom of lung cancer and have a high probability of becoming a carcinoma, especially when a lung nodule is bigger than 15  $$\mathrm{mm}^2$$ mm 2 . A serious problem of considering deep learning for all medical images is imbalanced labeling between foreground and background. The lung nodule is the foreground which accounts for a lower percentage in a whole image. The evaluation function adopted in this study is dice coefficient loss, which is usually used in image segmentation tasks. The proposed pre-processing method in this study is to use complementary labeling as the input in U-Net. With this method, the labeling is swapped. The no-nodule position is labeled. And the position of the nodule becomes non-labeled. The result shows that the proposal in this study is efficient in a small quantity of data. This method, complementary labeling could be used in a small data quantity scenario. With the use of ROI segmentation model in the data pre-processing, the results of lung nodule detection can be improved a lot as shown in the experiments.https://doi.org/10.1038/s41598-021-90599-4
collection DOAJ
language English
format Article
sources DOAJ
author Ting-Wei Chiu
Yu-Lin Tsai
Shun-Feng Su
spellingShingle Ting-Wei Chiu
Yu-Lin Tsai
Shun-Feng Su
Automatic detect lung node with deep learning in segmentation and imbalance data labeling
Scientific Reports
author_facet Ting-Wei Chiu
Yu-Lin Tsai
Shun-Feng Su
author_sort Ting-Wei Chiu
title Automatic detect lung node with deep learning in segmentation and imbalance data labeling
title_short Automatic detect lung node with deep learning in segmentation and imbalance data labeling
title_full Automatic detect lung node with deep learning in segmentation and imbalance data labeling
title_fullStr Automatic detect lung node with deep learning in segmentation and imbalance data labeling
title_full_unstemmed Automatic detect lung node with deep learning in segmentation and imbalance data labeling
title_sort automatic detect lung node with deep learning in segmentation and imbalance data labeling
publisher Nature Publishing Group
series Scientific Reports
issn 2045-2322
publishDate 2021-05-01
description Abstract In this study, a novel method with the U-Net-based network architecture, 2D U-Net, is employed to segment the position of lung nodules, which are an early symptom of lung cancer and have a high probability of becoming a carcinoma, especially when a lung nodule is bigger than 15  $$\mathrm{mm}^2$$ mm 2 . A serious problem of considering deep learning for all medical images is imbalanced labeling between foreground and background. The lung nodule is the foreground which accounts for a lower percentage in a whole image. The evaluation function adopted in this study is dice coefficient loss, which is usually used in image segmentation tasks. The proposed pre-processing method in this study is to use complementary labeling as the input in U-Net. With this method, the labeling is swapped. The no-nodule position is labeled. And the position of the nodule becomes non-labeled. The result shows that the proposal in this study is efficient in a small quantity of data. This method, complementary labeling could be used in a small data quantity scenario. With the use of ROI segmentation model in the data pre-processing, the results of lung nodule detection can be improved a lot as shown in the experiments.
url https://doi.org/10.1038/s41598-021-90599-4
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AT yulintsai automaticdetectlungnodewithdeeplearninginsegmentationandimbalancedatalabeling
AT shunfengsu automaticdetectlungnodewithdeeplearninginsegmentationandimbalancedatalabeling
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