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  1. 02 情報科学
  2. 01 学術雑誌論文

Segmentation of Diffuse Lung Abnormality Patterns on Computed Tomography Images using Partially Supervised Learning

http://hdl.handle.net/10061/0002000081
http://hdl.handle.net/10061/0002000081
c49290c9-8efe-4654-8924-5aeeb5ec80ee
アイテムタイプ 学術雑誌論文 / Journal Article(1)
公開日 2023-11-28
タイトル
タイトル Segmentation of Diffuse Lung Abnormality Patterns on Computed Tomography Images using Partially Supervised Learning
言語
言語 eng
キーワード
主題Scheme Other
主題 diffuse lung disease
キーワード
主題Scheme Other
主題 partial annotation
キーワード
主題Scheme Other
主題 partial supervision
資源タイプ
資源タイプ journal article
アクセス権
アクセス権 open access
著者 Suzuki, Yuki

× Suzuki, Yuki

en Suzuki, Yuki

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Kido, Shoji

× Kido, Shoji

en Kido, Shoji

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Mabu, Shingo

× Mabu, Shingo

en Mabu, Shingo

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Yanagawa, Masahiro

× Yanagawa, Masahiro

en Yanagawa, Masahiro

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Tomiyama, Noriyuki

× Tomiyama, Noriyuki

en Tomiyama, Noriyuki

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佐藤, 嘉伸

× 佐藤, 嘉伸

WEKO 223
e-Rad_Researcher 70243219

en Sato, Yoshinobu

ja 佐藤, 嘉伸

ja-Kana サトウ, ヨシノブ

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抄録
内容記述タイプ Abstract
内容記述 Computer-aided diagnostic methods that provide semantic segmentation of texture patterns of diffuse lung diseases (DLDs) on chest computed tomography (CT) are extremely useful for detecting, identifying, and quantifying lung pathologies. While a fully annotated dataset is desirable to build a semantic segmentation model, building such a dataset for DLDs is costly due to the requirements of manual segmentation and certified experts for annotation. Partially supervised learning (PSL) has been proposed recently to take advantage of the partially annotated dataset and reduce the full annotation burden. Creating a partially annotated dataset is much less expensive than creating a fully annotated dataset. Therefore, PSL has great potential to build a semantic segmentation model that only requires a feasible amount of annotation. In this study, we propose a method of PSL employing a loss function that uses both annotated and unannotated pixels of a partially annotated dataset. The proposed loss function is based on the cross entropy loss, and it uses unannotated pixels to penalize the leakage of the segmentation. A parameter that controls the balance between the two types of supervision is introduced into the loss function to allow tuning and studying of the proposed PSL. The effectiveness and characteristics of PSL for the segmentation of DLD classes (consolidation, ground grass opacity, honeycombing, emphysema, and normal) were investigated in experiments using chest CT images of 372 patients. The experimental results show that the proposed PSL improved the mean Dice score from 0.76 to 0.79, and that a higher value of the balancing parameter increased the precision of the segmentation. Using the proposed PSL, which takes full advantage of the partially annotated dataset, we improved the accuracy of DLD segmentation. Furthermore, the experimental results clarified that the proposed PSL improved the precision of the models using unannotated pixels. Our implementation of the proposed PSL is available at https://github.com/yk-szk/psl-dld.
書誌情報 en : Advanced Biomedical Engineering

巻 11, p. 25-36, 発行日 2022-02-03
出版者
出版者 the Japanese Society for Medical and Biological Engineering
ISSN
収録物識別子タイプ EISSN
収録物識別子 2187-5219
出版者版DOI
関連タイプ isReplacedBy
識別子タイプ DOI
関連識別子 https://doi.org/10.14326/abe.11.25
権利
権利情報Resource http://creativecommons.org/licenses/by/4.0/
権利情報 Copyright: c2022 The Author(s). This is an open access article distributed under the terms of the Creative Commons BY 4.0 International (Attribution) License (https://creativecommons.org/licenses/by/4.0/legalcode), which permits the unrestricted distribution, reproduction and use of the article provided the original source and authors are credited. https://creativecommons.org/licenses/by/4.0/legalcode
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出版タイプ NA
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