ID | 68264 |
フルテキストURL | |
著者 |
Hasei, Joe
Department of Medical Information and Assistive Technology Development, Graduate School of Medicine, Dentistry and Pharmaceutical Sciences, Okayama University
Nakahara, Ryuichi
Science of Functional Recovery and Reconstruction, Graduate School of Medicine, Dentistry and Pharmaceutical Sciences, Okayama University
Otsuka, Yujiro
Department of Radiology, Juntendo University School of Medicine
Nakamura, Yusuke
Plusman LCC
Ikuta, Kunihiro
Department of Orthopedic Surgery, Graduate School of Medicine, Nagoya University
Osaki, Shuhei
Department of Musculoskeletal Oncology and Rehabilitation, National Cancer Center Hospital
Hironari, Tamiya
Department of Musculoskeletal Oncology Service, Osaka International Cancer Institute
Miwa, Shinji
Department of Orthopedic Surgery, Kanazawa University Graduate School of Medical Sciences
Ohshika, Shusa
Department of Orthopaedic Surgery, Hirosaki University Graduate School of Medicine
Nishimura, Shunji
Department of Orthopaedic Surgery, Kindai University Hospital
Kahara, Naoaki
Department of Orthopedic Surgery, Mizushima Central Hospital
Yoshida, Aki
Science of Functional Recovery and Reconstruction, Graduate School of Medicine, Dentistry and Pharmaceutical Sciences, Okayama University
Fujiwara, Tomohiro
Science of Functional Recovery and Reconstruction, Graduate School of Medicine, Dentistry and Pharmaceutical Sciences, Okayama University
ORCID
Kaken ID
Nakata, Eiji
Science of Functional Recovery and Reconstruction, Graduate School of Medicine, Dentistry and Pharmaceutical Sciences, Okayama University
ORCID
Kaken ID
Kunisada, Toshiyuki
Science of Functional Recovery and Reconstruction, Graduate School of Medicine, Dentistry and Pharmaceutical Sciences, Okayama University
Kaken ID
researchmap
Ozaki, Toshifumi
Science of Functional Recovery and Reconstruction, Graduate School of Medicine, Dentistry and Pharmaceutical Sciences, Okayama University
Kaken ID
publons
researchmap
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抄録 | Background/Objectives: Developing high-performance artificial intelligence (AI) models for rare diseases is challenging owing to limited data availability. This study aimed to evaluate whether a novel three-class annotation method for preparing training data could enhance AI model performance in detecting osteosarcoma on plain radiographs compared to conventional single-class annotation. Methods: We developed two annotation methods for the same dataset of 468 osteosarcoma X-rays and 378 normal radiographs: a conventional single-class annotation (1C model) and a novel three-class annotation method (3C model) that separately labeled intramedullary, cortical, and extramedullary tumor components. Both models used identical U-Net-based architectures, differing only in their annotation approaches. Performance was evaluated using an independent validation dataset. Results: Although both models achieved high diagnostic accuracy (AUC: 0.99 vs. 0.98), the 3C model demonstrated superior operational characteristics. At a standardized cutoff value of 0.2, the 3C model maintained balanced performance (sensitivity: 93.28%, specificity: 92.21%), whereas the 1C model showed compromised specificity (83.58%) despite high sensitivity (98.88%). Notably, at the 25th percentile threshold, both models showed identical false-negative rates despite significantly different cutoff values (3C: 0.661 vs. 1C: 0.985), indicating the ability of the 3C model to maintain diagnostic accuracy at substantially lower thresholds. Conclusions: This study demonstrated that anatomically informed three-class annotation can enhance AI model performance for rare disease detection without requiring additional training data. The improved stability at lower thresholds suggests that thoughtful annotation strategies can optimize the AI model training, particularly in contexts where training data are limited.
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キーワード | osteosarcoma
medical image annotation
anatomical annotation method
rare cancer
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発行日 | 2024-12-25
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出版物タイトル |
Cancers
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巻 | 17巻
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号 | 1号
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出版者 | MDPI
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開始ページ | 29
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ISSN | 2072-6694
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資料タイプ |
学術雑誌論文
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言語 |
英語
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OAI-PMH Set |
岡山大学
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著作権者 | © 2024 by the authors.
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論文のバージョン | publisher
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PubMed ID | |
DOI | |
Web of Science KeyUT | |
関連URL | isVersionOf https://doi.org/10.3390/cancers17010029
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ライセンス | https://creativecommons.org/licenses/by/4.0/
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Citation | Hasei, J.; Nakahara, R.; Otsuka, Y.; Nakamura, Y.; Ikuta, K.; Osaki, S.; Hironari, T.; Miwa, S.; Ohshika, S.; Nishimura, S.; et al. The Three-Class Annotation Method Improves the AI Detection of Early-Stage Osteosarcoma on Plain Radiographs: A Novel Approach for Rare Cancer Diagnosis. Cancers 2025, 17, 29. https://doi.org/10.3390/cancers17010029
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助成機関名 |
Japan Society for the Promotion of Science
Japan Agency for Medical Research and Development
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助成番号 | 21K09228
22579674
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