ID | 68355 |
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著者 |
Yamamoto, Yasuhiro
Department of Radiology, Houshasen Daiichi Hospital
Haraguchi, Takafumi
Department of Advanced Biomedical Imaging and Informatics, St. Marianna University School of Medicine
Matsuda, Kaori
Department of Radiology, Houshasen Daiichi Hospital
Okazaki, Yoshio
Department of Radiology, Houshasen Daiichi Hospital
Kimoto, Shin
Department of Radiology, Houshasen Daiichi Hospital
Tanji, Nozomu
Department of Urology, Houshasen Daiichi Hospital
Matsumoto, Atsushi
Department of Urology, Houshasen Daiichi Hospital
Kobayashi, Yasuyuki
Department of Medical Information and Communication Technology Research, St. Marianna University School of Medicine
Mimura, Hidefumi
Department of Radiology, St. Marianna University School of Medicine
Hiraki, Takao
Department of Radiology, Okayama University Graduate School of Medicine, Dentistry and Pharmaceutical Sciences
Kaken ID
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抄録 | We developed a machine learning model for predicting prostate cancer (PCa) grades using radiomic features of magnetic resonance imaging. 112 patients diagnosed with PCa based on prostate biopsy between January 2014 and December 2021 were evaluated. Logistic regression was used to construct two prediction models, one using radiomic features and prostate-specific antigen (PSA) values (Radiomics model) and the other Prostate Imaging-Reporting and Data System (PI-RADS) scores and PSA values (PI-RADS model), to differentiate high-grade (Gleason score [GS] ≥ 8) from intermediate or low-grade (GS < 8) PCa. Five imaging features were selected for the Radiomics model using the Gini coefficient. Model performance was evaluated using AUC, sensitivity, and specificity. The models were compared by leave-one-out cross-validation with Ridge regularization. Furthermore, the Radiomics model was evaluated using the holdout method and represented by a nomogram. The AUC of the Radiomics and PI-RADS models differed significantly (0.799, 95% CI: 0.712-0.869; and 0.710, 95% CI: 0.617-0.792, respectively). Using holdout method, the Radiomics model yielded AUC of 0.778 (95% CI: 0.552-0.925), sensitivity of 0.769, and specificity of 0.778. It outperformed the PI-RADS model and could be useful in predicting PCa grades, potentially aiding in determining appropriate treatment approaches in PCa patients.
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キーワード | prostate cancer
machine learning
prostate Imaging-Reporting and Data System
radiomics
Gleason score
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Amo Type | Original Article
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出版物タイトル |
Acta Medica Okayama
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発行日 | 2025-02
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巻 | 79巻
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号 | 1号
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出版者 | Okayama University Medical School
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開始ページ | 21
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終了ページ | 30
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ISSN | 0386-300X
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NCID | AA00508441
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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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著作権者 | Copyright Ⓒ 2025 by Okayama University Medical School
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論文のバージョン | publisher
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査読 |
有り
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Web of Science KeyUT |