Curriculum Vitaes
Profile Information
- Affiliation
- Professor (Professor and Chairman), School of Medicine, Faculty of Medicine, Fujita Health University
- Degree
- MD, PhD(Mar, 1998, Kobe University Graduate School of Medicine)
- Contact information
- yohno
fujita-hu.ac.jp - ORCID ID
https://orcid.org/0000-0002-4431-1084- J-GLOBAL ID
- 200901037501461104
- researchmap Member ID
- 1000372100
Research Interests
6Research Areas
2Research History
3-
Apr, 2019 - May, 2023
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Apr, 2012 - Mar, 2019
Education
1-
- Mar, 1998
Committee Memberships
28-
Oct, 2024 - Present
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Jun, 2024 - Present
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Sep, 2022 - Present
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Sep, 2020 - Present
Awards
42-
Sep, 2018
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Feb, 2012
Papers
339-
European Journal of Radiology, Mar, 2026
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European Radiology, Dec 24, 2025
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Radiology: Cardiothoracic Imaging, Oct 1, 2025
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Japanese journal of radiology, Jul 31, 2025PURPOSE: To construct two machine learning radiomics (MLR) for invasive adenocarcinoma (IVA) prediction using normal-spatial-resolution (NSR) and high-spatial-resolution (HSR) training cohorts, and to validate models (model-NSR and -HSR) in another test cohort while comparing independent radiologists' (R1, R2) performance with and without model-HSR. MATERIALS AND METHODS: In this retrospective multicenter study, all CT images were reconstructed using NSR data (512 matrix, 0.5-mm thickness) and HSR data (2048 matrix, 0.25-mm thickness). Nodules were divided into training (n = 61 non-IVA, n = 165 IVA) and test sets (n = 36 non-IVA, n = 203 IVA). Two MLR models were developed with 18 significant factors for the NSR model and 19 significant factors for the HSR model from 172 radiomics features using random forest. Area under the receiver operator characteristic curves (AUC) was analyzed using DeLong's test in the test set. Accuracy (acc), sensitivity (sen), and specificity (spc) of R1 and R2 with and without model-HSR were compared using McNemar test. RESULTS: 437 patients (70 ± 9 years, 203 men) had 465 nodules (n = 368, IVA). Model-HSR AUCs were significantly higher than model-NSR in training (0.839 vs. 0.723) and test sets (0.863 vs. 0.718) (p < 0.05). R1's acc (87.2%) and sen (93.1%) with model-HSR were significantly higher than without (77.0% and 79.3%) (p < 0.0001). R2's acc (83.7%) and sen (86.7%) with model-HSR might be equal or higher than without (83.7% and 85.7%, respectively), but not significant (p > 0.50). Spc of R1 (52.8%) and R2 (66.7%) with model-HSR might be lower than without (63.9% and 72.2%, respectively), but not significant (p > 0.21). CONCLUSION: HSR-based MLR model significantly increased IVA diagnostic performance compared to NSR, supporting radiologists without compromising accuracy and sensitivity. However, this benefit came at the cost of reduced specificity, potentially increasing false positives, which may lead to unnecessary examinations or overtreatment in clinical settings.
Misc.
638Books and Other Publications
25Presentations
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The 6th International Congress on Magnetic Resonance Imaging (ICMRI 2018) and 23rd Scientific Meeting of KSMRM, Mar, 2018
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第25回日本CT検診学会学術集会, Feb, 2018, 日本CT検診学会 Invited
Teaching Experience
1-
イメージング (神戸大学)
Professional Memberships
18Research Projects
22-
Grants-in-Aid for Scientific Research, Japan Society for the Promotion of Science, Apr, 2025 - Mar, 2028
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Grants-in-Aid for Scientific Research, Japan Society for the Promotion of Science, Apr, 2025 - Mar, 2028
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科学研究費助成事業, 日本学術振興会, Apr, 2023 - Mar, 2026
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科学研究費助成事業, 日本学術振興会, Apr, 2022 - Mar, 2025
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科学研究費助成事業, 日本学術振興会, Apr, 2021 - Mar, 2024