医学部 先端画像診断・人工知能
Profile Information
- Affiliation
- Clinical Professor, School of Medicine Department of Diagnostic Radiology, Fujita Health University
- Degree
- Bachelor of Medicine(Mar, 1994, Kobe University School of Medicine)Doctor of Medicine(Sep, 2000, Kobe University Graduate School of Medicine)
- J-GLOBAL ID
- 201301059890537338
- researchmap Member ID
- 7000004230
Research Areas
1Research History
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Jan, 2025 - Present
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Apr, 2009 - Mar, 2020
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Oct, 2008 - Mar, 2009
Education
2-
Apr, 1995 - Sep, 2000
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Apr, 1988 - Mar, 1994
Awards
11Papers
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Radiology, 191740-191740, May 26, 2020 Peer-reviewedBackground Deep learning may help to improve computer-aided detection of volume (CADv) measurement of pulmonary nodules at chest CT. Purpose To determine the efficacy of a deep learning method for improving CADv for measuring the solid and ground-glass opacity (GGO) volumes of a nodule, doubling time (DT), and the change in volume at chest CT. Materials and Methods From January 2014 to December 2016, patients with pulmonary nodules at CT were retrospectively reviewed. CADv without and with a convolutional neural network (CNN) automatically determined total nodule volume change per day and DT. Area under the curves (AUCs) on a per-nodule basis and diagnostic accuracy on a per-patient basis were compared among all indexes from CADv with and without CNN for differentiating benign from malignant nodules. Results The CNN training set was 294 nodules in 217 patients, the validation set was 41 nodules in 32 validation patients, and the test set was 290 nodules in 188 patients. A total of 170 patients had 290 nodules (mean size ± standard deviation, 11 mm ± 5; range, 4-29 mm) diagnosed as 132 malignant nodules and 158 benign nodules. There were 132 solid nodules (46%), 106 part-solid nodules (36%), and 52 ground-glass nodules (18%). The test set results showed that the diagnostic performance of the CNN with CADv for total nodule volume change per day was larger than DT of CADv with CNN (AUC, 0.94 [95% confidence interval {CI}: 0.90, 0.96] vs 0.67 [95% CI: 0.60, 0.74]; P < .001) and CADv without CNN (total nodule volume change per day: AUC, 0.69 [95% CI: 0.62, 0.75]; P < .001; DT: AUC, 0.58 [95% CI: 0.51, 0.65]; P < .001). The accuracy of total nodule volume change per day of CADv with CNN was significantly higher than that of CADv without CNN (P < .001) and DT of both methods (P < .001). Conclusion Convolutional neural network is useful for improving accuracy of computer-aided detection of volume measurement and nodule differentiation capability at CT for patients with pulmonary nodules. © RSNA, 2020 Online supplemental material is available for this article.
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Acta radiologica (Stockholm, Sweden : 1987), 60(12) 1619-1628, Dec, 2019
Misc.
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CT検診, 26(1) 47-47, Feb, 2019
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Eur J Radiol, 111 93-103, Feb, 2019 Peer-reviewedComputer tomography plays a major role in the evaluation of thoracic diseases, especially since the advent of the multidetector-row CT (MDCT) technology. However, the increase use of this technique has raised some concerns about the resulting radiation dose. In this review, we will present the various methods allowing limiting the radiation dose exposure resulting from chest CT acquisitions, including the options of image filtering and iterative reconstruction (IR) algorithms. The clinical applications of reduced dose protocols will be reviewed, especially for lung nodule detection and diagnosis of pulmonary thromboembolism. The performance of reduced dose protocols for infiltrative lung disease assessment will also be discussed. Lastly, the influence of using IR algorithms on computer-aided detection and volumetry of lung nodules, as well as on quantitative and functional assessment of chest diseases will be presented and discussed.
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Radiologic Clinics of North America, 56(3) 437-469, May 1, 2018 Peer-reviewed
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Medical Practice, 35(臨増) 118-125, Apr, 2018 Peer-reviewedInvited
Books and Other Publications
10Presentations
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第26回日本CT検診学会学術集会, Feb, 2019, 日本CT検診学会
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31st Annual Meeting of European Congress of Radiology (ECR 2019), Feb, 2019, European Society of Radioogy
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31st Annual Meeting of European Congress of Radiology (ECR 2019), Feb, 2019, European Society of Radioogy
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31st Annual Meeting of European Congress of Radiology (ECR 2019), Feb, 2019, European Society of Radioogy
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31st Annual Meeting of European Congress of Radiology (ECR 2019), Feb, 2019, European Society of Radioogy
Research Projects
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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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学術研究助成基金助成金/基盤研究(C), Apr, 2018 - Mar, 2021
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学術研究助成基金助成金/基盤研究(C), Apr, 2015 - Mar, 2018
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学術研究助成基金助成金/基盤研究(C), Apr, 2014 - Mar, 2017
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科学研究費補助金/基盤研究(C), Apr, 2012 - Mar, 2015