医療科学部
Profile Information
- Affiliation
- Senior Assistant Professor, School of Health Sciences Faculty of Radiological Technology, Fujita Health University
- Degree
- 博士(医療技術学)(名古屋大学)
- Researcher number
- 50804514
- J-GLOBAL ID
- 201701009374019765
- researchmap Member ID
- 7000020008
- External link
Research Interests
1Research Areas
1Research History
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Apr, 2021 - Present
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Apr, 2017 - Mar, 2021
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Apr, 2010 - Mar, 2017
Education
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Apr, 2014 - Mar, 2017
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Apr, 2008 - Mar, 2010
Committee Memberships
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Apr, 2024 - Present
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Apr, 2022 - Present
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Jun, 2020 - Present
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Apr, 2018 - Mar, 2022
Awards
4Papers
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Radiological physics and technology, Sep 10, 2024This study aimed to evaluate the performance for answering the Japanese medical physicist examination and providing the benchmark of knowledge about medical physics in language-generative AI with large language model. We used questions from Japan's 2018, 2019, 2020, 2021 and 2022 medical physicist board examinations, which covered various question types, including multiple-choice questions, and mainly focused on general medicine and medical physics. ChatGPT-3.5 and ChatGPT-4.0 (OpenAI) were used. We compared the AI-based answers with the correct ones. The average accuracy rates were 42.2 ± 2.5% (ChatGPT-3.5) and 72.7 ± 2.6% (ChatGPT-4), showing that ChatGPT-4 was more accurate than ChatGPT-3.5 [all categories (except for radiation-related laws and recommendations/medical ethics): p value < 0.05]. Even with the ChatGPT model with higher accuracy, the accuracy rates were less than 60% in two categories; radiation metrology (55.6%), and radiation-related laws and recommendations/medical ethics (40.0%). These data provide the benchmark for knowledge about medical physics in ChatGPT and can be utilized as basic data for the development of various medical physics tools using ChatGPT (e.g., radiation therapy support tools with Japanese input).
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Radiological Physics and Technology, Jan 23, 2024 Peer-reviewedCorresponding author
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Technical Innovations & Patient Support in Radiation Oncology, 28 100221-100221, Dec, 2023 Peer-reviewed
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Cureus, 15(10) e48041, Oct, 2023 Peer-reviewedBackground This study evaluates dose perturbations caused by nonradioactive seeds in clinical cases by employing treatment planning system-based Monte Carlo (TPS-MC) simulation. Methodology We investigated dose perturbation using a water-equivalent phantom and 20 clinical cases of prostate cancer (10 cases with seeds and 10 cases without seeds) treated at Fujita Health University Hospital, Japan. First, dose calculations for a simple geometry were performed using the RayStation MC algorithm for a water-equivalent phantom with and without a seed. TPS-independent Monte Carlo (full-MC) simulations and film measurements were conducted to verify the accuracy of TPS-MC simulation. Subsequently, dose calculations using TPS-MC were performed on CT images of clinical cases of prostate cancer with and without seeds, and the dose distributions were compared. Results In clinical cases, dose calculations using MC simulations revealed hotspots around the seeds. However, the size of the hotspot was not correlated with the number of seeds. The maximum difference in dose perturbation between TPS-MC simulations and film measurements was 3.9%, whereas that between TPS-MC simulations and full-MC simulations was 3.7%. The dose error of TPS-MC was negligible for multiple beams or rotational irradiation. Conclusions Hotspots were observed in dose calculations using TPS-MC performed on CT images of clinical cases with seeds. The dose calculation accuracy around the seeds using TPS-MC simulations was comparable to that of film measurements and full-MC simulations, with differences within 3.9%. Although the clinical impact of hotspots occurring around the seeds is minimal, utilizing MC simulations on TPSs can be beneficial to verify their presence.
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Scientific reports, 13(1) 15413-15413, Sep 18, 2023 Peer-reviewedLead authorCorresponding authorDeep learning-based CT image reconstruction (DLR) is a state-of-the-art method for obtaining CT images. This study aimed to evaluate the usefulness of DLR in radiotherapy. Data were acquired using a large-bore CT system and an electron density phantom for radiotherapy. We compared the CT values, image noise, and CT value-to-electron density conversion table of DLR and hybrid iterative reconstruction (H-IR) for various doses. Further, we evaluated three DLR reconstruction strength patterns (Mild, Standard, and Strong). The variations of CT values of DLR and H-IR were large at low doses, and the difference in average CT values was insignificant with less than 10 HU at doses of 100 mAs and above. DLR showed less change in CT values and smaller image noise relative to H-IR. The noise-reduction effect was particularly large in the low-dose region. The difference in image noise between DLR Mild and Standard/Strong was large, suggesting the usefulness of reconstruction intensities higher than Mild. DLR showed stable CT values and low image noise for various materials, even at low doses; particularly for Standard or Strong, the reduction in image noise was significant. These findings indicate the usefulness of DLR in treatment planning using large-bore CT systems.
Misc.
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医学物理士会会報 Vol49 P15-17, Sep, 2022 Lead author
Books and Other Publications
2Presentations
38Teaching Experience
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2024 - Present
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2024 - Present
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2024 - Present
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2024 - Present
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2023 - Present
Research Projects
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Grants-in-Aid for Scientific Research, Japan Society for the Promotion of Science, Apr, 2024 - Mar, 2027
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令和6年度 成長型中小企業等研究開発支援事業, 2024 - 2026
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教員研究助成費(若手), 藤田医科大学, Apr, 2024 - Mar, 2025
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Grants-in-Aid for Scientific Research Grant-in-Aid for Scientific Research (C), Japan Society for the Promotion of Science, Apr, 2022 - Mar, 2025
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Grants-in-Aid for Scientific Research Grant-in-Aid for Early-Career Scientists, Japan Society for the Promotion of Science, Apr, 2022 - Mar, 2025
Other
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放射線線量率に対する細胞生存率計測のための多様な種類の細胞 *本研究ニーズに関する産学共同研究の問い合わせは藤田医科大学産学連携推進セン ター(fuji-san@fujita-hu.ac.jp)まで
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放射線線量計測における検出器の応答特性検証技術 ガラス線量計、半導体検出器等で検証を実施 (Yasui et al; Physica Medica 81 147-154 2021年1月, IJRR 19((2)) 281-289 2021年4月, Nagata et al; JACMP 22(8) 265-272 2021年8月) *本研究ニーズに関する産学共同研究の問い合わせは藤田医科大学産学連携推進セン ター(fuji-san@fujita-hu.ac.jp)まで