Profile Information
- Affiliation
- Professor (Professor), Cardiology, Fujita Health University Bantane Hospital
- Degree
- MD, Ph.D(Jan, 1996, Nagoya University)
- J-GLOBAL ID
- 200901092810093374
- researchmap Member ID
- 1000289362
- External link
1. Education
06/1995 - 06/1997
Louisiana State University
Department of Molecular Biochemistry
Postdoctoral Fellow
New Orleans, USA
04/1991 - 03/1993
Nagoya University School of Medicine
Department of Circulation
Nagoya, Japan
Ph.D. 01/23/1996
04/1987 - 03/1991
St. Luke’s International Hospital
Internal Medicine Residency
Tokyo, Japan
04/1982 – 03/1987
Yamagata University School of Medicine
Yamagata, Japan
M.D. 06/16/1987
2. Professional Experience
04/2020 - Present
Fujita Health University School of Medicine
Professor of Cardiology
07/1999 - 03/2020
Fujita Health University School of Medicine
Professor of Cardiology
Director of Cardiac Arrhythmia Program
07/1997 - 06/1999
Nagoya First Red Cross Hospital
Department of Emergency Medicine
Nagoya, Japan
Research Interests
4Research Areas
1Education
2Committee Memberships
3Papers
220-
IEEE Transactions on Biomedical Engineering, May, 2026
-
European heart journal. Digital health, 7(2) ztag021, Mar, 2026AIMS: In percutaneous coronary intervention (PCI), a suboptimal choice of guiding catheter may compromise coaxial alignment and backup support, prolonging procedures and increasing radiation and contrast exposure. We assessed whether a computed tomography (CT)-driven, artificial intelligence (AI)-guided preprocedural simulation could improve procedural efficiency and safety. METHODS AND RESULTS: In a single-centre prospective registry with historical controls, 55 consecutive elective procedures performed with CT-based AI-assisted guiding-catheter selection were compared with 55 procedures performed without assistance. The primary endpoint was total procedure time from arterial access to completion. Secondary endpoints included time to coronary engagement, radiation dose, contrast volume, and guiding-catheter-related events. Computed tomography--based AI assistance was associated with shorter procedures (mean 68.5 vs. 91.8 min), shorter engagement time, lower radiation dose, and lower contrast use. Guiding-catheter exchanges were fewer, and catheter-related events were lower (3.6 vs. 16.4%; risk ratio 0.22; 95% confidence interval 0.05-0.98). Procedural success was 100% in both groups with no in-hospital major adverse cardiac or cerebrovascular events. CONCLUSION: A CT-driven, CT-based AI-guided simulation for guiding-catheter selection was associated with greater procedural efficiency and a favourable profile in elective PCI. This approach, which standardizes catheter choice and is associated with fewer empirical catheter exchanges, warrants confirmation in multicentre randomized studies and may help optimize resource utilization in routine PCI.
-
Physica A: Statistical Mechanics and its Applications, Feb, 2026
-
Journal of Arrhythmia, Oct, 2025
Misc.
91-
日本不整脈心電学会カテーテルアブレーション関連大会(Web), 2025, 2025
-
日本循環器学会学術集会(Web), 89th, 2025
-
日本不整脈心電学会カテーテルアブレーション関連大会(Web), 2024, 2024
Books and Other Publications
3-
Chapman and Hall, 1997 (ISBN: 0412146118)
Major Professional Memberships
9Research Projects
10-
科学研究費助成事業, 日本学術振興会, Apr, 2021 - Mar, 2024
-
科学研究費助成事業, 日本学術振興会, Apr, 2020 - Mar, 2023
-
科学研究費助成事業, 日本学術振興会, Apr, 2020 - Mar, 2023
-
Grants-in-Aid for Scientific Research Grant-in-Aid for Scientific Research (C), Japan Society for the Promotion of Science, Apr, 2017 - Mar, 2020
-
Grants-in-Aid for Scientific Research, Japan Society for the Promotion of Science, Apr, 2016 - Mar, 2019
作成した教科書、教材、参考書
1-
件名(英語)―開始年月日(英語)2013/06/10概要(英語)児玉逸雄, 渡邉英一. 不整脈. 矢﨑義雄, 編. 内科学 第10版. 東京都: 朝倉書店; 2013.p.478-82.