研究者業績
Profile Information
- Affiliation
- Professor, School of Medical Sciences, Fujita Health University
- J-GLOBAL ID
- 202101011368970188
- researchmap Member ID
- R000021112
Research History
3-
Apr, 2025 - Present
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Apr, 2022 - Mar, 2025
Committee Memberships
3-
2023 - Present
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Apr, 2022 - Present
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2019 - Present
Major Papers
90-
American Journal of Roentgenology, 191(1) 260-265, Jul, 2008 Peer-reviewedLead author
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Medical Physics, 33(12) 4664-4674, Nov 20, 2006 Peer-reviewedLead author
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The Transactions of the Institute of Electronics,Information and Communication Engineers., Vol.J86-D-II(1) 156-159, Jan, 2003 Peer-reviewedLead author
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Japanese journal of medical electronics and biological engineering, 38(2) 111-117, Jun, 2000 Lead authorThe purpose of this paper is to propose a detection scheme for masses existing around thick mammary gland regions. The scheme includes a template-matching technique with four reference patterns, which are partial images extracted from a Gaussian distribution, and the feature values determined by concentrating feature and density gradient. The new algorithm consists of 11 steps: (i) image digitization, (ii) extraction of breast region, (iii) reduction of image matrix, (iv) dynamic-range compression, (v) density gradient calculation, (vi) extraction of pectralis muscle region, (vii) overall detection, (viii) elimination of false positives (1), (ix) regional detection, (x) elimination of false positives (2) and (xi) indication of detected masses. Although stage (ix) made it possible to detect the masses existing around thick mammary gland regions, the number of false positives on this region increased. Stage (x) was added for the elimination of new false positives that were detected by stage (ix). A total of 2, 008 digitized mammograms was used for the performance study. As a result, our new scheme identified 95% of the true masses with 2.4 false positives per image. It was possible to detect 43 of 52 masses that were not detected by our previous method. These results indicate that this proposed method is effective, although the process for elimination of false positives should be improved.
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MEDICAL IMAGING TECHNOLOGY, 16(6) 655-666, Nov, 1998 Peer-reviewedLead author
Misc.
12-
IEICE technical report, 109(270) 1-6, Nov 4, 2009Various classifiers are used on the elimination of false positives or diagnosis of benign and malignant lesion. However, no classifier shows consistently superior performance regardless of the nature of the data. Therefore, choosing the type of classifier should be done experimentally. In this paper, we generated simulation data based on normal distributions; and then conducted a computer simulation study to compare classification performance of five classifiers, Linear Discriminant Analysis, Quadratic Discriminant Analysis, Neural Network, Support Vector Machine, and AdaBoost. As a result, Our results clearly show the effects of class distribution, number of features, and sample size on classifier performance.
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MEDICAL PHYSICS, 33(6) 2196-2196, Jun, 2006
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Medical Imaging Technology, 20(4,Pt.3), 2002
Presentations
4Teaching Experience
5Professional Memberships
3Research Projects
9-
科学研究費助成事業, 日本学術振興会, Apr, 2025 - Mar, 2028
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Grants-in-Aid for Scientific Research, Japan Society for the Promotion of Science, Apr, 2024 - Mar, 2028
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Grants-in-Aid for Scientific Research, Japan Society for the Promotion of Science, Jun, 2025 - Mar, 2027
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科学研究費助成事業, 日本学術振興会, Apr, 2024 - Mar, 2027
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科学研究費助成事業, 日本学術振興会, Apr, 2024 - Mar, 2027