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Publication List - Kenji Suzuki 2021 (20 / 383 entries)
Journal Paper
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Kobayashi M.,
Ishioka J.,
Matsuoka Y.,
Fukuda Y.,
Kohno Y.,
Kawano K.,
Morimoto S.,
Muta R.,
Fujiwara M.,
Kawamura N.,
Okuno T.,
Yoshida S.,
Yokoyama M.,
Suda R.,
Saiki R.,
Suzuki K.,
Kumazawa I.,
Fujii Y..
Computer-aided diagnosis with a convolutional neural network algorithm for automated detection of urinary tract stones on plain X-ray,
BMC Urology,
Aug. 2021.
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Kenji Suzuki.
深層学習による医用画像診断支援,
BIO Clinica,
北隆館,
Vol. 36,
No. 7,
pp. 92-94,
July 2021.
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Kenji Suzuki.
Artificial Intelligence for Virtual Medical Imaging for Accurate Diagnosis,
Video Proceedings of Advanced Materials,
Vol. 2,
May 2021.
Book
International Conference (Reviewed)
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Xiang M.,
Jin Z.,
Suzuki K..
Massive-Training Artificial Neural Network (MTANN) for Image Quality Improving in Fast-Acquisition MRI of the Knee,
The 6th International Symposium on Biomedical Engineering (ISBE2021),
Dec. 2021.
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Sato M.,
Yang Y.,
Jin Z.,
Suzuki K..
Segmentation of Liver Tumor in Hepatic CT by Using MTANN Deep Learning with Small Training Dataset Size,
The 6th International Symposium on Biomedical Engineering (ISBE2021),
Dec. 2021.
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Onai Y.,
Mahdi F. P.,
Jin Z.,
Suzuki K..
Virtual High-Radiation-Dose Image Generation from Low-Radiation-Dose Image in Digital Breast Tomosynthesis (DBT) Using Massive-Training Artificial Neural Network (MTANN),
The 6th International Symposium on Biomedical Engineering (ISBE2021),
Dec. 2021.
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Wang L.,
Wang S.,
Qi J.,
Suzuki K..
A Multi-task Mean Teacher for Semi-supervised Facial Affective Behavior Analysis,
2021 IEEE/CVF International Conference on Computer Vision Workshops (ICCVW),
Oct. 2021.
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Sato M.,
Jin Z.,
Suzuki K..
Semantic Segmentation of Liver Tumor in Contrast-enhanced Hepatic CT by Using Deep Learning with Hessian-based Enhancer with Small Training Dataset Size,
2021 IEEE 18th International Symposium on Biomedical Imaging (ISBI),
pp. 34-37,
May 2021.
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Xiang M.,
Jin Z.,
Suzuki K..
Massive-Training Artificial Neural Network (MTANN) with Special Kernel for Artifact Reduction In Fast-Acquisition MRI of the Knee,
2021 IEEE 18th International Symposium on Biomedical Imaging (ISBI),
pp. 1210-1213,
May 2021.
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Xiang M.,
Jin Z.,
Suzuki K..
Fast Acquisition MRI of the Knee by Means of Massive-Training Artificial Neural Network (MTANN) with Special Kernel,
European Congress of Radiology 2021,
Mar. 2021.
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Sato M.,
Jin Z.,
Suzuki K..
Small-Training-Set Deep Learning for Semantic Segmentation of Liver Tumors in Contrast-enhanced Hepatic CT,
European Congress of Radiology 2021,
Mar. 2021.
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Onai Y.,
Jin Z.,
Suzuki K..
Generation of Virtual High-Radiation-Dose Images from Low-Dose Images in Digital Breast Tomosynthesis (DBT) with Massive-Training Artificial Neural Network (MTANN),
European Congress of Radiology 2021,
Mar. 2021.
International Conference (Not reviewed / Unknown)
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Kenji Suzuki.
AI Doctor and Smart Medical Imaging with Deep Learning,
6th International Conference on Computational Intelligence in Data Mining (ICCIDM 2021),
Dec. 2021.
Official location
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Kenji Suzuki.
Artificial Intelligence for Medical Image Processing and Diagnosis,
4th Artificial Intelligence and Cloud Computing Conference (AICCC 2021),
Dec. 2021.
Official location
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Kenji Suzuki.
Intelligent Medical Image Processing and Analysis with Deep Learning,
The 6th International Conference on Communication, Image and Signal Processing (CCISP 2021),
Nov. 2021.
Official location
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Kenji Suzuki.
Artificial intelligence for medical image diagnosis,
KES International Conference on Innovation in Medicine and Healthcare (KES-InMed-21),
June 2021.
Official location
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Kenji Suzuki.
Artificial Intelligence for Virtual Medical Imaging for Accurate Diagnosis,
Advanced Materials Congress,
May 2021.
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Kenji Suzuki.
Artificial Intelligence in Computer-aided Diagnosis and Medical Image Processing,
The 2021 Artificial Intelligence, Big Data and Algorithms (CAIBDA 2021),
May 2021.
Domestic Conference (Not reviewed / Unknown)
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