オカモト トシヒロ
OKAMOTO Toshihiro
岡本 俊宏 所属 医学部 医学科(東京女子医科大学病院) 職種 教授・基幹分野長 |
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論文種別 | 原著 |
言語種別 | 英語 |
査読の有無 | 査読あり |
表題 | Classification of Oral Cancer and Leukoplakia Using Oral Images and Deep Learning with Multi-Scale Random Crop Self-Training |
掲載誌名 | 正式名:Proceedings of the 14th International Conference on Pattern Recognition Applications and Methods - Volume1:ICPRAM ISSNコード:2184-4313 |
掲載区分 | 国外 |
出版社 | Science and Technology Publications, Lda |
巻・号・頁 | pp.780-787 |
著者・共著者 | HAMADA Itsuki† , OHKAWAUCHI Takaaki , AOSHIMA Chisa, YOSHIMITSU Kitaro, KAIBUCHI Nobuyuki, OKAMOTO Toshihiro, SAKAGUCHI Katsuhisa , OHYA Jun |
発行年月 | 2025 |
概要 | This paper proposes Multi-Scale Random Crop Self-Training (MSRCST) for classifying oral cancers and leukoplakia using oral images acquired by our dermoscope. MSRCST comprises the following three key modules: (1) Multi-Scale Random Crop, which extracts image patches at various scales from high-resolution images, preserving both local details and global contextual information essential for accurate classification, (2) Selection based on Confidence, which employs a teacher model to assign confidence scores to each cropped patch, selecting only those with high confidence for further training and ensuring the model focusing on diagnostically relevant features, (3) Iteration of Self-training, which iteratively retrains the model using the selected high-confidence, pseudo-labeled data, progressively enhancing accuracy. In our experiments, we applied MSRCST to classify images of oral cancer and leukoplakia. When combined with MixUp data augmentation, MSRCST achieved an average classification accuracy of 71.71%, outperforming traditional resizing and random cropping methods. |
DOI | 10.5220/0013296500003905 |