Deep Learning-Based Differential Diagnosis of Follicular Thyroid Tumors Using Histopathological Images

Modern Pathology - Tập 36 - Trang 100296 - 2023
Satoshi Nojima1, Tokimu Kadoi2, Ayana Suzuki1,3, Chiharu Kato4, Shoichi Ishida2, Kansuke Kido1, Kazutoshi Fujita5, Yasushi Okuno6, Mitsuyoshi Hirokawa3, Kei Terayama2,4,6,7, Eiichi Morii1
1Department of Pathology, Osaka University Graduate School of Medicine, Osaka, Japan
2Graduate School of Medical Life Science, Yokohama City University, Kanagawa, Japan
3Department of Diagnostic Pathology and Cytology, Kuma Hospital, Kobe, Japan
4International College of Arts and Science, Yokohama City University, Kanagawa, Japan
5Department of Urology, Kindai University Faculty of Medicine, Osaka, Japan
6Graduate School of Medicine, Kyoto University, Kyoto, Japan
7RIKEN Center for Advanced Intelligence Project, Tokyo, Japan

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