Deep Learning Model Based on Contrast-Enhanced Computed Tomography Imaging to Predict Postoperative Early Recurrence after the Curative Resection of a Solitary Hepatocellular Carcinoma
Masahiko Kinoshita(Metropolitan University), Takeaki Ishizawa(The University of Tokyo), Takuma Okada(Osaka Metropolitan University), Naoki Tani(Osaka Gakuin University), Jun Tauchi(Osaka Metropolitan University), Go Ohira(Osaka Metropolitan University), Hiroji Shinkawa(Osaka Metropolitan University), Shoji Kubo(Osaka Metropolitan University), Masatsugu Shiba(Osaka City University), Shogo Tanaka(Osaka Metropolitan University), Kenjiro Kimura(Osaka Metropolitan University), Daiju Ueda(Osaka Prefecture University), Akira Yamamoto(Osaka Metropolitan University), Kohei Nishio(Osaka Metropolitan University), Toshimasa Matsumoto(Osaka Metropolitan University)
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