Development and validation of an artificial neural network prognostic model after gastrectomy for gastric carcinoma: An international multicenter cohort study
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Fei Shan | Xiaolong Wu | Ziyu Li | Xiangyu Gao | Xiangji Ying | Yan Zhang | Jiafu Ji | J. Ji | Ziyu Li | F. Shan | X. Ying | Xiangyu Gao | Yan Zhang | Xiaolong Wu
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