Application of computed tomography-based radiomics in differential diagnosis of adenocarcinoma and squamous cell carcinoma at the esophagogastric junction
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Yi-jing Han | Yue Zhou | K. Du | Jian-bo Gao | Wen-peng Huang | Xiao-nan Liu | Chen-chen Liu | Yunjin Chen | Li-ming Li | Siyue Liu | Ke-Pu Du | Si-Yun Liu | Yun-Jin Chen | Xiao-Nan Liu | Yi-Jing Han | Yue Zhou | Chen-Chen Liu | Chen-Chen Liu | Chen-Chen Liu
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