Spatial analysis of tumor‐infiltrating lymphocytes in histological sections using deep learning techniques predicts survival in colorectal carcinoma
Hongming Xu(Dalian University of Technology), Tae Hyun Hwang(WinnMed), Sung Hak Lee(Yonsei University), Jean R. Clemenceau(Jacksonville College), Jeonghyun Kang(Yonsei University), Jinhwan Choi(Jacksonville College), Yoon Jin(Yonsei University)
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