Non-invasive tumor microenvironment evaluation and treatment response prediction in gastric cancer using deep learning radiomics
Yuming Jiang(Nanfang Hospital), Ruijiang Li(Capital Medical University), Taojun Zhang(Nanfang Hospital), Wenjun Xiong(Wuhan University), Shengtian Sang(Stanford University), Kangneng Zhou(University of Science and Technology Beijing), Md Tauhidul Islam(Stanford University), Guoxin Li(Nanfang Hospital), Wei Wang(Air Force Medical University), Hongyu Wang(Northwestern Polytechnical University), Sujuan Xi(Sun Yat-sen University), Jingjing Xie(University of California, Davis), Yikai Xu(Nanfang Hospital), Zepang Sun(Nanfang Hospital), Tuanjie Li(Nanfang Hospital), Jen‐Yeu Wang(Stanford University), Qingyu Yuan(Nanfang Hospital), Chuanli Chen(Nanfang Hospital)
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