Prediction of immunotherapy response using mutations to cancer protein assemblies
JungHo Kong(Pohang University of Science and Technology), Trey Ideker(University of California San Diego), Chan‐Young Ock(Syneos Health (South Korea)), Haiyu Zhang(Stanford University), Xiaoyu Zhao(University of California San Diego), Robin E. Bachelder(Duke University), Sungjoon Park(University of San Diego), Hannah Carter(University of California San Diego), Chang-Ho Ahn(Syneos Health (South Korea)), Jeanne Shen(Stanford University), J. Moon(Syneos Health (South Korea)), Akshat Singhal(University of California San Diego)
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