Zero-shot prediction of mutation effects with multimodal deep representation learning guides protein engineering
Peng Cheng(National University of Defense Technology), Shengqi Wang(Beijing Radiation Center), Wenjie Shu(Institute of Biophysics), Shiqiang Zhu(Zhejiang Lab), Wuju Li(Institute of Basic Medical Sciences of the Chinese Academy of Medical Sciences), Xingxu Huang(Baylor College of Medicine), Jianglin Zhou, Jin Tang(Zhejiang Lab), Suwen Zhao(ShanghaiTech University), Hao Chen(Chinese University of Hong Kong), Jun Zhang(Nanjing Maternity and Child Health Care Hospital), Wei Han(Prevention Institute), Sen Yang, Chen Yaofeng, Qiuxi Gu(Nanjing Maternity and Child Health Care Hospital), Cong Mao(Nanjing Maternity and Child Health Care Hospital), Aimin Pan(Zhejiang Lab), Yu Cheng(Nanjing Maternity and Child Health Care Hospital), Sihan Li(Nanjing Maternity and Child Health Care Hospital), Wuke Wang(Zhejiang Lab)
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