Citation: | Yanhe Zhou, Xinyi Jiang, Xiangyi Wang, Jianpeng Huang, Tong Li, Hongtao Jin, Jiuming He. Promise of spatially resolved omics for tumor research[J]. Journal of Pharmaceutical Analysis, 2023, 13(8): 851-861. doi: 10.1016/j.jpha.2023.07.003 |
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