生物经济核心产业专题 |
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时空组学技术新进展* |
姜宇佳1,荆泽华1,冯静1,徐讯1,2,**() |
1 杭州华大生命科学研究院 杭州 310030 2 深圳华大生命科学研究院 深圳 518083 |
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Recent Advances in Spatiotemporal Omics Technology |
Yujia JIANG1,Zehua JING1,Jing FENG1,Xun XU1,2,**() |
1 BGI Research, Hangzhou 310030, China 2 BGI Research, Shenzhen 518083, China |
引用本文:
姜宇佳, 荆泽华, 冯静, 徐讯. 时空组学技术新进展*[J]. 中国生物工程杂志, 2024, 44(1): 19-31.
Yujia JIANG, Zehua JING, Jing FENG, Xun XU. Recent Advances in Spatiotemporal Omics Technology. China Biotechnology, 2024, 44(1): 19-31.
链接本文:
https://manu60.magtech.com.cn/biotech/CN/10.13523/j.cb.2312103
或
https://manu60.magtech.com.cn/biotech/CN/Y2024/V44/I1/19
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