Institute for Computational Medicine, NYU Langone Health, New York, NY, USA.
Department of Biochemistry and Molecular Pharmacology, NYU Langone Health, New York, NY, USA.
Nature. 2021 Aug;596(7871):211-220. doi: 10.1038/s41586-021-03634-9. Epub 2021 Aug 11.
Deciphering the principles and mechanisms by which gene activity orchestrates complex cellular arrangements in multicellular organisms has far-reaching implications for research in the life sciences. Recent technological advances in next-generation sequencing- and imaging-based approaches have established the power of spatial transcriptomics to measure expression levels of all or most genes systematically throughout tissue space, and have been adopted to generate biological insights in neuroscience, development and plant biology as well as to investigate a range of disease contexts, including cancer. Similar to datasets made possible by genomic sequencing and population health surveys, the large-scale atlases generated by this technology lend themselves to exploratory data analysis for hypothesis generation. Here we review spatial transcriptomic technologies and describe the repertoire of operations available for paths of analysis of the resulting data. Spatial transcriptomics can also be deployed for hypothesis testing using experimental designs that compare time points or conditions-including genetic or environmental perturbations. Finally, spatial transcriptomic data are naturally amenable to integration with other data modalities, providing an expandable framework for insight into tissue organization.
解析基因活性在多细胞生物中协调复杂细胞排列的原理和机制,对生命科学研究具有深远的意义。近年来,基于下一代测序和成像的技术进步已经证明了空间转录组学的强大功能,可以系统地测量组织空间中所有或大多数基因的表达水平,并已被用于神经科学、发育和植物生物学中产生生物学见解,以及研究一系列疾病环境,包括癌症。类似于基因组测序和人群健康调查所产生的数据集,这项技术生成的大规模图谱非常适合进行假设生成的探索性数据分析。在这里,我们回顾了空间转录组学技术,并描述了可用于分析这些数据的操作组合。空间转录组学也可以通过比较时间点或条件(包括遗传或环境干扰)的实验设计来用于假设检验。最后,空间转录组学数据很容易与其他数据模式集成,为深入了解组织结构提供了一个可扩展的框架。