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A guidebook of spatial transcriptomic technologies, data resources and analysis approaches.


ABSTRACT: Advances in transcriptomic technologies have deepened our understanding of the cellular gene expression programs of multicellular organisms and provided a theoretical basis for disease diagnosis and therapy. However, both bulk and single-cell RNA sequencing approaches lose the spatial context of cells within the tissue microenvironment, and the development of spatial transcriptomics has made overall bias-free access to both transcriptional information and spatial information possible. Here, we elaborate development of spatial transcriptomic technologies to help researchers select the best-suited technology for their goals and integrate the vast amounts of data to facilitate data accessibility and availability. Then, we marshal various computational approaches to analyze spatial transcriptomic data for various purposes and describe the spatial multimodal omics and its potential for application in tumor tissue. Finally, we provide a detailed discussion and outlook of the spatial transcriptomic technologies, data resources and analysis approaches to guide current and future research on spatial transcriptomics.

SUBMITTER: Yue L 

PROVIDER: S-EPMC10781722 | biostudies-literature | 2023

REPOSITORIES: biostudies-literature

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A guidebook of spatial transcriptomic technologies, data resources and analysis approaches.

Yue Liangchen L   Liu Feng F   Hu Jiongsong J   Yang Pin P   Wang Yuxiang Y   Dong Junguo J   Shu Wenjie W   Huang Xingxu X   Wang Shengqi S  

Computational and structural biotechnology journal 20230116


Advances in transcriptomic technologies have deepened our understanding of the cellular gene expression programs of multicellular organisms and provided a theoretical basis for disease diagnosis and therapy. However, both bulk and single-cell RNA sequencing approaches lose the spatial context of cells within the tissue microenvironment, and the development of spatial transcriptomics has made overall bias-free access to both transcriptional information and spatial information possible. Here, we e  ...[more]

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