Spatial transcriptomics in development and disease.

IF 6.3 Q1 BIOCHEMISTRY & MOLECULAR BIOLOGY Molecular biomedicine Pub Date : 2023-10-09 DOI:10.1186/s43556-023-00144-0
Ran Zhou, Gaoxia Yang, Yan Zhang, Yuan Wang
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Abstract

The proper functioning of diverse biological systems depends on the spatial organization of their cells, a critical factor for biological processes like shaping intricate tissue functions and precisely determining cell fate. Nonetheless, conventional bulk or single-cell RNA sequencing methods were incapable of simultaneously capturing both gene expression profiles and the spatial locations of cells. Hence, a multitude of spatially resolved technologies have emerged, offering a novel dimension for investigating regional gene expression, spatial domains, and interactions between cells. Spatial transcriptomics (ST) is a method that maps gene expression in tissue while preserving spatial information. It can reveal cellular heterogeneity, spatial organization and functional interactions in complex biological systems. ST can also complement and integrate with other omics methods to provide a more comprehensive and holistic view of biological systems at multiple levels of resolution. Since the advent of ST, new methods offering higher throughput and resolution have become available, holding significant potential to expedite fresh insights into comprehending biological complexity. Consequently, a rapid increase in associated research has occurred, using these technologies to unravel the spatial complexity during developmental processes or disease conditions. In this review, we summarize the recent advancement of ST in historical, technical, and application contexts. We compare different types of ST methods based on their principles and workflows, and present the bioinformatics tools for analyzing and integrating ST data with other modalities. We also highlight the applications of ST in various domains of biomedical research, especially development and diseases. Finally, we discuss the current limitations and challenges in the field, and propose the future directions of ST.

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发育和疾病中的空间转录组学。
不同生物系统的正常功能取决于其细胞的空间组织,这是塑造复杂组织功能和精确确定细胞命运等生物过程的关键因素。尽管如此,传统的批量或单细胞RNA测序方法无法同时捕获基因表达谱和细胞的空间位置。因此,出现了大量的空间分辨技术,为研究区域基因表达、空间结构域和细胞之间的相互作用提供了一个新的维度。空间转录组学(ST)是一种绘制组织中基因表达图同时保留空间信息的方法。它可以揭示复杂生物系统中的细胞异质性、空间组织和功能相互作用。ST还可以与其他组学方法互补和整合,以提供更全面、更全面的生物系统多分辨率视图。自从ST出现以来,提供更高吞吐量和分辨率的新方法已经出现,在加快理解生物复杂性方面具有重大潜力。因此,相关研究迅速增加,利用这些技术来揭示发育过程或疾病条件下的空间复杂性。在这篇综述中,我们总结了ST在历史、技术和应用方面的最新进展。我们根据不同类型的ST方法的原理和工作流程对其进行了比较,并提出了用于分析和整合ST数据与其他模式的生物信息学工具。我们还强调了ST在生物医学研究的各个领域的应用,特别是发展和疾病。最后,我们讨论了该领域目前的局限性和挑战,并提出了ST的未来方向。
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CiteScore
6.30
自引率
0.00%
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0
审稿时长
10 weeks
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