Shock. 2024 Jan 1;61(1):19-27. doi: 10.1097/SHK.0000000000002274. Epub 2023 Nov 9.
The analysis of the single-cell transcriptome has emerged as a powerful tool to gain insights on the basic mechanisms of health and disease. It is widely used to reveal the cellular diversity and complexity of tissues at cellular resolution by RNA sequencing of the whole transcriptome from a single cell. Equally, it is applied to discover an unknown, rare population of cells in the tissue. The prime advantage of single-cell transcriptome analysis is the detection of stochastic nature of gene expression of the cell in tissue. Moreover, the availability of multiple platforms for the single-cell transcriptome has broadened its approaches to using cells of different sizes and shapes, including the capture of short or full-length transcripts, which is helpful in the analysis of challenging biological samples. And with the development of numerous packages in R and Python, new directions in the computational analysis of single-cell transcriptomes can be taken to characterize healthy versus diseased tissues to obtain novel pathological insights. Downstream analysis such as differential gene expression analysis, gene ontology term analysis, Kyoto Encyclopedia of Genes and Genomes pathway analysis, cell-cell interaction analysis, and trajectory analysis has become standard practice in the workflow of single-cell transcriptome analysis to further examine the biology of different cell types. Here, we provide a broad overview of single-cell transcriptome analysis in health and disease conditions currently applied in various studies.
单细胞转录组分析已成为深入了解健康和疾病基本机制的有力工具。它通过对单个细胞的全转录组进行 RNA 测序,广泛用于以细胞分辨率揭示组织的细胞多样性和复杂性。同样,它也用于发现组织中未知的、罕见的细胞群体。单细胞转录组分析的主要优势在于检测组织中细胞基因表达的随机性。此外,单细胞转录组的多个平台的可用性拓宽了其应用范围,包括对不同大小和形状的细胞进行捕获,包括捕获短或全长转录本,这有助于分析具有挑战性的生物样本。随着 R 和 Python 中众多软件包的发展,可以采用单细胞转录组计算分析的新方向来对健康组织与患病组织进行特征化,以获得新的病理见解。下游分析,如差异基因表达分析、基因本体术语分析、京都基因与基因组百科全书通路分析、细胞-细胞相互作用分析和轨迹分析,已成为单细胞转录组分析工作流程中的标准实践,以进一步研究不同细胞类型的生物学特性。在这里,我们广泛概述了目前在各种研究中应用于健康和疾病状况的单细胞转录组分析。