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单细胞转录组测序中的数据分析

Data Analysis in Single-Cell Transcriptome Sequencing.

作者信息

Gao Shan

机构信息

College of Life Sciences, Nankai University, Tianjin, People's Republic of China.

Institute of Statistics, Nankai University, Tianjin, People's Republic of China.

出版信息

Methods Mol Biol. 2018;1754:311-326. doi: 10.1007/978-1-4939-7717-8_18.

Abstract

Single-cell transcriptome sequencing, often referred to as single-cell RNA sequencing (scRNA-seq), is used to measure gene expression at the single-cell level and provides a higher resolution of cellular differences than bulk RNA-seq. With more detailed and accurate information, scRNA-seq will greatly promote the understanding of cell functions, disease progression, and treatment response. Although the scRNA-seq experimental protocols have been improved very quickly, many challenges in the scRNA-seq data analysis still need to be overcome. In this chapter, we focus on the introduction and discussion of the research status in the field of scRNA-seq data normalization and cluster analysis, which are the two most important challenges in the scRNA-seq data analysis. Particularly, we present a protocol to discover and validate cancer stem cells (CSCs) using scRNA-seq. Suggestions have also been made to help researchers rationally design their scRNA-seq experiments and data analysis in their future studies.

摘要

单细胞转录组测序,通常称为单细胞RNA测序(scRNA-seq),用于在单细胞水平上测量基因表达,与批量RNA测序相比,它能提供更高分辨率的细胞差异。凭借更详细和准确的信息,scRNA-seq将极大地促进对细胞功能、疾病进展和治疗反应的理解。尽管scRNA-seq实验方案发展迅速,但scRNA-seq数据分析中的许多挑战仍需克服。在本章中,我们重点介绍和讨论scRNA-seq数据归一化和聚类分析领域的研究现状,这是scRNA-seq数据分析中两个最重要的挑战。特别是,我们提出了一种使用scRNA-seq发现和验证癌症干细胞(CSCs)的方案。我们还给出了一些建议,以帮助研究人员在未来的研究中合理设计他们的scRNA-seq实验和数据分析。

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