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Tools for the analysis of high-dimensional single-cell RNA sequencing data

机译:用于分析高维单细胞RNA测序数据的工具

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摘要

Breakthroughs in the development of high-throughput technologies for profiling transcriptomes at the single-cell level have helped biologists to understand the heterogeneity of cell populations, disease states and developmental lineages. However, these single-cell RNA sequencing (scRNA-seq) technologies generate an extraordinary amount of data, which creates analysis and interpretation challenges. Additionally, scRNA-seq datasets often contain technical sources of noise owing to incomplete RNA capture, PCR amplification biases and/or batch effects specific to the patient or sample. If not addressed, this technical noise can bias the analysis and interpretation of the data. In response to these challenges, a suite of computational tools has been developed to process, analyse and visualize scRNA-seq datasets. Although the specific steps of any given scRNA-seq analysis might differ depending on the biological questions being asked, a core workflow is used in most analyses. Typically, raw sequencing reads are processed into a gene expression matrix that is then normalized and scaled to remove technical noise. Next, cells are grouped according to similarities in their patterns of gene expression, which can be summarized in two or three dimensions for visualization on a scatterplot. These data can then be further analysed to provide an in-depth view of the cell types or developmental trajectories in the sample of interest.
机译:在单细胞层面开发用于分析转录om的高通量技术的突破有助于生物学家了解细胞群体,疾病状态和发育谱系的异质性。然而,这些单细胞RNA测序(ScRNA-SEQ)技术产生了非凡的数据,这会产生分析和解释挑战。另外,由于RNA捕获不完全捕获,PCR扩增偏差和患者或样品特异性的批量效应,SCRNA-SEQ数据集通常包含技术噪声源。如果没有解决,这种技术噪声可以偏向数据的分析和解释。为了响应这些挑战,已经开发了一套计算工具来处理,分析和可视化SCRNA-SEQ数据集。虽然任何给定的ScRNA-SEQ分析的具体步骤可能因被问到的生物学问题而有所不同,但在大多数分析中使用核心工作流程。通常,将原始测序读入到基因表达矩阵中,然后将其标准化并缩放以去除技术噪声。接下来,根据它们的基因表达模式中的相似性分组细胞,其可以总结为两三个维度以在散点图上可视化。然后可以进一步分析这些数据以在感兴趣的样本中提供细胞类型或发育轨迹的深度视图。

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