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Detection of high variability in gene expression from single-cell RNA-seq profiling

机译:从单细胞RNA序列分析中检测基因表达的高变异性

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摘要

BackgroundThe advancement of the next-generation sequencing technology enables mapping gene expression at the single-cell level, capable of tracking cell heterogeneity and determination of cell subpopulations using single-cell RNA sequencing (scRNA-seq). Unlike the objectives of conventional RNA-seq where differential expression analysis is the integral component, the most important goal of scRNA-seq is to identify highly variable genes across a population of cells, to account for the discrete nature of single-cell gene expression and uniqueness of sequencing library preparation protocol for single-cell sequencing. However, there is lack of generic expression variation model for different scRNA-seq data sets. Hence, the objective of this study is to develop a gene expression variation model (GEVM), utilizing the relationship between coefficient of variation (CV) and average expression level to address the over-dispersion of single-cell data, and its corresponding statistical significance to quantify the variably expressed genes (VEGs).
机译:背景技术下一代测序技术的进步使得能够在单细胞水平上绘制基因表达图谱,能够使用单细胞RNA测序(scRNA-seq)追踪细胞异质性并确定细胞亚群。与传统的RNA-seq的目标不同(差异表达分析是不可或缺的组成部分),scRNA-seq的最重要目标是在整个细胞群体中鉴定高度可变的基因,以解释单细胞基因表达和单细胞测序的测序文库制备方案的唯一性。但是,对于不同的scRNA-seq数据集,缺乏通用的表达变异模型。因此,本研究的目的是开发一个基因表达变异模型(GEVM),利用变异系数(CV)和平均表达水平之间的关系来解决单细胞数据的过度分散及其相应的统计学意义。以量化可变表达基因(VEG)。

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