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Modeling Bi-modality Improves Characterization of Cell Cycle on Gene Expression in Single Cells

机译:建模双峰改善了单细胞基因表达的细胞周期表征

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Advances in high-throughput, single cell gene expression are allowing interrogation of cell heterogeneity. However, there is concern that the cell cycle phase of a cell might bias characterizations of gene expression at the single-cell level. We assess the effect of cell cycle phase on gene expression in single cells by measuring 333 genes in 930 cells across three phases and three cell lines. We determine each cell's phase non-invasively without chemical arrest and use it as a covariate in tests of differential expression. We observe bi-modal gene expression, a previously-described phenomenon, wherein the expression of otherwise abundant genes is either strongly positive, or undetectable within individual cells. This bi-modality is likely both biologically and technically driven. Irrespective of its source, we show that it should be modeled to draw accurate inferences from single cell expression experiments. To this end, we propose a semi-continuous modeling framework based on the generalized linear model, and use it to characterize genes with consistent cell cycle effects across three cell lines. Our new computational framework improves the detection of previously characterized cell-cycle genes compared to approaches that do not account for the bi-modality of single-cell data. We use our semi-continuous modelling framework to estimate single cell gene co-expression networks. These networks suggest that in addition to having phase-dependent shifts in expression (when averaged over many cells), some, but not all, canonical cell cycle genes tend to be co-expressed in groups in single cells. We estimate the amount of single cell expression variability attributable to the cell cycle. We find that the cell cycle explains only 5%–17% of expression variability, suggesting that the cell cycle will not tend to be a large nuisance factor in analysis of the single cell transcriptome.
机译:高通量,单细胞基因表达的进步允许对细胞异质性的研究。但是,担心细胞的细胞周期阶段可能会在单细胞水平上偏向基因表达的表征。通过测量跨三个阶段和三个细胞系的930个细胞中的333个基因,我们评估了细胞周期阶段对单细胞基因表达的影响。我们无创地确定每个细胞的相而没有化学停滞,并将其用作差异表达测试的协变量。我们观察到双峰基因表达,一种先前描述的现象,其中否则丰富的基因的表达要么是强阳性的,要么是在单个细胞中无法检测到的。这种双模式可能是生物学和技术上的驱动。无论其来源如何,我们都表明应该对其建模以从单细胞表达实验中得出准确的推论。为此,我们提出了一种基于广义线性模型的半连续建模框架,并将其用于表征在三种细胞系中具有一致细胞周期效应的基因。与不考虑单细胞数据双峰性的方法相比,我们的新计算框架改进了先前表征的细胞周期基因的检测。我们使用我们的半连续建模框架来估计单细胞基因共表达网络。这些网络表明,除了表达具有相依性的变化(在许多细胞中平均)外,某些但不是全部的规范细胞周期基因倾向于在单个细胞中成组共表达。我们估计归因于细胞周期的单细胞表达变异量。我们发现细胞周期仅解释了表达变异的5%–17%,这表明在单细胞转录组分析中,细胞周期将不会成为一个很大的麻烦因素。

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