Alachkar Nissrin, Norton Dale, Wolkensdorfer Zsofia, Muldoon Mark, Paszek Pawel
Division of Immunology, Immunity to Infection and Respiratory Medicine, Lydia Becker Institute of Immunology and Inflammation, Faculty of Biology, Medicine and Health, Manchester Academic Health Science Centre, University of Manchester, Manchester, United Kingdom.
Department of Mathematics, University of Manchester, Manchester, United Kingdom.
Front Mol Biosci. 2023 Jun 27;10:1176107. doi: 10.3389/fmolb.2023.1176107. eCollection 2023.
Transcription of almost all mammalian genes occurs in stochastic bursts, however the fundamental control mechanisms that allow appropriate single-cell responses remain unresolved. Here we utilise single cell genomics data and stochastic models of transcription to perform global analysis of the toll-like receptor (TLR)-induced gene expression variability. Based on analysis of more than 2000 TLR-response genes across multiple experimental conditions we demonstrate that the single-cell, gene-by-gene expression variability can be empirically described by a linear function of the population mean. We show that response heterogeneity of individual genes can be characterised by the slope of the mean-variance line, which captures how cells respond to stimulus and provides insight into evolutionary differences between species. We further demonstrate that linear relationships theoretically determine the underlying transcriptional bursting kinetics, revealing different regulatory modes of TLR response heterogeneity. Stochastic modelling of temporal scRNA-seq count distributions demonstrates that increased response variability is associated with larger and more frequent transcriptional bursts, which emerge via increased complexity of transcriptional regulatory networks between genes and different species. Overall, we provide a methodology relying on inference of empirical mean-variance relationships from single cell data and new insights into control of innate immune response variability.
几乎所有哺乳动物基因的转录都以随机爆发的形式发生,然而,允许产生适当单细胞反应的基本控制机制仍未得到解决。在这里,我们利用单细胞基因组学数据和转录的随机模型,对 Toll 样受体(TLR)诱导的基因表达变异性进行全局分析。基于对多个实验条件下 2000 多个 TLR 反应基因的分析,我们证明单细胞、逐个基因的表达变异性可以通过群体平均值的线性函数进行经验性描述。我们表明,单个基因的反应异质性可以通过平均方差线的斜率来表征,该斜率捕捉了细胞对刺激的反应方式,并为物种间的进化差异提供了见解。我们进一步证明,线性关系在理论上决定了潜在的转录爆发动力学,揭示了 TLR 反应异质性的不同调节模式。对时间序列 scRNA-seq 计数分布的随机建模表明,反应变异性的增加与更大、更频繁的转录爆发相关,这是通过基因和不同物种之间转录调控网络复杂性增加而出现的。总体而言,我们提供了一种依赖于从单细胞数据推断经验性平均方差关系的方法,以及对先天免疫反应变异性控制的新见解。