| Literature DB >> 32168362 |
Michael D Morgan1,2, Etienne Patin3, Bernd Jagla4,5, Milena Hasan4, Lluís Quintana-Murci3,6, John C Marioni1,2,7.
Abstract
Identifying the factors that shape protein expression variability in complex multi-cellular organisms has primarily focused on promoter architecture and regulation of single-cell expression in cis. However, this targeted approach has to date been unable to identify major regulators of cell-to-cell gene expression variability in humans. To address this, we have combined single-cell protein expression measurements in the human immune system using flow cytometry with a quantitative genetics analysis. For the majority of proteins whose variability in expression has a heritable component, we find that genetic variants act in trans, with notably fewer variants acting in cis. Furthermore, we highlight using Mendelian Randomization that these variability-Quantitative Trait Loci might be driven by the cis regulation of upstream genes. This indicates that natural selection may balance the impact of gene regulation in cis with downstream impacts on expression variability in trans.Entities:
Mesh:
Year: 2020 PMID: 32168362 PMCID: PMC7094872 DOI: 10.1371/journal.pgen.1008686
Source DB: PubMed Journal: PLoS Genet ISSN: 1553-7390 Impact factor: 5.917
Fig 1Surveying cell-to-cell protein expression variability across the human peripheral blood immune system.
(a) Overview of the experimental design, showing how flow cytometry is used to profile immune cell type populations across multiple individuals from two cohorts. (b) Average expression and cell-to-cell protein expression variability are calculated for each cell type and protein combination (trait) in each individual (grey circles). Variability is quantified by the CV2 (y-axis left) which is inversely proportional to mean expression (x-axis). Using a local polynomial fit between the CV2 and mean (μ) expression, the mean-adjusted variability is taken as the standardised deviance from this fit (y-axis right, ηres). (c) Bar charts showing the sample size for each trait in the TwinsUK (left, range 48–479) and Milieu Intérieur cohorts (right, range 89–761) after quality control. Colours denote broad cell type categories—for details of specific cell types see S1 Table.
Fig 2A relative depletion of cis genetic control of protein expression variability.
(a) Boxplots summarising the variance decomposition of all mean and expression variability traits into additive genetic (A), common environment (C) and unique environmental (E) components. (b) A summary of cis and trans QTL mapping for mean and variability traits demonstrates a depletion of cis variability-pQTLs using all traits tested (left) and the subset of matching traits (right). (c) Bar plots of the numbers of cis and trans QTLs across mean (left) and variability (right) traits illustrates the relative depletion of cis regulation of cell-to-cell expression variability. (d) varSNP annotations demonstrate (left) gene-centric association signals and (right) the proximity of varSNPs to the nearest protein-coding gene TSS.
Fig 3cis-eQTLs potentially drive protein expression variability of downstream genes.
(a) A schematic of Mendelian Randomisation as a directed acyclic graph (left) and cell type matching between variability pQTLs and mean cis-eQTLs (right). G denotes the genetic instrument used to mediate the potential causal relationship between gene expression (E) and protein expression variability (V). Unobserved confounding (U) and the presence of direct or indirect pleiotropy (grey dashed lines) can induce false positive associations. (b) Common genetic predictors between cis-eQTLs and variability-pQTLs in human immune cells (shown are those with an FDR < 5%). The x-axis denotes the MR regression estimate (β), error bars denote the 95% CI. Y-axis labels show the vProtein and eGene. Points are coloured by the cell type in which the eGene and variability QTL are both present.