| Literature DB >> 28061811 |
Quin F Wills1,2, Esther Mellado-Gomez3, Rory Nolan3,4, Damien Warner5, Eshita Sharma3, John Broxholme3, Benjamin Wright3, Helen Lockstone3, William James5, Mark Lynch6, Michael Gonzales6, Jay West6, Anne Leyrat6, Sergi Padilla-Parra3,4, Sarah Filippi7, Chris Holmes3,7, Michael D Moore8, Rory Bowden9.
Abstract
BACKGROUND: Single-cell RNA-Seq can be a valuable and unbiased tool to dissect cellular heterogeneity, despite the transcriptome's limitations in describing higher functional phenotypes and protein events. Perhaps the most important shortfall with transcriptomic 'snapshots' of cell populations is that they risk being descriptive, only cataloging heterogeneity at one point in time, and without microenvironmental context. Studying the genetic ('nature') and environmental ('nurture') modifiers of heterogeneity, and how cell population dynamics unfold over time in response to these modifiers is key when studying highly plastic cells such as macrophages.Entities:
Keywords: Macrophage heterogeneity; Signaling microenvironment; Single-cell culture; Single-cell imaging; Single-cell sequencing
Mesh:
Substances:
Year: 2017 PMID: 28061811 PMCID: PMC5219790 DOI: 10.1186/s12864-016-3445-0
Source DB: PubMed Journal: BMC Genomics ISSN: 1471-2164 Impact factor: 3.969
Fig. 1Macrophage culture and subtypes. a A single micro-volume culture chamber from the Polaris™ microfluidics chip, containing a macrophage. The media conditions per chamber can be modified to study microenvironmental perturbations. b Visualization of the major cell differences — such as with this multi-dimensional scaling of the transcriptomic rank correlations — demonstrated the separation of cells cultured for one hour (light), eight hours (dark), and a reproducible subcluster present across both time points (arrow). c&d Formal clustering confirmed this subcluster (cluster one) in addition to a third subcluster emerging after eight hours. The inner 50% of cells in each cluster are shown in colour for dimensions one and three to better convey relative cluster positions and densities. e&f Cluster three significantly reduced its proportion in the context of LPS and standard media. 95% confidence intervals for change in proportions are shown
Fig. 2Cell cluster gene expression. In each plot, yellow indicates increased and magenta indicates reduced gene expression. a-b Heatmaps of the top 50 gene expression results, ranked by statistical significance, are shown for clusters one and two over time (a) and cluster three versus other cells, broken down by culture condition (b). The numbers provided in parentheses in this and other heatmaps are -log10 p-values for differential and heterogeneous (context specific) expression respectively. Results that are globally significant after 5% false discovery rate (FDR) correction are marked with an asterisk. c The differential expression results for cluster one versus other cells at one and eight hours. d A cumulative proportion plot for FOXP1 expression broken down by cell clusters. As in other plots, clusters one, two and three are plotted in red, blue and green respectively. Each line plots the cumulative proportion of cells at or below a certain expression level. Cluster one demonstrates greater expression, with approximately half of cluster two and three cells having no detectable expression
Fig. 3SAMHD1 knockout gene expression (a) Heatmap of the difference between knockout and wild-type expression over time, broken down by culture condition. Block colours and numbers in parentheses share the same meaning as in the Fig. 2 heatmaps. b Globally significant MSigDB signatures correlating with knockout SOD1 expression. c The expression of SOD1 and its top co-expressors after eight hours across all cell clusters. Red, blue and green lines correspond to clusters one, two and three respectively. Widths indicate expression level