| Literature DB >> 26758611 |
Aurélien Ducat1,2,3,4, Ludivine Doridot1,2,3,4, Rosamaria Calicchio1,2,3,4, Celine Méhats1,2,3,4, Jean-Luc Vilotte5, Johann Castille5, Sandrine Barbaux1,2,3,4, Betty Couderc1,2,3,4, Sébastien Jacques1,2,3,4, Franck Letourneur1,2,3,4, Christophe Buffat6, Fabien Le Grand1,2,3,4, Paul Laissue7, Francisco Miralles1,2,3,4, Daniel Vaiman1,2,3,4.
Abstract
Preeclampsia is a disease of pregnancy involving systemic endothelial dysfunction. However, cardiovascular consequences of preeclampsia are difficult to analyze in humans. The objective of the present study is to evaluate the cardiovascular dysfunction induced by preeclampsia by examining the endothelium of mice suffering of severe preeclampsia induced by STOX1 overexpression. Using Next Generation Sequencing on endothelial cells of mice carrying either transgenic or control embryos, we discovered significant alterations of gene networks involved in inflammation, cell cycle, and cardiac hypertrophy. In addition, the heart of the preeclamptic mice revealed cardiac hypertrophy associated with histological anomalies. Bioinformatics comparison of the networks of modified genes in the endothelial cells of the preeclamptic mice and HUVECs exposed to plasma from preeclamptic women identified striking similarities. The cardiovascular alterations in the pregnant mice are comparable to those endured by the cardiovascular system of preeclamptic women. The STOX1 mice could help to better understand the endothelial dysfunction in the context of preeclampsia, and guide the search for efficient therapies able to protect the maternal endothelium during the disease and its aftermath.Entities:
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Year: 2016 PMID: 26758611 PMCID: PMC4725931 DOI: 10.1038/srep19196
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379
Figure 1Gene Set Enrichment Analysis (GSEA).
The gene expression data generated by RNA-seq was analyzed using GSEA to extract biological knowledge. Highly, significant enriched gene-sets are shown here. In every thumbnail, the green curve represents the evolution of the density of the genes identified in the RNA-seq. The False Discovery Rate (FDR) is calculated by comparing the actual data with 1000 Monte-Carlo simulations. The NES (Normalized Enrichment Score) computes the density of modified genes in the dataset with the random expectancies, normalized by the number of genes found in a given gene cluster, to take into account the size of the cluster.
Figure 2Protein-protein interaction network analysis.
The DEGs identified from the RNAseq analysis, with a fold change ≥1.5 were used as seeds to construct a network of interacting proteins. The interactions between the DEGs were extracted from the STRING data base and visualized using Cytoscape software (center). The network nodes represent genes and edges interactions. The gene expression levels were mapped on the network. Red indicates up-regulation and blue down-regulation. A zoom is presented on some clusters including: Interferon-induced genes, Myogenic genes, Mitochondrial modulators and genes involved in cell cycle regulation (which are in this case drastically reduced). The left-down frame presents a topological analysis of the network. The size of the nodes is proportional to the number of connections established with other genes. The color, from green to red, is a centrality measure (betweeness centrality, BC). The BC quantifies how drastically a gene influences the structure of the whole network. IL6 is the most central gene in the network and its expression is induced in the EC by placental STOX1 overexpression.
Figure 3Heart histology and gene expression.
Pregnant mice crossed with WT males (n = 5), transgenic TgSTO13 (n = 5) or TgSTOX42 (n = 7) males were sacrificed at the end of gestation (E16.5-E17.5) and their hearts analyzed. (A) Heart light-field photomicrographs of Masson's trichrome-stained sections of heart collected from dams carrying WT litters (left panel) and from dams carrying transgenic litters (right panel). Arrows indicate dilated nucleus and asterisks indicate collagen deposits. (B) Relative expression of the Renin/Angiotensin System and (C). Endothelin-1 in the heart from control versus preeclamptic pregnant mice. Hearts were retrieved at the end of gestation (E16.5-E17.5) from mice crossed with wild type males (control, white bars, n = 6) or crossed with transgenic males (preeclamptic gestation, grey and black bars). The Ct were normalized by those obtained for two reference genes, Sdha and CyclophilinA, and the expressions for the control gestations were then arbitrarily set to one. *p < 0,05. The third panel (C) represents the expression analysis of markers that were modified in the endothelial cells in the heart context. The genes are grouped according to their overall expression level. (D) IHC analysis of heart sections collected from dams carrying WT litters (left panel) and from dams carrying transgenic litters (right panel) for Ctgf staining. Representative data are from six animals in each group. Scale bar is on the right lower corner. The labeling of the protein confirmed the specific mRNA decrease of mice carrying transgenic embryos, a mark of cardiac hypertrophy. (E) Quantification of the IHC labeling after ImageJ treatment, transforming the image in a Black and White and measuring the labeled surfaces.
Comparison of the gene networks between Mouse endothelial cells and Human HUVEC cells exposed to preeclamptic plasmas.
| NeAT analysis | ECs STOX1 vs mild PE | Random 1 | Random 2 | Random 3 | ECs STOX1 vs Severe PE | Random 1 | Random 2 | Random 3 |
|---|---|---|---|---|---|---|---|---|
| Expected Edges in the union | 33.73 | 33.73 | 33.73 | 33.73 | 46.82 | 46.82 | 46.82 | 46.82 |
| Observed edges in the union | 96 | 4 | 2 | 3 | 227 | 10 | 8 | 4 |
| Jacquard similarity | 0.0087 | 0.0004 | 0.0002 | 0.0003 | 0.0167 | 0.0007 | 0.0006 | 0.0003 |
| P Value (Hypergeometric) | 8.40 10–19 | 1 | 1 | 1 | 1.1 10–81 | 1 | 1 | 1 |
Figure 4Comparison between the transcriptomic alterations of the endothelium in the STOX1 model and HUVECs exposed to preeclamptic plasma.
HUVECs were exposed for 72 hours to mild or severe PE plasma and their transcriptome analyzed using human expression microarrays. DEGs identified in HUVECs exposed to mild or severe preeclampsia plasma were used to build networks (mild-PE-Ntw and severe_PE-Ntw)which were compared to the preeclamptic mice EC network, using the bioinformatics tool NeAT24. The figure shows the common genes and interactions resulting from the intersection between the severe-PE-Ntw and the preeclamptic mice EC network. Enrichment analysis detects sets of genes involved in inflammation, extra-cellular matrix, TGFβ cascades and coagulation processes. IL6, IL1B and ITGBI figure among the principal hub genes in the network.