| Literature DB >> 32555232 |
Dina M Tawfik1,2, Jacqueline M Lankelma3, Laurence Vachot2,4, Elisabeth Cerrato2,4, Alexandre Pachot4, W Joost Wiersinga5,6, Julien Textoris7,8,9.
Abstract
Patients that suffer from sepsis exhibit an early hyper-inflammatory immune response which can lead to organ failure and death. In our study, we assessed the immune modulation in the human in vivo endotoxemia model and compared it to ex vivo LPS stimulation using 38 transcriptomic markers. Blood was collected before and after 4 hours of LPS challenge and tested with the Immune Profiling Panel (IPP) using the FilmArray system. The use of IPP showed that markers from the innate immunity dominated the response to LPS in vivo, mainly markers related to monocytes and neutrophils. Comparing the two models, in vivo and ex vivo, revealed that most of the markers were modulated in a similar pattern (68%). Some cytokine markers such as TNF, IFN-γ and IL-1β were under-expressed ex vivo compared to in vivo. T-cell markers were either unchanged or up-modulated ex vivo, compared to a down-modulation in vivo. Interestingly, markers related to neutrophils were expressed in opposite directions, which might be due to the presence of cell recruitment and feedback loops in vivo. The IPP tool was able to capture the early immune response in both the human in vivo endotoxemia model, a translational model mimicking the immune response observed in septic patients.Entities:
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Year: 2020 PMID: 32555232 PMCID: PMC7303162 DOI: 10.1038/s41598-020-66695-2
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379
Figure 1Gene modulations captured by IPP in the human in vivo endotoxemia model. (A) Principal component (PC) analysis of the samples before and after stimulation, where the colors differentiate the time points T0 (just before receiving the LPS bolus infusion) and T4 (4 hours after LPS injection). (B) Heatmap showing the hierarchical clustering of the samples (T0 and T4) and genes using Euclidean distance. Normalized gene expression values are color-coded from blue (down-modulation) to red (up-modulation).
Figure 2Pearson correlations of IPP markers with the absolute count of immune cells. Six IPP markers were correlated with the absolute count of immune cells at T0 (red cirlces) and T4 (blue triangles), with a strong correlations above 0.7 (Pearson coefficient). All correlations were statistically significant p < 0.001. A positive correlations indicates that the normalized expression of IPP markers increases as the count increases. (A) correlations between S100A9 and CD177 expression with neutrophils count. (B) Correlation between TNF and CX3CR1, and monocytes count. (C) Correlation between CD3D and GATA3, and lymphocytes count.
Figure 3Comparison between in vivo and ex vivo LPS stimulation using IPP. PC analysis was used to compare the difference of expression between the human in vivo endotoxemia model (blue) and the ex vivo stimulation model (red) before (NUL, circles) and after the LPS challenge (LPS, triangles). The contribution of each gene to the plot is represented as arrows.
Figure 4Boxplots showing the fold change of IPP markers observed between the in vivo and the ex vivo models after LPS stimulation. On the y-axis is the fold change of both models (normalized expression in the stimulated condition (LPS) minus the unstimulated condition) presented as boxplots, in vitro stimulation (blue) and in vivo endotoxemia (green). (A) Fold change of markers associated with the early innate immune response. (B) Fold change of markers associated with the adaptive immune response. (C) Fold change of markers associated with inflammatory and anti-inflammatory cytokines. Fold changes were compared using Mann-Whitney U test and P values were adjusted using FDR (Benjamini-Hochberg), where NS: p > 0.05, *p < 0.05, **p < 0.01 and ***p < 0.001.