Gene expression profiling of Gram-negative bacteria-induced inflammation in human whole blood: The role of complement and CD14-mediated innate immune response
Permanent link
https://hdl.handle.net/10037/8586Date
2015-05-30Type
Journal articleTidsskriftartikkel
Peer reviewed
Author
Lau, Corinna; Olstad, Ole Kristoffer; Holden, Marit; Nygård, Ståle; Fure, Hilde; Lappegård, Knut Tore; Brekke, Ole Lars; Espevik, Terje; Hovig, Johannes Eivind; Mollnes, Tom EirikAbstract
Non-sterile pathogen-induced sepsis and sterile inflammation like in trauma or ischemia–reperfusion injury
may both coincide with the life threatening systemic inflammatory response syndrome and multi-organ
failure. Consequently, there is an urgent need for specific biomarkers in order to distinguish sepsis from
sterile conditions. The overall aim of this study was to uncover putative sepsis biomarkers and biomarker
pathways, as well as to test the efficacy of combined inhibition of innate immunity key players complement
and Toll-like receptor co-receptor CD14 as a possible therapeutic regimen for sepsis. We performed whole
blood gene expression analyses using microarray in order to profile Gram-negative bacteria-induced in-
flammatory responses in an ex vivo human whole blood model. The experiments were performed in the
presence or absence of inhibitors of complement proteins (C3 and CD88 (C5a receptor 1)) and CD14,
alone or in combination. In addition, we used blood from a C5-deficient donor. Anti-coagulated whole
blood was challenged with heat-inactivated Escherichia coli for 2 h, total RNA was isolated and microarray
analyses were performed on the Affymetrix GeneChip Gene 1.0 ST Array platform. The initial experiments
were performed in duplicates using blood from two healthy donors. C5-deficiency is very rare, and only
one donor could be recruited. In order to increase statistical power, a technical replicate of the C5-
deficient samples was run. Subsequently, log2-transformed intensities were processed by robust multichip
analysis and filtered using a threshold of four. In total, 73 microarray chips were run and analyzed. The normalized
and filtered raw data have been deposited in NCBI's Gene Expression Omnibus (GEO) and are accessible
with GEO Series accession number GSE55537. Linear models for microarray data were applied to
estimate fold changes between data sets and the respective multiple testing adjusted p-values (FDR qvalues).
The interpretation of the data has been published by Lau et al. in an open access article entitled
“CD14 and Complement Crosstalk and Largely Mediate the Transcriptional Response to Escherichia coli in
Human Whole Blood as revealed by DNA Microarray” (Lau et al., 2015).
Description
This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
Published version also available at http://dx.doi.org/10.1016/j.gdata.2015.05.019