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  3. System immunology-based identification of blood transcriptional modules correlating to antibody responses in sheep.
 

System immunology-based identification of blood transcriptional modules correlating to antibody responses in sheep.

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BORIS DOI
10.7892/boris.127519
Publisher DOI
10.1038/s41541-018-0078-0
PubMed ID
30302283
Description
Inactivated vaccines lack immunogenicity and therefore require potent adjuvants. To understand the in vivo effects of adjuvants, we used a system immunology-based analysis of ovine blood transcriptional modules (BTMs) to dissect innate immune responses relating to either antibody or haptoglobin levels. Using inactivated foot-and-mouth disease virus as an antigen, we compared non-adjuvanted to liposomal-formulated vaccines complemented or not with TLR4 and TLR7 ligands. Early after vaccination, BTM relating to myeloid cells, innate immune responses, dendritic cells, and antigen presentation correlated positively, whereas BTM relating to T and natural killer cells, as well as cell cycle correlated negatively with antibody responses. Interestingly, similar BTM also correlated with haptoglobin, but in a reversed manner, indicating that acute systemic inflammation is not beneficial for early antibody responses. Analysis of vaccine-dependent BTM modulation showed that liposomal formulations induced similar responses to those correlating to antibody levels. Surprisingly, the addition of the TLR ligands appeared to reduce early immunological perturbations and mediated anti-inflammatory effects, despite promoting antibody responses. When pre-vaccination BTM were analyzed, we found that high vaccine responders expressed higher levels of many BTM relating to cell cycle, antigen-presenting cells, and innate responses as compared with low responders. In conclusion, we have transferred human BTM to sheep and identified early vaccine-induced responses associated with antibody levels or unwanted inflammation in a heterogeneous and small group of animals. Such readouts are applicable to other veterinary species and very useful to identify efficient vaccine adjuvants, their mechanism of action, and factors related to low responders.
Date of Publication
2018-10-03
Publication Type
Article
Subject(s)
500 - Science::570 - Life sciences; biology
600 - Technology::630 - Agriculture
Language(s)
en
Contributor(s)
Braun, Roman Othmar
Institut für Virologie und Immunologie (IVI)
Brunner, Livia
Wyler, Kurt
Auray, Gael
Institut für Virologie und Immunologie (IVI)
Garcia Nicolas, Obdulio
Institut für Virologie und Immunologie (IVI)
Python, Sylvie
Zumkehr, Beatrice
Gaschen, Véronique
Department of Clinical Research and Veterinary Public Health, Veterinär-Anatomie
Stoffel, Michael Hubertorcid-logo
Department of Clinical Research and Veterinary Public Health, Veterinär-Anatomie
Collin, Nicolas
Barnier-Quer, Christophe
Bruggmann, Rémy
Bioinformatik und computerbasierte Biologie
Summerfield, Arturorcid-logo
Institut für Virologie und Immunologie (IVI)
Additional Credits
Institut für Virologie und Immunologie (IVI)
Department of Clinical Research and Veterinary Public Health, Veterinär-Anatomie
Bioinformatik und computerbasierte Biologie
Series
npj vaccines
Publisher
Nature Publishing Group
ISSN
2059-0105
Related URL(s)
https://boris.unibe.ch/id/eprint/136589
Access(Rights)
open.access
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