期刊论文详细信息
BMC Genomics
Comparative transcriptome profiling approach to glean virulence and immunomodulation-related genes of Fasciola hepatica
Mahmut Şamil Sağıroğlu2  Bayram Yüksel1  Pınar Kavak2  Mete Akgün2  Orçun Haçarız1 
[1] TÜBİTAK Marmara Research Center, Genetic Engineering and Biotechnology Institute, Gebze, 41470, Kocaeli, Turkey;TÜBİTAK Marmara Research Center, Information Technologies Institute, Gebze, Kocaeli, Turkey
关键词: Evasion;    Immunomodulation;    Virulence;    RNA-Seq;    Trematode;    Whole transcriptome;    Fasciola hepatica;   
Others  :  1204018
DOI  :  10.1186/s12864-015-1539-8
 received in 2015-03-10, accepted in 2015-04-15,  发布年份 2015
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【 摘 要 】

Background

Fasciola hepatica causes chronic liver disease, fasciolosis, leading to significant losses in the livestock economy and concerns for human health in many countries. The identification of F. hepatica genes involved in the parasite’s virulence through modulation of host immune system is utmost important to comprehend evasion mechanisms of the parasite and develop more effective strategies against fasciolosis. In this study, to identify the parasite’s putative virulence genes which are associated with host immunomodulation, we explored whole transcriptome of an adult F. hepatica using current transcriptome profiling approaches integrated with detailed in silico analyses. In brief, the comparison of the parasite transcripts with the specialised public databases containing sequence data of non-parasitic organisms (Dugesiidae species and Caenorhabditis elegans) or of numerous pathogens and investigation of the sequences in terms of nucleotide evolution (directional selection) and cytokine signaling relation were conducted.

Results

NGS of the whole transcriptome resulted in 19,534,766 sequence reads, yielding a total of 40,260 transcripts (N50 = 522 bp). A number of the parasite transcripts (n = 1,671) were predicted to be virulence-related on the basis of the exclusive homology with the pathogen-associated data, positive selection or relationship with cytokine signaling. Of these, a group of the virulence-related genes (n = 62), not previously described, were found likely to be associated with immunomodulation based on in silico functional categorisation, showing significant sequence similarities with various immune receptors (i.e. MHC I class, TGF-β receptor, toll/interleukin-1 receptor, T-cell receptor, TNF receptor, and IL-18 receptor accessory protein), cytokines (i.e. TGF-β, interleukin-4/interleukin-13 and TNF-α), cluster of differentiations (e.g. CD48 and CD147) or molecules associated with other immunomodulatory mechanisms (such as regulation of macrophage activation). Some of the genes (n = 5) appeared to be under positive selection (Ka/Ks > 1), imitating proteins associated with cytokine signaling (through sequence homologies with thrombospondin type 1, toll/interleukin-1 receptor, TGF-β receptor and CD147).

Conclusions

With a comparative transcriptome profiling approach, we have identified a number of potential immunomodulator genes of F. hepatica (n = 62), which are firstly described here, could be employed for the development of better strategies (including RNAi) in the battle against both zoonotically and economically important disease, fasciolosis.

【 授权许可】

   
2015 Haçarız et al.; licensee BioMed Central.

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