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Full-length genome sequences of porcine epidemic diarrhoea virus strain CV777; use of NGS to analyse genomic and sub-genomic RNAs

Authors
  • Rasmussen, Thomas Bruun
  • Boniotti, Maria Beatrice
  • Papetti, Alice
  • Grasland, Béatrice
  • Frossard, Jean Pierre
  • Dastjerdi, Akbar
  • Hulst, Marcel
  • Hanke, Dennis
  • Pohlmann, Anne
  • Blome, Sandra
  • Steinbach, Falko
  • Blanchard, Yannick
  • Lavazza, Antonio
  • Bøtner, Anette
  • Belsham, Graham J.
Publication Date
Jan 01, 2018
Source
Wageningen University and Researchcenter Publications
Keywords
Language
English
License
Unknown
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Abstract

Porcine epidemic diarrhoea virus, strain CV777, was initially characterized in 1978 as the causative agent of a disease first identified in the UK in 1971. This coronavirus has been widely distributed among laboratories and has been passaged both within pigs and in cell culture. To determine the variability between different stocks of the PEDV strain CV777, sequencing of the full-length genome (ca. 28kb) has been performed in 6 different laboratories, using different protocols. Not surprisingly, each of the different full genome sequences were distinct from each other and from the reference sequence (Accession number AF353511) but they are >99% identical. Unique and shared differences between sequences were identified. The coding region for the surface-exposed spike protein showed the highest proportion of variability including both point mutations and small deletions. The predicted expression of the ORF3 gene product was more dramatically affected in three different variants of this virus through either loss of the initiation codon or gain of a premature termination codon. The genome of one isolate had a substantially rearranged 5´-terminal sequence. This rearrangement was validated through the analysis of sub-genomic mRNAs from infected cells. It is clearly important to know the features of the specific sample of CV777 being used for experimental studies.

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