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A vaccine programme comprising GA08 (GI-27) and Mass (GI-1) strains prevents DMV1639 (GI-17) infectious bronchitis virus transmission among broiler chickens.

Sean K BrimerEgil A J FischerSean K BrimerJames WhiteChristophe CazabanTimea Tatár-KisFrancisca C VelkersJohn ElattracheJan Arend Stegeman
Published in: Avian pathology : journal of the W.V.P.A (2024)
Effective control of infectious bronchitis is a challenge in commercial poultry operations due to the high transmissibility of the virus. Although multiple IBV lineages are circulating in the United States, the DMV1639-type IBV strain (GI-17) is currently the major circulating variant, creating production losses in the poultry industry. This study aimed to test whether the combination of a GA08 (GI-27) and a Mass-type (GI-1) IB vaccines could significantly reduce the transmission of a DMV1639-type (GI-17) field IBV strain in 4-week-old commercial broilers. Half of the birds were directly challenged, whereas the other half of the groupmates were put in contact 24 hours later. Two replicates of the same study setup, including 10 directly challenged and 10 contact birds per group, were run. Transmission of the challenge virus was significantly reduced in vaccinates ( R  = 0.0), whereas all unvaccinated birds became infected ( R  = 9.6). Reduced transmission of the DMV1639 IB challenge virus by the combined vaccination programme in broiler chickens was also accompanied by clinical protection. These data are important because prevention of IBV transmission by vaccination will result in overall reduced viral replication and consequently in reduced likelihood of genetic changes that can lead to new variants. This is the first published evidence of the successful transmission control of a DMV1639 IBV strain in chickens.
Keyphrases
  • heat stress
  • pet ct
  • escherichia coli
  • study protocol
  • clinical trial
  • sars cov
  • randomized controlled trial
  • copy number
  • gene expression
  • mouse model
  • dna methylation
  • disease virus
  • deep learning