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Genomic epidemiology reveals transmission patterns and dynamics of SARS-CoV-2 in Aotearoa New Zealand
Jemma L Geoghegan; Xiaoyun Ren; Matthew Storey; James Hadfield; Lauren Jelley; Sarah Jefferies; Jill Sherwood; Shevaun Paine; Sue Huang; Jordan Douglas; Fabio K Mendes; Andrew Sporle; Michael G Baker; David R Murdoch; Nigel French; Colin R Simpson; David Welch; Alexei J Drummond; Edward C Holmes; Sebastian Duchene; Joep de Ligt.
Afiliación
  • Jemma L Geoghegan; University of Otago
  • Xiaoyun Ren; Institute of Environmental Science and Research
  • Matthew Storey; Institute of Environmental Science and Research
  • James Hadfield; Fred Hutchinson Cancer Research Centre
  • Lauren Jelley; Institute of Environmental Science and Research
  • Sarah Jefferies; Institute of Environmental Science and Research
  • Jill Sherwood; Institute of Environmental Science and Research
  • Shevaun Paine; Institute of Environmental Science and Research
  • Sue Huang; Institute of Environmental Science and Research
  • Jordan Douglas; Centre for Computational Evolution, School of Computer Science, University of Auckland
  • Fabio K Mendes; University of Auckland
  • Andrew Sporle; McDonaldSporle Ltd., Auckland
  • Michael G Baker; Department of Public Health, University of Otago
  • David R Murdoch; Department of Pathology and Biomedical Science, University of Otago
  • Nigel French; Massey University
  • Colin R Simpson; School of Health, Faculty of Health, Victoria University of Wellington
  • David Welch; Centre for Computational Evolution, School of Computer Science, University of Auckland
  • Alexei J Drummond; Centre for Computational Evolution, School of Computer Science, University of Auckland
  • Edward C Holmes; University of Sydney
  • Sebastian Duchene; University of Melbourne
  • Joep de Ligt; Institute of Environmental Science and Research
Preprint en En | PREPRINT-MEDRXIV | ID: ppmedrxiv-20168930
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ABSTRACT
New Zealand, a geographically remote Pacific island with easily sealable borders, implemented a nation-wide lockdown of all non-essential services to curb the spread of COVID-19. New Zealand has now effectively eliminated the virus, with low numbers of new cases limited to new arrivals in managed quarantine facilities at the border. Here, we generated 649 SARS-CoV-2 genome sequences from infected patients in New Zealand with samples collected between 26 February and 22 May 2020, representing 56% of all confirmed cases in this time period. Despite its remoteness, the viruses imported into New Zealand represented nearly all of the genomic diversity sequenced from the global virus population. The proportion of D614G variants in the virus spike protein increased over time due to an increase in their importation frequency, rather than selection within New Zealand. These data also helped to quantify the effectiveness of public health interventions. For example, the effective reproductive number, Re, of New Zealands largest cluster decreased from 7 to 0.2 within the first week of lockdown. Similarly, only 19% of virus introductions into New Zealand resulted in a transmission lineage of more than one additional case. Most of the cases that resulted in a transmission lineage originated from North America, rather than from Asia where the virus first emerged or from the nearest geographical neighbour, Australia. Genomic data also helped link more infections to a major transmission cluster than through epidemiological data alone, providing probable sources of infections for cases in which the source was unclear. Overall, these results demonstrate the utility of genomic pathogen surveillance to inform public health and disease mitigation.
Licencia
cc_by_nc_nd
Texto completo: 1 Colección: 09-preprints Base de datos: PREPRINT-MEDRXIV Tipo de estudio: Observational_studies Idioma: En Año: 2020 Tipo del documento: Preprint
Texto completo: 1 Colección: 09-preprints Base de datos: PREPRINT-MEDRXIV Tipo de estudio: Observational_studies Idioma: En Año: 2020 Tipo del documento: Preprint