The global antigenic diversity of swine influenza A viruses

  1. Nicola S Lewis  Is a corresponding author
  2. Colin A Russell
  3. Pinky Langat
  4. Tavis K Anderson
  5. Kathryn Berger
  6. Filip Bielejec
  7. David F Burke
  8. Gytis Dudas
  9. Judith M Fonville
  10. Ron AM Fouchier
  11. Paul Kellam
  12. Bjorn F Koel
  13. Philippe Lemey
  14. Tung Nguyen
  15. Bundit Nuansrichy
  16. JS Malik Peiris
  17. Takehiko Saito
  18. Gaelle Simon
  19. Eugene Skepner
  20. Nobuhiro Takemae
  21. ESNIP3 consortium
  22. Richard J Webby
  23. Kristien Van Reeth
  24. Sharon M Brookes
  25. Lars Larsen
  26. Simon J Watson
  27. Ian H Brown
  28. Amy L Vincent
  1. University of Cambridge, United Kingdom
  2. Wellcome Trust Sanger Institute, United Kingdom
  3. USDA-ARS, United States
  4. Rega Institute for Medical Research, Belgium
  5. University of Edinburgh, United Kingdom
  6. Erasmus Medical Center, Netherlands
  7. National Centre for Veterinary Diagnostics, Vietnam
  8. National Institute of Animal Health, Thailand
  9. The University of Hong Kong, China
  10. National Institute of Animal Health, Japan
  11. Anses, Ploufragan-Plouzané Laboratory, France
  12. St Jude Children's Research Hospital, United States
  13. Ghent University, Belgium
  14. Animal and Plant Health Agency, United Kingdom
  15. Technical University of Denmark, Denmark
2 figures and 4 additional files

Figures

Figure 1 with 7 supplements
Evolutionary relationships of H1 (A, B) and H3 (C, D) influenza viruses circulating in swine and humans inferred by Bayesian Multi-dimensional scaling (BMDS).

Each colored ball represents a single virus. Viruses are colored by lineage (A,C) and by geography (B,D). Lines connecting each virus represent inferred phylogenetic relationships. Distances for antigenic dimensions are measured in antigenic units (AU) and each unit is equivalent to a two-fold dilution in HI assay data. Antigenic distance can be interpreted as a measure of antigenic similarity – viruses close to one another are more antigenically similar than viruses further apart. Interactive visualizations are available at https://phylogeography.github.io/influenzaH1/ and https://phylogeography.github.io/influenzaH3/. Source data and GIF files for rotational views of 3D antigenic maps in Figure 1 have been deposited in Dryad (Lewis et al., 2016).

https://doi.org/10.7554/eLife.12217.003
Figure 1—figure supplement 1
Figure 1A,B colored by H1 genetic sub lineages in the Bayesian MCC tree.
https://doi.org/10.7554/eLife.12217.004
Figure 1—figure supplement 2
Bayesian H1 MCC tree with taxa labels and posterior support values
https://doi.org/10.7554/eLife.12217.005
Figure 1—figure supplement 3
Figure 1C,D colored by H3 genetic sub lineages in the Bayesian MCC tree.
https://doi.org/10.7554/eLife.12217.006
Figure 1—figure supplement 4
Bayesian H3 MCC tree with taxa labels and posterior support values
https://doi.org/10.7554/eLife.12217.007
Figure 1—figure supplement 5
Maximum likelihood phylogenetic trees colored by lineage.
https://doi.org/10.7554/eLife.12217.008
Figure 1—figure supplement 6
Maximum likelihood H1 phylogenetic tree with taxa labels and bootstrap support values
https://doi.org/10.7554/eLife.12217.009
Figure 1—figure supplement 7
Maximum likelihood H3 phylogenetic tree with taxa labels and bootstrap support values.
https://doi.org/10.7554/eLife.12217.010
Time series of year-to-year rates of antigenic drift distance and antigenic diversity of H1 and H3 viruses in swine by genetic lineage.

Solid colored lines represent year-to-year antigenic drift distance, where drift for year i is measured as the mean of Euclidean distances among strains in a phylogenetic lineage in year i compared to the mean of Euclidean distances among strains of that phylogenetic lineage from the previous year (i–1). The dotted line represents antigenic diversity among H1 and H3 strains by lineage through time. For the solid and dotted lines, the shaded region represents the range of the highest posterior density estimates. Multiple introductions which circulate for >5 years of the human seasonal-like swine H1 lineage in European (purple) and USA (gold) swine were calculated separately. Source data for Figure 2 has been deposited in Dryad (Lewis et al., 2016).

https://doi.org/10.7554/eLife.12217.011

Additional files

Supplementary file 1

Dimension testing results for antigenic maps characterising the evolution of H1 and H3 influenza viruses.

https://doi.org/10.7554/eLife.12217.012
Supplementary file 2

Mean pairwise distances between swine influenza lineage groups/strains and between human currently circulating strains (AU) and associated 95% credible interval.

https://doi.org/10.7554/eLife.12217.013
Supplementary file 3

Overall drift rate in antigenic units per year for H1 and H3 swine influenza virus lineages and 95% credible interval (HPD).

https://doi.org/10.7554/eLife.12217.014
Supplementary file 4

Summary of previously reported rates of antigenic drift of influenza A viruses.

https://doi.org/10.7554/eLife.12217.015

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  1. Nicola S Lewis
  2. Colin A Russell
  3. Pinky Langat
  4. Tavis K Anderson
  5. Kathryn Berger
  6. Filip Bielejec
  7. David F Burke
  8. Gytis Dudas
  9. Judith M Fonville
  10. Ron AM Fouchier
  11. Paul Kellam
  12. Bjorn F Koel
  13. Philippe Lemey
  14. Tung Nguyen
  15. Bundit Nuansrichy
  16. JS Malik Peiris
  17. Takehiko Saito
  18. Gaelle Simon
  19. Eugene Skepner
  20. Nobuhiro Takemae
  21. ESNIP3 consortium
  22. Richard J Webby
  23. Kristien Van Reeth
  24. Sharon M Brookes
  25. Lars Larsen
  26. Simon J Watson
  27. Ian H Brown
  28. Amy L Vincent
(2016)
The global antigenic diversity of swine influenza A viruses
eLife 5:e12217.
https://doi.org/10.7554/eLife.12217