TY - JOUR
T1 - Combining phylogeography and spatial epidemiology to uncover predictors of H5N1 influenza A virus diffusion
AU - Magee, Daniel
AU - Beard, Rachel
AU - Suchard, Marc A.
AU - Lemey, Philippe
AU - Scotch, Matthew
N1 - Funding Information:
We would like to thank Dr. Peter Beerli for assistance with the Migrate-n program. We would also like to thank Sahithya Dhamodharan for her aid in gathering reference information. We thank Dr. Abdelsatar Arafa at the FAO for his assistance in the identification of local predictors in Egypt and for providing recent data regarding poultry production in the country. This research was supported in part by National Institutes of Health grants R00LM009825 (to MS), R01HG006139 (to MAS), and R01AI107034 (to MAS). This research was also supported in part by National Science Foundation grants DMS126153 and IIS1251151 (to MAS). In addition, this research was supported in part by the European Research Council under the European Community’s Seventh Framework Programme (FP7/2007-2013) under Grant Agreement No. 278433-PREDEMICS (to PL) and ERC Grant Agreement No. 260864 (to PL). The content is solely the responsibility of the authors and does not necessarily represent the official views of the National Institutes of Health, the National Science Foundation, or the European Research Council.
Publisher Copyright:
© 2014, Springer-Verlag Wien.
PY - 2015/1
Y1 - 2015/1
N2 - Emerging and re-emerging infectious diseases of zoonotic origin like highly pathogenic avian influenza pose a significant threat to human and animal health due to their elevated transmissibility. Identifying the drivers of such viruses is challenging, and estimation of spatial diffusion is complicated by the fact that the variability of viral spread from locations could be caused by a complex array of unknown factors. Several techniques exist to help identify these drivers, including bioinformatics, phylogeography, and spatial epidemiology, but these methods are generally evaluated separately and do not consider the complementary nature of each other. Here, we studied an approach that integrates these techniques and identifies the most important drivers of viral spread by focusing on H5N1 influenza A virus in Egypt because of its recent emergence as an epicenter for the disease. We used a Bayesian phylogeographic generalized linear model (GLM) to reconstruct spatiotemporal patterns of viral diffusion while simultaneously assessing the impact of factors contributing to transmission. We also calculated the cross-species transmission rates among hosts in order to identify the species driving transmission. The densities of both human and avian species were supported contributors, along with latitude, longitude, elevation, and several meteorological variables. Also supported was the presence of a genetic motif found near the hemagglutinin cleavage site. Various genetic, geographic, demographic, and environmental predictors each play a role in H1N1 diffusion. Further development and expansion of phylogeographic GLMs such as this will enable health agencies to identify variables that can curb virus diffusion and reduce morbidity and mortality.
AB - Emerging and re-emerging infectious diseases of zoonotic origin like highly pathogenic avian influenza pose a significant threat to human and animal health due to their elevated transmissibility. Identifying the drivers of such viruses is challenging, and estimation of spatial diffusion is complicated by the fact that the variability of viral spread from locations could be caused by a complex array of unknown factors. Several techniques exist to help identify these drivers, including bioinformatics, phylogeography, and spatial epidemiology, but these methods are generally evaluated separately and do not consider the complementary nature of each other. Here, we studied an approach that integrates these techniques and identifies the most important drivers of viral spread by focusing on H5N1 influenza A virus in Egypt because of its recent emergence as an epicenter for the disease. We used a Bayesian phylogeographic generalized linear model (GLM) to reconstruct spatiotemporal patterns of viral diffusion while simultaneously assessing the impact of factors contributing to transmission. We also calculated the cross-species transmission rates among hosts in order to identify the species driving transmission. The densities of both human and avian species were supported contributors, along with latitude, longitude, elevation, and several meteorological variables. Also supported was the presence of a genetic motif found near the hemagglutinin cleavage site. Various genetic, geographic, demographic, and environmental predictors each play a role in H1N1 diffusion. Further development and expansion of phylogeographic GLMs such as this will enable health agencies to identify variables that can curb virus diffusion and reduce morbidity and mortality.
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U2 - 10.1007/s00705-014-2262-5
DO - 10.1007/s00705-014-2262-5
M3 - Article
C2 - 25355432
AN - SCOPUS:84925284261
SN - 0304-8608
VL - 160
SP - 215
EP - 224
JO - Archives of virology
JF - Archives of virology
IS - 1
ER -