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Published in: Archives of Virology 1/2015

01-01-2015 | Original Article

Combining phylogeography and spatial epidemiology to uncover predictors of H5N1 influenza A virus diffusion

Authors: Daniel Magee, Rachel Beard, Marc A. Suchard, Philippe Lemey, Matthew Scotch

Published in: Archives of Virology | Issue 1/2015

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Abstract

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.
Literature
1.
go back to reference Krauss H (2003) Zoonoses: Infectious Diseases Transmissible from Animals to Humans. ASM Press Krauss H (2003) Zoonoses: Infectious Diseases Transmissible from Animals to Humans. ASM Press
2.
3.
go back to reference Herrick K, Huettmann F, Lindgren M (2013) A global model of avian influenza prediction in wild birds: the importance of northern regions. Vet Res 44(1):42PubMedCentralPubMedCrossRef Herrick K, Huettmann F, Lindgren M (2013) A global model of avian influenza prediction in wild birds: the importance of northern regions. Vet Res 44(1):42PubMedCentralPubMedCrossRef
8.
go back to reference Ypma RJF, Bataille AMA, Stegeman A, Koch G, Wallinga J, van Ballegooijen WM (2012) Unravelling transmission trees of infectious diseases by combining genetic and epidemiological data. Proc R Soc B: Biol Sci 279(1728):444–450. doi:10.1098/rspb.2011.0913 CrossRef Ypma RJF, Bataille AMA, Stegeman A, Koch G, Wallinga J, van Ballegooijen WM (2012) Unravelling transmission trees of infectious diseases by combining genetic and epidemiological data. Proc R Soc B: Biol Sci 279(1728):444–450. doi:10.​1098/​rspb.​2011.​0913 CrossRef
10.
go back to reference WHO (2013) Cumulative number of confirmed human cases for avian influenza A (H5N1) reported to WHO, 2003–2013 WHO (2013) Cumulative number of confirmed human cases for avian influenza A (H5N1) reported to WHO, 2003–2013
11.
go back to reference Abdelwhab E, Hafez H (2011) An overview of the epidemic of highly pathogenic H5N1 avian influenza virus in Egypt: epidemiology and control challenges. Epidemiol Infecti 139(05):647–657. doi:10.1017/S0950268810003122 CrossRef Abdelwhab E, Hafez H (2011) An overview of the epidemic of highly pathogenic H5N1 avian influenza virus in Egypt: epidemiology and control challenges. Epidemiol Infecti 139(05):647–657. doi:10.​1017/​S095026881000312​2 CrossRef
14.
go back to reference Beard R, Magee D, Suchard MA, Lemey P, Scotch M (2013) Generalized linear models for identifying predictors of the evolutionary diffusion of viruses. Paper presented at the 2014 joint summits on translational science, San Francisco, CA Beard R, Magee D, Suchard MA, Lemey P, Scotch M (2013) Generalized linear models for identifying predictors of the evolutionary diffusion of viruses. Paper presented at the 2014 joint summits on translational science, San Francisco, CA
15.
go back to reference Scotch M, Mei C, Makonnen Y, Pinto J, Ali A, Vegso S, Kane M, Sarkar I, Rabinowitz P (2013) Phylogeography of influenza a H5N1 clade 2.2.1.1 in Egypt. BMC Genomics 14(1):871PubMedCentralPubMedCrossRef Scotch M, Mei C, Makonnen Y, Pinto J, Ali A, Vegso S, Kane M, Sarkar I, Rabinowitz P (2013) Phylogeography of influenza a H5N1 clade 2.2.1.1 in Egypt. BMC Genomics 14(1):871PubMedCentralPubMedCrossRef
16.
17.
go back to reference Lemey P, Rambaut A, Bedford T, Faria NR, Bielejec F, Baele G, Russell C, Smith D, Pybus O, Brockmann D, Suchard MA (2012) The seasonal flight of influenza: a unified framework for spatiotemporal hypothesis testing. arXiv:12105877v1. doi:10.1371/ Lemey P, Rambaut A, Bedford T, Faria NR, Bielejec F, Baele G, Russell C, Smith D, Pybus O, Brockmann D, Suchard MA (2012) The seasonal flight of influenza: a unified framework for spatiotemporal hypothesis testing. arXiv:12105877v1. doi:10.1371/
18.
go back to reference Kuo L, Mallick B (1998) Variable selection for regression models. Sankhya 60(1):65–81 Kuo L, Mallick B (1998) Variable selection for regression models. Sankhya 60(1):65–81
19.
go back to reference Chipman H, George E, McCulloch R (2010) BART: Bayesian additive regression trees. Ann Appl Stat 4(1):266–298CrossRef Chipman H, George E, McCulloch R (2010) BART: Bayesian additive regression trees. Ann Appl Stat 4(1):266–298CrossRef
21.
go back to reference Ayres DL, Darling A, Zwickl DJ, Beerli P, Holder MT, Lewis PO, Huelsenbeck JP, Ronquist F, Swofford DL, Cummings MP, Rambaut A, Suchard MA (2012) BEAGLE: an application programming interface and high-performance computing library for statistical phylogenetics. Syst Biol 61(1):170–173. doi:10.1093/sysbio/syr100 PubMedCentralPubMedCrossRef Ayres DL, Darling A, Zwickl DJ, Beerli P, Holder MT, Lewis PO, Huelsenbeck JP, Ronquist F, Swofford DL, Cummings MP, Rambaut A, Suchard MA (2012) BEAGLE: an application programming interface and high-performance computing library for statistical phylogenetics. Syst Biol 61(1):170–173. doi:10.​1093/​sysbio/​syr100 PubMedCentralPubMedCrossRef
22.
go back to reference CAPMAS (2012 est) Statistical tables for population at governorate level CAPMAS (2012 est) Statistical tables for population at governorate level
25.
go back to reference Yoon S-W, Kayali G, Ali MA, Webster RG, Webby RJ, Ducatez MF (2013) A single amino acid at the hemagglutinin cleavage site contributes to the pathogenicity but not the transmission of Egyptian highly pathogenic H5N1 influenza virus in chickens. J Virol 87(8):4786–4788. doi:10.1128/jvi.03551-12 PubMedCentralPubMedCrossRef Yoon S-W, Kayali G, Ali MA, Webster RG, Webby RJ, Ducatez MF (2013) A single amino acid at the hemagglutinin cleavage site contributes to the pathogenicity but not the transmission of Egyptian highly pathogenic H5N1 influenza virus in chickens. J Virol 87(8):4786–4788. doi:10.​1128/​jvi.​03551-12 PubMedCentralPubMedCrossRef
29.
go back to reference Streicker DG, Turmelle AS, Vonhof MJ, Kuzmin IV, McCracken GF, Rupprecht CE (2010) Host phylogeny constrains cross-species emergence and establishment of rabies virus in bats. Science 329(5992):676–679. doi:10.1126/science.1188836 PubMedCrossRef Streicker DG, Turmelle AS, Vonhof MJ, Kuzmin IV, McCracken GF, Rupprecht CE (2010) Host phylogeny constrains cross-species emergence and establishment of rabies virus in bats. Science 329(5992):676–679. doi:10.​1126/​science.​1188836 PubMedCrossRef
34.
go back to reference Kass RE, Raftery AE (1995) Bayes factors. J Am Stat Assoc 90(430):773–795CrossRef Kass RE, Raftery AE (1995) Bayes factors. J Am Stat Assoc 90(430):773–795CrossRef
40.
go back to reference Dolberg F (2009) Poultry sector country review: Bangladesh. Food and Agricultural Organization of the United Nations Dolberg F (2009) Poultry sector country review: Bangladesh. Food and Agricultural Organization of the United Nations
41.
42.
go back to reference Pfeiffer DU, Minh PQ, Martin V, Epprecht M, Otte MJ (2007) An analysis of the spatial and temporal patterns of highly pathogenic avian influenza occurrence in Vietnam using national surveillance data. Vet J 174 (2):302–309. doi:10.1016/j.tvjl.2007.05.010 Pfeiffer DU, Minh PQ, Martin V, Epprecht M, Otte MJ (2007) An analysis of the spatial and temporal patterns of highly pathogenic avian influenza occurrence in Vietnam using national surveillance data. Vet J 174 (2):302–309. doi:10.​1016/​j.​tvjl.​2007.​05.​010
43.
go back to reference Gilbert M, Xiao X, Pfeiffer DU, Epprecht M, Boles S, Czarnecki C, Chaitaweesub P, Kalpravidh W, Minh PQ, Otte MJ, Martin V, Slingenbergh J (2008) Mapping H5N1 highly pathogenic avian influenza risk in Southeast Asia. Proc Natl Acad Sci 105(12):4769–4774. doi:10.1073/pnas.0710581105 PubMedCentralPubMedCrossRef Gilbert M, Xiao X, Pfeiffer DU, Epprecht M, Boles S, Czarnecki C, Chaitaweesub P, Kalpravidh W, Minh PQ, Otte MJ, Martin V, Slingenbergh J (2008) Mapping H5N1 highly pathogenic avian influenza risk in Southeast Asia. Proc Natl Acad Sci 105(12):4769–4774. doi:10.​1073/​pnas.​0710581105 PubMedCentralPubMedCrossRef
Metadata
Title
Combining phylogeography and spatial epidemiology to uncover predictors of H5N1 influenza A virus diffusion
Authors
Daniel Magee
Rachel Beard
Marc A. Suchard
Philippe Lemey
Matthew Scotch
Publication date
01-01-2015
Publisher
Springer Vienna
Published in
Archives of Virology / Issue 1/2015
Print ISSN: 0304-8608
Electronic ISSN: 1432-8798
DOI
https://doi.org/10.1007/s00705-014-2262-5

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