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Strain Interactions As a Mechanism for Dominant Strain Alternation and Incidence Oscillation in Infectious Diseases: Seasonal Influenza As a Case Study

Overview
Journal PLoS One
Date 2015 Nov 13
PMID 26562668
Citations 4
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Abstract

Background: Many human infectious diseases are caused by pathogens that have multiple strains and show oscillation in infection incidence and alternation of dominant strains which together are referred to as epidemic cycling. Understanding the underlying mechanisms of epidemic cycling is essential for forecasting outbreaks of epidemics and therefore important for public health planning. Current theoretical effort is mainly focused on the factors that are extrinsic to the pathogens themselves ("extrinsic factors") such as environmental variation and seasonal change in human behaviours and susceptibility. Nevertheless, co-circulation of different strains of a pathogen was usually observed and thus strains interact with one another within concurrent infection and during sequential infection. The existence of these intrinsic factors is common and may be involved in the generation of epidemic cycling of multi-strain pathogens.

Methods And Findings: To explore the mechanisms that are intrinsic to the pathogens themselves ("intrinsic factors") for epidemic cycling, we consider a multi-strain SIRS model including cross-immunity and infectivity enhancement and use seasonal influenza as an example to parameterize the model. The Kullback-Leibler information distance was calculated to measure the match between the model outputs and the typical features of seasonal flu (an outbreak duration of 11 weeks and an annual attack rate of 15%). Results show that interactions among strains can generate seasonal influenza with these characteristic features, provided that: the infectivity of a single strain within concurrent infection is enhanced 2-7 times that within a single infection; cross-immunity as a result of past infection is 0.5-0.8 and lasts 2-9 years; while other parameters are within their widely accepted ranges (such as a 2-3 day infectious period and the basic reproductive number of 1.8-3.0). Moreover, the observed alternation of the dominant strain among epidemics emerges naturally from the best fit model. Alternative modelling that also includes seasonal forcing in transmissibility shows that both external mechanisms (i.e. seasonal forcing) and the intrinsic mechanisms (i.e., strain interactions) are equally able to generate the observed time-series in seasonal flu.

Conclusions: The intrinsic mechanism of strain interactions alone can generate the observed patterns of seasonal flu epidemics, but according to Kullback-Leibler information distance the importance of extrinsic mechanisms cannot be excluded. The intrinsic mechanism illustrated here to explain seasonal flu may also apply to other infectious diseases caused by polymorphic pathogens.

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References
1.
Denoeud L, Turbelin C, Ansart S, Valleron A, Flahault A, Carrat F . Predicting pneumonia and influenza mortality from morbidity data. PLoS One. 2007; 2(5):e464. PMC: 1866180. DOI: 10.1371/journal.pone.0000464. View

2.
Recker M, Blyuss K, Simmons C, Hien T, Wills B, Farrar J . Immunological serotype interactions and their effect on the epidemiological pattern of dengue. Proc Biol Sci. 2009; 276(1667):2541-8. PMC: 2684681. DOI: 10.1098/rspb.2009.0331. View

3.
Perez D, Sorrell E, Angel M, Ye J, Hickman D, Pena L . Fitness of Pandemic H1N1 and Seasonal influenza A viruses during Co-infection: Evidence of competitive advantage of pandemic H1N1 influenza versus seasonal influenza. PLoS Curr. 2012; 1:RRN1011. PMC: 2762341. DOI: 10.1371/currents.RRN1011. View

4.
Laurie K, Carolan L, Middleton D, Lowther S, Kelso A, Barr I . Multiple infections with seasonal influenza A virus induce cross-protective immunity against A(H1N1) pandemic influenza virus in a ferret model. J Infect Dis. 2010; 202(7):1011-20. DOI: 10.1086/656188. View

5.
Bodewes R, Kreijtz J, van Amerongen G, Hillaire M, Vogelzang-van Trierum S, Nieuwkoop N . Infection of the upper respiratory tract with seasonal influenza A(H3N2) virus induces protective immunity in ferrets against infection with A(H1N1)pdm09 virus after intranasal, but not intratracheal, inoculation. J Virol. 2013; 87(8):4293-301. PMC: 3624397. DOI: 10.1128/JVI.02536-12. View