Effects of pathogen dependency in a multi-pathogen infectious disease system including population level heterogeneity - a simulation study
Authored by Abhishek Bakuli, Frank Klawonn, Andre Karch, Rafael Mikolajczyk
Date Published: 2017
DOI: 10.1186/s12976-017-0072-7
Sponsors:
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Platforms:
R
Model Documentation:
Other Narrative
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Model Code URLs:
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Abstract
Background: Increased computational resources have made individual based
models popular for modelling epidemics. They have the advantage of
incorporating heterogeneous features, including realistic population
structures (like e.g. households). Existing stochastic simulation
studies of epidemics, however, have been developed mainly for
incorporating single pathogen scenarios although the effect of different
pathogens might directly or indirectly (e.g. via contact reductions)
effect the spread of each pathogen. The goal of this work was to
simulate a stochastic agent based system incorporating the effect of
multiple pathogens, accounting for the household based transmission
process and the dependency among pathogens.
Methods: With the help of simulations from such a system, we observed
the behaviour of the epidemics in different scenarios. The scenarios
included different household size distributions, dependency versus
independency of pathogens, and also the degree of dependency expressed
through household isolation during symptomatic phase of individuals.
Generalized additive models were used to model the association between
the epidemiological parameters of interest on the variation in the
parameter values from the simulation data. All the simulations and
statistical analyses were performed using R 3.4.0.
Results: We demonstrated the importance of considering pathogen
dependency using two pathogens, and showing the difference when
considered independent versus dependent. Additionally for the general
scenario with more pathogens, the assumption of dependency among
pathogens and the household size distribution in the population cohort
was found to be effective in containing the epidemic process.
Additionally, populations with larger household sizes reached the
epidemic peak faster than societies with smaller household sizes but
dependencies among pathogens did not affect this outcome significantly.
Larger households had more infections in all population cohort examples
considered in our simulations. Increase in household isolation
coefficient for pathogen dependency also could control the epidemic
process.
Conclusion: Presence of multiple pathogens and their interaction can
impact the behaviour of an epidemic across cohorts with different
household size distributions. Future household cohort studies
identifying multiple pathogens will provide useful data to verify the
interaction processes in such an infectious disease system.
Tags
epidemics
Agent based model
Households
models
Epidemic
Vaccination
influenza transmission
Household size
Pathogen dependency
Multi-pathogen