An agent-based model simulation of influenza interactions at the host level: insight into the influenza-related burden of pneumococcal infections
Authored by Lulla Opatowski, Didier Guillemot, Helene Arduin, Celles Matthieu Domenech de, Laurence Watier
Date Published: 2017
DOI: 10.1186/s12879-017-2464-z
Sponsors:
French National Research Agency (ANR)
Platforms:
NetLogo
Model Documentation:
Other Narrative
Model Code URLs:
http://b2phi.inserm.fr/#/resources/71/NetLogo-SimFI-model
Abstract
Background: Host-level influenza virus-respiratory pathogen interactions
are often reported. Although the exact biological mechanisms involved
remain unelucidated, secondary bacterial infections are known to account
for a large part of the influenza-associated burden, during seasonal and
pandemic outbreaks. Those interactions probably impact the
microorganisms' transmission dynamics and the influenza public health
toll. Mathematical models have been widely used to examine influenza
epidemics and the public health impact of control measures. However,
most influenza models overlooked interaction phenomena and ignored other
co-circulating pathogens.
Methods: Herein, we describe a novel agent-based model (ABM) of
influenza transmission during interaction with another respiratory
pathogen. The interacting microorganism can persist in the population
year round (endemic type, e.g. respiratory bacteria) or cause short-term
annual outbreaks (epidemic type, e.g. winter respiratory viruses). The
agent-based framework enables precise formalization of the pathogens'
natural histories and complex within-host phenomena. As a case study,
this ABM is applied to the well-known influenza virus-pneumococcus
interaction, for which several biological mechanisms have been proposed.
Different mechanistic hypotheses of interaction are simulated and the
resulting virus-induced pneumococcal infection (PI) burden is assessed.
Results: This ABM generates realistic data for both pathogens in terms
of weekly incidences of PI cases, carriage rates, epidemic size and
epidemic timing. Notably, distinct interaction hypotheses resulted in
different transmission patterns and led to wide variations of the
associated PI burden. Interaction strength was also of paramount
importance: when influenza increased pneumococcus acquisition, 4-27\% of
the PI burden during the influenza season was attributable to influenza
depending on the interaction strength.
Conclusions: This open-source ABM provides new opportunities to
investigate influenza interactions from a theoretical point of view and
could easily be extended to other pathogens. It provides a unique
framework to generate in silico data for different scenarios and thereby
test mechanistic hypotheses.
Tags
Agent-based model
Simulation
Mathematical model
Epidemiology
interference
Influenza
disease
Transmission dynamics
Children
Virus
Carriage
Bacterial
Burden
Kilifi district
Streptococcus-pneumoniae
Between-pathogens interaction
Pneumococcus
Haemophilus-influenzae
Viral-infections