A two-tiered model for simulating the ecological and evolutionary dynamics of rapidly evolving viruses, with an application to influenza
Authored by Thomas B Kepler, Katia Koelle, Priya Khatri, Meredith Kamradt
Date Published: 2010
DOI: 10.1098/rsif.2010.0007
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Model Documentation:
Other Narrative
Mathematical description
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Abstract
Understanding the epidemiological and evolutionary dynamics of rapidly
evolving pathogens is one of the most challenging problems facing
disease ecologists today. To date, many mathematical and
individual-based models have provided key insights into the factors that
may regulate these dynamics. However, in many of these models, abstractions have been made to the simulated sequences that limit an
effective interface with empirical data. This is especially the case for
rapidly evolving viruses in which de novo mutations result in
antigenically novel variants. With this focus, we present a simple
two-tiered `phylodynamic' model whose purpose is to simulate, along with
case data, sequence data that will allow for a more quantitative
interface with observed sequence data. The model differs from previous
approaches in that it separates the simulation of the epidemiological
dynamics (tier 1) from the molecular evolution of the virus's dominant
antigenic protein (tier 2). This separation of phenotypic dynamics from
genetic dynamics results in a modular model that is computationally
simpler and allows sequences to be simulated with specifications such as
sequence length, nucleotide composition and molecular constraints. To
illustrate its use, we apply the model to influenza A (H3N2) dynamics in
humans, influenza B dynamics in humans and influenza A (H3N8) dynamics
in equine hosts. In all three of these illustrative examples, we show
that the model can simulate sequences that are quantitatively similar in
pattern to those empirically observed. Future work should focus on
statistical estimation of model parameters for these examples as well as
the possibility of applying this model, or variants thereof, to other
host-virus systems.
Tags
time-series
Genetic-characterization
Epochal evolution
Disease dynamics
A virus
2 distinct lineages
B-virus
Monoclonal-antibodies
Antigenic variation
Positive
selection