Inference for nonlinear epidemiological models using genealogies and time series.

Phylodynamics - the field aiming to quantitatively integrate the ecological and evolutionary dynamics of rapidly evolving populations like those of RNA viruses - increasingly relies upon coalescent approaches to infer past population dynamics from reconstructed genealogies. As sequence data have bec...

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Main Authors: David A Rasmussen, Oliver Ratmann, Katia Koelle
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2011-08-01
Series:PLoS Computational Biology
Online Access:http://europepmc.org/articles/PMC3161897?pdf=render
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spelling doaj-51578adc7cf746f38c6b9c27a7bad6652020-11-25T01:46:02ZengPublic Library of Science (PLoS)PLoS Computational Biology1553-734X1553-73582011-08-0178e100213610.1371/journal.pcbi.1002136Inference for nonlinear epidemiological models using genealogies and time series.David A RasmussenOliver RatmannKatia KoellePhylodynamics - the field aiming to quantitatively integrate the ecological and evolutionary dynamics of rapidly evolving populations like those of RNA viruses - increasingly relies upon coalescent approaches to infer past population dynamics from reconstructed genealogies. As sequence data have become more abundant, these approaches are beginning to be used on populations undergoing rapid and rather complex dynamics. In such cases, the simple demographic models that current phylodynamic methods employ can be limiting. First, these models are not ideal for yielding biological insight into the processes that drive the dynamics of the populations of interest. Second, these models differ in form from mechanistic and often stochastic population dynamic models that are currently widely used when fitting models to time series data. As such, their use does not allow for both genealogical data and time series data to be considered in tandem when conducting inference. Here, we present a flexible statistical framework for phylodynamic inference that goes beyond these current limitations. The framework we present employs a recently developed method known as particle MCMC to fit stochastic, nonlinear mechanistic models for complex population dynamics to gene genealogies and time series data in a Bayesian framework. We demonstrate our approach using a nonlinear Susceptible-Infected-Recovered (SIR) model for the transmission dynamics of an infectious disease and show through simulations that it provides accurate estimates of past disease dynamics and key epidemiological parameters from genealogies with or without accompanying time series data.http://europepmc.org/articles/PMC3161897?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author David A Rasmussen
Oliver Ratmann
Katia Koelle
spellingShingle David A Rasmussen
Oliver Ratmann
Katia Koelle
Inference for nonlinear epidemiological models using genealogies and time series.
PLoS Computational Biology
author_facet David A Rasmussen
Oliver Ratmann
Katia Koelle
author_sort David A Rasmussen
title Inference for nonlinear epidemiological models using genealogies and time series.
title_short Inference for nonlinear epidemiological models using genealogies and time series.
title_full Inference for nonlinear epidemiological models using genealogies and time series.
title_fullStr Inference for nonlinear epidemiological models using genealogies and time series.
title_full_unstemmed Inference for nonlinear epidemiological models using genealogies and time series.
title_sort inference for nonlinear epidemiological models using genealogies and time series.
publisher Public Library of Science (PLoS)
series PLoS Computational Biology
issn 1553-734X
1553-7358
publishDate 2011-08-01
description Phylodynamics - the field aiming to quantitatively integrate the ecological and evolutionary dynamics of rapidly evolving populations like those of RNA viruses - increasingly relies upon coalescent approaches to infer past population dynamics from reconstructed genealogies. As sequence data have become more abundant, these approaches are beginning to be used on populations undergoing rapid and rather complex dynamics. In such cases, the simple demographic models that current phylodynamic methods employ can be limiting. First, these models are not ideal for yielding biological insight into the processes that drive the dynamics of the populations of interest. Second, these models differ in form from mechanistic and often stochastic population dynamic models that are currently widely used when fitting models to time series data. As such, their use does not allow for both genealogical data and time series data to be considered in tandem when conducting inference. Here, we present a flexible statistical framework for phylodynamic inference that goes beyond these current limitations. The framework we present employs a recently developed method known as particle MCMC to fit stochastic, nonlinear mechanistic models for complex population dynamics to gene genealogies and time series data in a Bayesian framework. We demonstrate our approach using a nonlinear Susceptible-Infected-Recovered (SIR) model for the transmission dynamics of an infectious disease and show through simulations that it provides accurate estimates of past disease dynamics and key epidemiological parameters from genealogies with or without accompanying time series data.
url http://europepmc.org/articles/PMC3161897?pdf=render
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