Cargando…

Inferring Epidemiological Dynamics with Bayesian Coalescent Inference: The Merits of Deterministic and Stochastic Models

Estimation of epidemiological and population parameters from molecular sequence data has become central to the understanding of infectious disease dynamics. Various models have been proposed to infer details of the dynamics that describe epidemic progression. These include inference approaches deriv...

Descripción completa

Detalles Bibliográficos
Autores principales: Popinga, Alex, Vaughan, Tim, Stadler, Tanja, Drummond, Alexei J.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Genetics Society of America 2015
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4317665/
https://www.ncbi.nlm.nih.gov/pubmed/25527289
http://dx.doi.org/10.1534/genetics.114.172791
_version_ 1782355712565837824
author Popinga, Alex
Vaughan, Tim
Stadler, Tanja
Drummond, Alexei J.
author_facet Popinga, Alex
Vaughan, Tim
Stadler, Tanja
Drummond, Alexei J.
author_sort Popinga, Alex
collection PubMed
description Estimation of epidemiological and population parameters from molecular sequence data has become central to the understanding of infectious disease dynamics. Various models have been proposed to infer details of the dynamics that describe epidemic progression. These include inference approaches derived from Kingman’s coalescent theory. Here, we use recently described coalescent theory for epidemic dynamics to develop stochastic and deterministic coalescent susceptible–infected–removed (SIR) tree priors. We implement these in a Bayesian phylogenetic inference framework to permit joint estimation of SIR epidemic parameters and the sample genealogy. We assess the performance of the two coalescent models and also juxtapose results obtained with a recently published birth–death-sampling model for epidemic inference. Comparisons are made by analyzing sets of genealogies simulated under precisely known epidemiological parameters. Additionally, we analyze influenza A (H1N1) sequence data sampled in the Canterbury region of New Zealand and HIV-1 sequence data obtained from known United Kingdom infection clusters. We show that both coalescent SIR models are effective at estimating epidemiological parameters from data with large fundamental reproductive number [Formula: see text] and large population size [Formula: see text]. Furthermore, we find that the stochastic variant generally outperforms its deterministic counterpart in terms of error, bias, and highest posterior density coverage, particularly for smaller [Formula: see text] and [Formula: see text]. However, each of these inference models is shown to have undesirable properties in certain circumstances, especially for epidemic outbreaks with [Formula: see text] close to one or with small effective susceptible populations.
format Online
Article
Text
id pubmed-4317665
institution National Center for Biotechnology Information
language English
publishDate 2015
publisher Genetics Society of America
record_format MEDLINE/PubMed
spelling pubmed-43176652016-01-31 Inferring Epidemiological Dynamics with Bayesian Coalescent Inference: The Merits of Deterministic and Stochastic Models Popinga, Alex Vaughan, Tim Stadler, Tanja Drummond, Alexei J. Genetics Investigations Estimation of epidemiological and population parameters from molecular sequence data has become central to the understanding of infectious disease dynamics. Various models have been proposed to infer details of the dynamics that describe epidemic progression. These include inference approaches derived from Kingman’s coalescent theory. Here, we use recently described coalescent theory for epidemic dynamics to develop stochastic and deterministic coalescent susceptible–infected–removed (SIR) tree priors. We implement these in a Bayesian phylogenetic inference framework to permit joint estimation of SIR epidemic parameters and the sample genealogy. We assess the performance of the two coalescent models and also juxtapose results obtained with a recently published birth–death-sampling model for epidemic inference. Comparisons are made by analyzing sets of genealogies simulated under precisely known epidemiological parameters. Additionally, we analyze influenza A (H1N1) sequence data sampled in the Canterbury region of New Zealand and HIV-1 sequence data obtained from known United Kingdom infection clusters. We show that both coalescent SIR models are effective at estimating epidemiological parameters from data with large fundamental reproductive number [Formula: see text] and large population size [Formula: see text]. Furthermore, we find that the stochastic variant generally outperforms its deterministic counterpart in terms of error, bias, and highest posterior density coverage, particularly for smaller [Formula: see text] and [Formula: see text]. However, each of these inference models is shown to have undesirable properties in certain circumstances, especially for epidemic outbreaks with [Formula: see text] close to one or with small effective susceptible populations. Genetics Society of America 2015-02 2014-12-19 /pmc/articles/PMC4317665/ /pubmed/25527289 http://dx.doi.org/10.1534/genetics.114.172791 Text en Copyright © 2015 by the Genetics Society of America Available freely online through the author-supported open access option.
spellingShingle Investigations
Popinga, Alex
Vaughan, Tim
Stadler, Tanja
Drummond, Alexei J.
Inferring Epidemiological Dynamics with Bayesian Coalescent Inference: The Merits of Deterministic and Stochastic Models
title Inferring Epidemiological Dynamics with Bayesian Coalescent Inference: The Merits of Deterministic and Stochastic Models
title_full Inferring Epidemiological Dynamics with Bayesian Coalescent Inference: The Merits of Deterministic and Stochastic Models
title_fullStr Inferring Epidemiological Dynamics with Bayesian Coalescent Inference: The Merits of Deterministic and Stochastic Models
title_full_unstemmed Inferring Epidemiological Dynamics with Bayesian Coalescent Inference: The Merits of Deterministic and Stochastic Models
title_short Inferring Epidemiological Dynamics with Bayesian Coalescent Inference: The Merits of Deterministic and Stochastic Models
title_sort inferring epidemiological dynamics with bayesian coalescent inference: the merits of deterministic and stochastic models
topic Investigations
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4317665/
https://www.ncbi.nlm.nih.gov/pubmed/25527289
http://dx.doi.org/10.1534/genetics.114.172791
work_keys_str_mv AT popingaalex inferringepidemiologicaldynamicswithbayesiancoalescentinferencethemeritsofdeterministicandstochasticmodels
AT vaughantim inferringepidemiologicaldynamicswithbayesiancoalescentinferencethemeritsofdeterministicandstochasticmodels
AT stadlertanja inferringepidemiologicaldynamicswithbayesiancoalescentinferencethemeritsofdeterministicandstochasticmodels
AT drummondalexeij inferringepidemiologicaldynamicswithbayesiancoalescentinferencethemeritsofdeterministicandstochasticmodels