SCOTTI: efficient reconstruction of transmission within outbreaks with the structured coalescent
SCOTTI: efficient reconstruction of transmission within outbreaks with the structured coalescent
Exploiting pathogen genomes to reconstruct transmission represents a powerful tool in the fight against infectious disease. However, their interpretation rests on a number of simplifying assumptions that regularly ignore important complexities of real data, in particular within-host evolution and non-sampled patients. Here we propose a new approach to transmission inference called SCOTTI (Structured COalescent Transmission Tree Inference). This method is based on a statistical framework that models each host as a distinct population, and transmissions between hosts as migration events. Our computationally efficient implementation of this model enables the inference of host-to-host transmission while accommodating within-host evolution and non-sampled hosts. SCOTTI is distributed as an open source package for the phylogenetic software BEAST2. We show that SCOTTI can generally infer transmission events even in the presence of considerable within-host variation, can account for the uncertainty associated with the possible presence of non-sampled hosts, and can efficiently use data from multiple samples of the same host, although there is some reduction in accuracy when samples are collected very close to the infection time. We illustrate the features of our approach by investigating transmission from genetic and epidemiological data in a Foot and Mouth Disease Virus (FMDV) veterinary outbreak in England and a Klebsiella pneumoniae outbreak in a Nepali neonatal unit. Transmission histories inferred with SCOTTI will be important in devising effective measures to prevent and halt transmission.
De Maio, Nicola
d675e711-e9b1-4f7f-bc16-b67438373692
Wu, Chieh-Hsi
ace630c6-2095-4ade-b657-241692f6b4d3
Wilson, Daniel J.
4aa90f93-d50c-41e1-9988-35e445832ce0
2016
De Maio, Nicola
d675e711-e9b1-4f7f-bc16-b67438373692
Wu, Chieh-Hsi
ace630c6-2095-4ade-b657-241692f6b4d3
Wilson, Daniel J.
4aa90f93-d50c-41e1-9988-35e445832ce0
De Maio, Nicola, Wu, Chieh-Hsi and Wilson, Daniel J.
(2016)
SCOTTI: efficient reconstruction of transmission within outbreaks with the structured coalescent.
PLoS Computational Biology, 12 (9), [e1005130].
(doi:10.1371/journal.pcbi.1005130).
Abstract
Exploiting pathogen genomes to reconstruct transmission represents a powerful tool in the fight against infectious disease. However, their interpretation rests on a number of simplifying assumptions that regularly ignore important complexities of real data, in particular within-host evolution and non-sampled patients. Here we propose a new approach to transmission inference called SCOTTI (Structured COalescent Transmission Tree Inference). This method is based on a statistical framework that models each host as a distinct population, and transmissions between hosts as migration events. Our computationally efficient implementation of this model enables the inference of host-to-host transmission while accommodating within-host evolution and non-sampled hosts. SCOTTI is distributed as an open source package for the phylogenetic software BEAST2. We show that SCOTTI can generally infer transmission events even in the presence of considerable within-host variation, can account for the uncertainty associated with the possible presence of non-sampled hosts, and can efficiently use data from multiple samples of the same host, although there is some reduction in accuracy when samples are collected very close to the infection time. We illustrate the features of our approach by investigating transmission from genetic and epidemiological data in a Foot and Mouth Disease Virus (FMDV) veterinary outbreak in England and a Klebsiella pneumoniae outbreak in a Nepali neonatal unit. Transmission histories inferred with SCOTTI will be important in devising effective measures to prevent and halt transmission.
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journal.pcbi.1005130
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Accepted/In Press date: 5 September 2016
e-pub ahead of print date: 28 September 2016
Published date: 2016
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Local EPrints ID: 437901
URI: http://eprints.soton.ac.uk/id/eprint/437901
ISSN: 1553-734X
PURE UUID: e1ca0e45-8b53-4a6e-96fd-2c18a95ec274
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Date deposited: 24 Feb 2020 17:30
Last modified: 17 Mar 2024 04:00
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Author:
Nicola De Maio
Author:
Daniel J. Wilson
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