A Bayesian inference framework to reconstruct transmission trees using epidemiological and genetic data

Morelli, M.J., Thébaud, G., Chadœuf, J., King, D.P., Haydon, D.T. and Soubeyrand, S. (2012) A Bayesian inference framework to reconstruct transmission trees using epidemiological and genetic data. PLoS Computational Biology, 8(11), e1002768. (doi: 10.1371/journal.pcbi.1002768)

[img]
Preview
Text
76826.pdf - Published Version
Available under License Creative Commons Attribution.

535kB

Abstract

The accurate identification of the route of transmission taken by an infectious agent through a host population is critical to understanding its epidemiology and informing measures for its control. However, reconstruction of transmission routes during an epidemic is often an underdetermined problem: data about the location and timings of infections can be incomplete, inaccurate, and compatible with a large number of different transmission scenarios. For fast-evolving pathogens like RNA viruses, inference can be strengthened by using genetic data, nowadays easily and affordably generated. However, significant statistical challenges remain to be overcome in the full integration of these different data types if transmission trees are to be reliably estimated. We present here a framework leading to a bayesian inference scheme that combines genetic and epidemiological data, able to reconstruct most likely transmission patterns and infection dates. After testing our approach with simulated data, we apply the method to two UK epidemics of Foot-and-Mouth Disease Virus (FMDV): the 2007 outbreak, and a subset of the large 2001 epidemic. In the first case, we are able to confirm the role of a specific premise as the link between the two phases of the epidemics, while transmissions more densely clustered in space and time remain harder to resolve. When we consider data collected from the 2001 epidemic during a time of national emergency, our inference scheme robustly infers transmission chains, and uncovers the presence of undetected premises, thus providing a useful tool for epidemiological studies in real time. The generation of genetic data is becoming routine in epidemiological investigations, but the development of analytical tools maximizing the value of these data remains a priority. Our method, while applied here in the context of FMDV, is general and with slight modification can be used in any situation where both spatiotemporal and genetic data are available.

Item Type:Articles
Status:Published
Refereed:Yes
Glasgow Author(s) Enlighten ID:Haydon, Professor Daniel and Morelli, Dr Marco
Authors: Morelli, M.J., Thébaud, G., Chadœuf, J., King, D.P., Haydon, D.T., and Soubeyrand, S.
College/School:College of Medical Veterinary and Life Sciences > School of Biodiversity, One Health & Veterinary Medicine
Journal Name:PLoS Computational Biology
Publisher:Public Library of Science
ISSN:1553-734X
Copyright Holders:Copyright © 2012 The Authors
First Published:First published in PLoS Computational Biology 8(11):e1002768
Publisher Policy:Reproduced under a Creative Commons License

University Staff: Request a correction | Enlighten Editors: Update this record