Bayesian inference of infectious disease transmission from whole genome sequence data
Preprint
- 16 December 2013
- preprint
- Published by Cold Spring Harbor Laboratory in bioRxiv
- p. 001388
- https://doi.org/10.1101/001388
Abstract
Genomics is increasingly being used to investigate disease outbreaks, but an important question remains unanswered – how well do genomic data capture known transmission events, particularly for pathogens with long carriage periods or large within-host population sizes? Here we present a novel Bayesian approach to reconstruct densely-sampled outbreaks from genomic data whilst considering within-host diversity. We infer a time-labelled phylogeny using BEAST, then infer a transmission network via a Monte-Carlo Markov Chain. We find that under a realistic model of within-host evolution, reconstructions of simulated outbreaks contain substantial uncertainty even when genomic data reflect a high substitution rate. Reconstruction of a real-world tuberculosis outbreak displayed similar uncertainty, although the correct source case and several clusters of epidemiologically linked cases were identified. We conclude that genomics cannot wholly replace traditional epidemiology, but that Bayesian reconstructions derived from sequence data may form a useful starting point for a genomic epidemiology investigation.Keywords
All Related Versions
- Published version: Molecular Biology and Evolution, 31 (7), 1869.
This publication has 51 references indexed in Scilit:
- Whole-genome sequencing to delineate Mycobacterium tuberculosis outbreaks: a retrospective observational studyThe Lancet Infectious Diseases, 2013
- Whole-genome sequencing for analysis of an outbreak of meticillin-resistant Staphylococcus aureus: a descriptive studyPublished by Elsevier ,2012
- Parallel bacterial evolution within multiple patients identifies candidate pathogenicity genesNature Genetics, 2011
- Use of whole genome sequencing to estimate the mutation rate of Mycobacterium tuberculosis during latent infectionNature Genetics, 2011
- Epidemiological and clinical consequences of within-host evolutionTrends in Microbiology, 2011
- Reconstructing disease outbreaks from genetic data: a graph approachHeredity, 2010
- An Introduction to Stochastic Epidemic ModelsPublished by Springer Nature ,2008
- A tutorial introduction to Bayesian inference for stochastic epidemic models using Markov chain Monte Carlo methodsMathematical Biosciences, 2002
- The coalescentStochastic Processes and their Applications, 1982
- A general method for numerically simulating the stochastic time evolution of coupled chemical reactionsJournal of Computational Physics, 1976