2014
DOI: 10.1098/rspb.2013.3251
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A Bayesian approach for inferring the dynamics of partially observed endemic infectious diseases from space-time-genetic data

Abstract: We describe a statistical framework for reconstructing the sequence of transmission events between observed cases of an endemic infectious disease using genetic, temporal and spatial information. Previous approaches to reconstructing transmission trees have assumed all infections in the study area originated from a single introduction and that a large fraction of cases were observed. There are as yet no approaches appropriate for endemic situations in which a disease is already well established in a host popul… Show more

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Cited by 77 publications
(115 citation statements)
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References 32 publications
(42 reference statements)
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“…These approaches consist of fitting epidemiological and microevolutionary models to spatiotemporal data on infected hosts and to the genetic sequence data of the pathogen (19,88,149). Up to now, these approaches have been applied only to diseases infecting mammals, but they could be advantageously transferred to sharka and other viral diseases of plants, especially to improve knowledge of dispersal function and latency duration in agricultural contexts.…”
Section: Estimating Parameters and Riskmentioning
confidence: 98%
“…These approaches consist of fitting epidemiological and microevolutionary models to spatiotemporal data on infected hosts and to the genetic sequence data of the pathogen (19,88,149). Up to now, these approaches have been applied only to diseases infecting mammals, but they could be advantageously transferred to sharka and other viral diseases of plants, especially to improve knowledge of dispersal function and latency duration in agricultural contexts.…”
Section: Estimating Parameters and Riskmentioning
confidence: 98%
“…The greater propensity for transmission between farms in spatial proximity can be accounted for by an additional term in the likelihood function that penalizes distant transmission events [20,71]. Analysing such space-time-genetic data is also possible in endemic regions where only a fraction of incident cases are observed and multiple introductions of the pathogen might have occurred [72]. Additional epidemiological information is sometimes available at the individual host level, further constraining the set of transmission trees that are consistent with the data.…”
Section: Highlightsmentioning
confidence: 99%
“…The lack of comprehensive genetic datasets from actual outbreaks has not hindered development of these methods, however, as many of the most recently-published papers on this subject have concentrated on endemic disease (8, 9). This is an important development for epidemic analysis as well, because the testing of methods on real data of any sort is essential if inference is to be relied upon in an emergency situation, and because the problems involved in applying such procedures to endemic pathogens where the infected population is not well revealed are similar to those involved in handling epidemic sampling which is less than comprehensive.…”
Section: Discussionmentioning
confidence: 99%
“…As with Cottam et al, they were working on the 2001 FMDV outbreak and were able to include farm locations in the analysis. The work was extended by Mollentze et al (8), working instead on rabies samples from South Africa; this second paper extended the procedure to a situation of less consistent sampling by, as with outbreaker , allowing for multiple introductions to a study population and for the path of infection between two sampled individuals to pass through unsampled ones, although unlike outbreaker the procedure only indicates the presence of such indirect infections and does not enumerate them.…”
Section: Within-host Mutationmentioning
confidence: 99%
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