2019
DOI: 10.1101/612945
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Estimating the Relative Probability of Direct Transmission between Infectious Disease Patients

Abstract: BackgroundEstimating infectious disease parameters such as the serial interval (time between symptom onset in primary and secondary cases) and reproductive number (average number of secondary cases produced by a primary case) are important to understand infectious disease dynamics. Many estimation methods require linking cases by direct transmission, a difficult task for most diseases. MethodsUsing a subset of cases with detailed genetic or contact investigation data to develop a training set of probable trans… Show more

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Cited by 5 publications
(9 citation statements)
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“…Exporting a simulated outbreak 6. This simulation protocol of TransPhylo is especially useful to simulate outbreaks and benchmark how accurate methods of inference (either Basic Protocol 3 of TransPhylo or some other method) are likely to be when applied to real datasets (Ness et al, 2019;Stimson et al, 2019;Walter et al, 2019). In this case, it is important to make sure that the parameters used for the simulation are realistic for the pathogen of interest in the real data.…”
Section: Simulation Of An Outbreakmentioning
confidence: 99%
“…Exporting a simulated outbreak 6. This simulation protocol of TransPhylo is especially useful to simulate outbreaks and benchmark how accurate methods of inference (either Basic Protocol 3 of TransPhylo or some other method) are likely to be when applied to real datasets (Ness et al, 2019;Stimson et al, 2019;Walter et al, 2019). In this case, it is important to make sure that the parameters used for the simulation are realistic for the pathogen of interest in the real data.…”
Section: Simulation Of An Outbreakmentioning
confidence: 99%
“…If the survey data is unavailable, using genomic data is a natural alternative. Genomic surveillance has been used to detect transmission clusters and to provide information on the possible source of individual cases [2631].…”
Section: Discussionmentioning
confidence: 99%
“…We assume we have WGS data for all cases and define pairs of close genetic relatedness as pairs that differ by fewer than two SNPs. 31,[37][38][39] In sensitivity analyses, we consider other thresholds: fewer than three, four, and five SNPs. For each outbreak, we estimate OR G and OR T with 95% confidence intervals from the contingency table using standard methods.…”
Section: Simulation Structurementioning
confidence: 99%
“…Recently, we developed a method that uses probable transmission events defined by WGS and/or contact investigations to estimate the transmission probability between cases using pair-level covariates. 31 The contribution of each covariate to the probabilities represents another proxy for the relationship between covariates and transmission, but one that accounts for the uncertainty of transmission defined by WGS and/or contact investigations using an iterative estimation process. Here, we use simulations to determine how similar the association between covariates and close genetic relatedness is to the true association with transmission.…”
mentioning
confidence: 99%