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Bayesian Inference of Clonal Expansions in a Dated Phylogeny
Author(s) -
David Helekal,
Alice Ledda,
Erik Volz,
David Wyllie,
Xavier Didelot
Publication year - 2021
Publication title -
systematic biology
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 7.128
H-Index - 182
eISSN - 1076-836X
pISSN - 1063-5157
DOI - 10.1093/sysbio/syab095
Subject(s) - viral phylodynamics , biology , coalescent theory , phylogenetics , evolutionary biology , population , inference , phylogenetic tree , population genomics , bayesian probability , lineage (genetic) , approximate bayesian computation , population genetics , bayesian inference , phylogeography , effective population size , genomics , genetics , genome , statistics , genetic variation , artificial intelligence , computer science , gene , demography , mathematics , sociology
Microbial population genetics models often assume that all lineages are constrained by the same population size dynamics over time. However, many neutral and selective events can invalidate this assumption and can contribute to the clonal expansion of a specific lineage relative to the rest of the population. Such differential phylodynamic properties between lineages result in asymmetries and imbalances in phylogenetic trees that are sometimes described informally but which are difficult to analyze formally. To this end, we developed a model of how clonal expansions occur and affect the branching patterns of a phylogeny. We show how the parameters of this model can be inferred from a given dated phylogeny using Bayesian statistics, which allows us to assess the probability that one or more clonal expansion events occurred. For each putative clonal expansion event, we estimate its date of emergence and subsequent phylodynamic trajectory, including its long-term evolutionary potential which is important to determine how much effort should be placed on specific control measures. We demonstrate the applicability of our methodology on simulated and real data sets. Inference under our clonal expansion model can reveal important features in the evolution and epidemiology of infectious disease pathogens. [Clonal expansion; genomic epidemiology; microbial population genomics; phylodynamics.]

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