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TreeTime: Maximum-likelihood phylodynamic analysis
Author(s) -
Pavel Sagulenko,
Vadim Puller,
Richard A. Neher
Publication year - 2017
Publication title -
virus evolution
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 2.231
H-Index - 23
ISSN - 2057-1577
DOI - 10.1093/ve/vex042
Subject(s) - viral phylodynamics , genome , python (programming language) , evolutionary biology , biology , effective population size , molecular clock , phylogenetic tree , demographic history , computational biology , phylogenetics , population , computer science , genetics , genetic variation , gene , demography , sociology , operating system
Mutations that accumulate in the genome of cells or viruses can be used to infer their evolutionary history. In the case of rapidly evolving organisms, genomes can reveal their detailed spatiotemporal spread. Such phylodynamic analyses are particularly useful to understand the epidemiology of rapidly evolving viral pathogens. As the number of genome sequences available for different pathogens has increased dramatically over the last years, phylodynamic analysis with traditional methods becomes challenging as these methods scale poorly with growing datasets. Here, we present TreeTime, a Python-based framework for phylodynamic analysis using an approximate Maximum Likelihood approach. TreeTime can estimate ancestral states, infer evolution models, reroot trees to maximize temporal signals, estimate molecular clock phylogenies and population size histories. The runtime of TreeTime scales linearly with dataset size.

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