Downloads provided by UsageCountsApplicability of several rooted phylogenetic network algorithms for representing the evolutionary history of SARS-CoV-2
pmid: 34876022
pmc: PMC8649988
Applicability of several rooted phylogenetic network algorithms for representing the evolutionary history of SARS-CoV-2
Abstract Background Rooted phylogenetic networks are used to display complex evolutionary history involving so-called reticulation events, such as genetic recombination. Various methods have been developed to construct such networks, using for example a multiple sequence alignment or multiple phylogenetic trees as input data. Coronaviruses are known to recombine frequently, but rooted phylogenetic networks have not yet been used extensively to describe their evolutionary history. Here, we created a workflow to compare the evolutionary history of SARS-CoV-2 with other SARS-like viruses using several rooted phylogenetic network inference algorithms. This workflow includes filtering noise from sets of phylogenetic trees by contracting edges based on branch length and bootstrap support, followed by resolution of multifurcations. We explored the running times of the network inference algorithms, the impact of filtering on the properties of the produced networks, and attempted to derive biological insights regarding the evolution of SARS-CoV-2 from them. Results The network inference algorithms are capable of constructing rooted phylogenetic networks for coronavirus data, although running-time limitations require restricting such datasets to a relatively small number of taxa. Filtering generally reduces the number of reticulations in the produced networks and increases their temporal consistency. Taxon bat-SL-CoVZC45 emerges as a major and structural source of discordance in the dataset. The tested algorithms often indicate that SARS-CoV-2/RaTG13 is a tree-like clade, with possibly some reticulate activity further back in their history. A smaller number of constructed networks posit SARS-CoV-2 as a possible recombinant, although this might be a methodological artefact arising from the interaction of bat-SL-CoVZC45 discordance and the optimization criteria used. Conclusion Our results demonstrate that as part of a wider workflow and with careful attention paid to running time, rooted phylogenetic network algorithms are capable of producing plausible networks from coronavirus data. These networks partly corroborate existing theories about SARS-CoV-2, and partly produce new avenues for exploration regarding the location and significance of reticulate activity within the wider group of SARS-like viruses. Our workflow may serve as a model for pipelines in which phylogenetic network algorithms can be used to analyse different datasets and test different hypotheses.
- Vrije Universiteit Amsterdam Netherlands
- French Institute for Research in Computer Science and Automation France
- Technische Universiteit Delft
- Amsterdam University Medical Centers Netherlands
- Department of Mathematical Sciences Russian Federation
Evolution, RECOMBINATION, CORONAVIRUS, SDG 3 - Good Health and Well-being, Reticulate evolution, QH359-425, TOOL, Humans, QH540-549.5, Phylogeny, [INFO.INFO-BI] Computer Science [cs]/Bioinformatics [q-bio.QM], Phylogenetic network, IDENTIFICATION, Ecology, SARS-CoV-2, Research, COVID-19, 006, [SDV] Life Sciences [q-bio], Algorithm, Coronavirus, TREES, MOSAIC STRUCTURE, Algorithms
Evolution, RECOMBINATION, CORONAVIRUS, SDG 3 - Good Health and Well-being, Reticulate evolution, QH359-425, TOOL, Humans, QH540-549.5, Phylogeny, [INFO.INFO-BI] Computer Science [cs]/Bioinformatics [q-bio.QM], Phylogenetic network, IDENTIFICATION, Ecology, SARS-CoV-2, Research, COVID-19, 006, [SDV] Life Sciences [q-bio], Algorithm, Coronavirus, TREES, MOSAIC STRUCTURE, Algorithms
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