Inferring multiple consensus trees and supertrees using clustering: a review
Vladimir Makarenkov, Gayane S. Barseghyan, Nadia Tahiri

TL;DR
This review discusses methods for inferring multiple consensus trees and supertrees through clustering, addressing challenges posed by gene tree heterogeneity due to complex evolutionary events.
Contribution
It provides a comprehensive review of recent phylogenetic tree clustering methods, highlighting their mathematical properties, advantages, and limitations.
Findings
Clustering helps group gene trees with similar evolutionary patterns.
Multiple supertrees can better represent complex evolutionary histories.
The approach is applied to aaRS gene trees to illustrate its utility.
Abstract
Phylogenetic trees (i.e. evolutionary trees, additive trees or X-trees) play a key role in the processes of modeling and representing species evolution. Genome evolution of a given group of species is usually modeled by a species phylogenetic tree that represents the main patterns of vertical descent. However, the evolution of each gene is unique. It can be represented by its own gene tree which can differ substantially from a general species tree representation. Consensus trees and supertrees have been widely used in evolutionary studies to combine phylogenetic information contained in individual gene trees. Nevertheless, if the available gene trees are quite different from each other, then the resulting consensus tree or supertree can either include many unresolved subtrees corresponding to internal nodes of high degree or can simply be a star tree. This may happen if the available…
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Taxonomy
TopicsGenomics and Phylogenetic Studies · Bioinformatics and Genomic Networks · Genetic diversity and population structure
