AI Article Synopsis

  • A new phylogenetic method utilizing repeat sequence similarity matrices can effectively trace evolutionary relationships in plants and animals.
  • This technique involves processing data from RepeatExplorer 2 to create distance matrices and develop neighbour-joining trees, ultimately forming a consensus network.
  • Testing on angiosperms and insects showed results consistent with established DNA-based methods, suggesting this approach enhances our understanding of genome evolution.

Article Abstract

A recent phylogenetic method based on genome-wide abundance of different repeat types proved to be useful in reconstructing the evolutionary history of several plant and animal groups. Here, we demonstrate that an alternative information source from the repeatome can also be employed to infer phylogenetic relationships among taxa. Specifically, this novel approach makes use of the repeat sequence similarity matrices obtained from the comparative clustering analyses of RepeatExplorer 2, which are subsequently transformed to between-taxa distance matrices. These pairwise matrices are used to construct neighbour-joining trees for each of the top most-abundant clusters and they are finally summarized in a consensus network. This methodology was tested on three groups of angiosperms and one group of insects, resulting in congruent evolutionary hypotheses compared to more standard systematic analyses based on commonly used DNA markers. We propose that the combined application of these phylogenetic approaches based on repeat abundances and repeat sequence similarities could be helpful to understand mechanisms governing genome and repeatome evolution.

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Source
http://dx.doi.org/10.1016/j.ympev.2020.106766DOI Listing

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