Geodesics to characterize the phylogenetic landscape.

PLoS One

Department of Scientific Computing, Florida State University, Tallahassee, FL, United States of America.

Published: June 2023

AI Article Synopsis

  • Phylogenetic trees help us understand evolutionary history, but finding the best trees is difficult due to the complexity of the likelihood landscape and vast tree space.
  • The authors developed a method to create intermediate trees (pathtrees) based on the Billera-Holmes-Vogtmann distance, which allows for better exploration and visualization of treespace between two main trees.
  • Their method was validated using datasets from primates and milksnakes, showing it not only identifies similar high-likelihood trees as other tools but also uncovers new trees that traditional methods might miss, establishing a useful complementary approach for evolutionary analysis.

Article Abstract

Phylogenetic trees are fundamental for understanding evolutionary history. However, finding maximum likelihood trees is challenging due to the complexity of the likelihood landscape and the size of tree space. Based on the Billera-Holmes-Vogtmann (BHV) distance between trees, we describe a method to generate intermediate trees on the shortest path between two trees, called pathtrees. These pathtrees give a structured way to generate and visualize part of treespace. They allow investigating intermediate regions between trees of interest, exploring locally optimal trees in topological clusters of treespace, and potentially finding trees of high likelihood unexplored by tree search algorithms. We compared our approach against other tree search tools (Paup*, RAxML, and RevBayes) using the highest likelihood trees and number of new topologies found, and validated the accuracy of the generated treespace. We assess our method using two datasets. The first consists of 23 primate species (CytB, 1141 bp), leading to well-resolved relationships. The second is a dataset of 182 milksnakes (CytB, 1117 bp), containing many similar sequences and complex relationships among individuals. Our method visualizes the treespace using log likelihood as a fitness function. It finds similarly optimal trees as heuristic methods and presents the likelihood landscape at different scales. It found relevant trees that were not found with MCMC methods. The validation measures indicated that our method performed well mapping treespace into lower dimensions. Our method complements heuristic search analyses, and the visualization allows the inspection of likelihood terraces and exploration of treespace areas not visited by heuristic searches.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10289362PMC
http://journals.plos.org/plosone/article?id=10.1371/journal.pone.0287350PLOS

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