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Designing Weights for Quartet-Based Methods When Data are Heterogeneous Across Lineages.

Marta Casanellas1, Jesús Fernández-Sánchez2, Marina Garrote-López3

  • 1Institut de Matematiques de la UPC-BarcelonaTech (IMTech), Universitat Politècnica de Catalunya and Centre de Recerca Matemàtica, Av. Diagonal 647, 08028, Barcelona, Spain. marta.casanellas@upc.edu.

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|June 13, 2023
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Summary
This summary is machine-generated.

This study introduces ASAQ weights for phylogenetic reconstruction, improving accuracy with heterogeneous evolutionary rates. Weight optimization with ASAQ weights outperforms global methods, especially with long branches.

Keywords:
Algebraic methods for topology reconstructionGeneral Markov modelHeterogeneity across lineagesParalinear methodQuartet-based methods

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Area of Science:

  • Phylogenetics
  • Computational Biology
  • Evolutionary Biology

Background:

  • Phylogenetic methods often assume homogeneous nucleotide substitution rates across lineages.
  • Heterogeneity in evolutionary rates across lineages is common but challenging for many phylogenetic methods.
  • Algebraic methods offer robust tools for handling rate heterogeneity in sequence evolution.

Purpose of the Study:

  • To introduce a novel weighting system for quartets, Algebraic and Semi-Algebraic Quartet weighting (ASAQ), designed for data with heterogeneous evolutionary rates.
  • To evaluate and compare the performance of various quartet-based phylogenetic reconstruction methods using different weighting systems, including ASAQ.
  • To assess the effectiveness of weight optimization with ASAQ weights against established phylogenetic reconstruction techniques.

Main Methods:

  • Development of the ASAQ weighting system using algebraic and semi-algebraic tools.
  • Integration of ASAQ weights with existing quartet-based methods like Quartet Фіle Method (QFM), weighted QFM (wQFM), quartet puzzling, weight optimization, and Willson's method.
  • Comparative analysis using simulated and real biological sequence data, considering factors like branch length and base composition heterogeneity.

Main Results:

  • The ASAQ weighting system is statistically consistent under the general Markov model and accounts for rate and base composition heterogeneity.
  • ASAQ weights, when combined with weight optimization, demonstrate superior phylogenetic tree reconstruction accuracy compared to global methods.
  • The proposed method shows significant improvements, particularly when dealing with datasets featuring long branches or mixed evolutionary rate distributions.

Conclusions:

  • ASAQ weights provide a statistically sound and effective approach for phylogenetic reconstruction with heterogeneous evolutionary rates.
  • Weight optimization combined with ASAQ weights represents a reliable and accurate method for inferring evolutionary history.
  • This approach enhances the accuracy of phylogenetic tree inference, offering a valuable tool for evolutionary studies.