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Predicting Phylogenetic Bootstrap Values via Machine Learning.

Authors :
Wiegert, Julius
Höhler, Dimitri
Haag, Julia
Stamatakis, Alexandros
Source :
Molecular Biology & Evolution; Oct2024, Vol. 41 Issue 10, p1-13, 13p
Publication Year :
2024

Abstract

Estimating the statistical robustness of the inferred tree(s) constitutes an integral part of most phylogenetic analyses. Commonly, one computes and assigns a branch support value to each inner branch of the inferred phylogeny. The still most widely used method for calculating branch support on trees inferred under maximum likelihood (ML) is the Standard, nonparametric Felsenstein bootstrap support (SBS). Due to the high computational cost of the SBS, a plethora of methods has been developed to approximate it, for instance, via the rapid bootstrap (RB) algorithm. There have also been attempts to devise faster, alternative support measures, such as the SH-aLRT (Shimodaira–Hasegawa-like approximate likelihood ratio test) or the UltraFast bootstrap 2 (UFBoot2) method. Those faster alternatives exhibit some limitations, such as the need to assess model violations (UFBoot2) or unstable behavior in the low support interval range (SH-aLRT). Here, we present the educated bootstrap guesser (EBG), a machine learning-based tool that predicts SBS branch support values for a given input phylogeny. EBG is on average 9.4 (⁠ σ = 5.5 ⁠) times faster than UFBoot2. EBG-based SBS estimates exhibit a median absolute error of 5 when predicting SBS values between 0 and 100. Furthermore, EBG also provides uncertainty measures for all per-branch SBS predictions and thereby allows for a more rigorous and careful interpretation. EBG can, for instance, predict SBS support values on a phylogeny comprising 1,654 SARS-CoV2 genome sequences within 3 h on a mid-class laptop. EBG is available under GNU GPL3. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
07374038
Volume :
41
Issue :
10
Database :
Complementary Index
Journal :
Molecular Biology & Evolution
Publication Type :
Academic Journal
Accession number :
180626064
Full Text :
https://doi.org/10.1093/molbev/msae215