Computing the probability of gene trees concordant with the species tree in the multispecies coalescent
January 18, 2020 Β· Declared Dead Β· π Theoretical Population Biology
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Authors
Jakub Truszkowski, Celine Scornavacca, Fabio Pardi
arXiv ID
2001.06741
Category
q-bio.PE
Cross-listed
cs.DS
Citations
1
Venue
Theoretical Population Biology
Last Checked
3 months ago
Abstract
The multispecies coalescent process models the genealogical relationships of genes sampled from several species, enabling useful predictions about phenomena such as the discordance between the gene tree and the species phylogeny due to incomplete lineage sorting. Conversely, knowledge of large collections of gene trees can inform us about several aspects of the species phylogeny, such as its topology and ancestral population sizes. A fundamental open problem in this context is how to efficiently compute the probability of a gene tree topology, given the species phylogeny. Although a number of algorithms for this task have been proposed, they either produce approximate results, or, when they are exact, they do not scale to large data sets. In this paper, we present some progress towards exact and efficient computation of the probability of a gene tree topology. We provide a new algorithm that, given a species tree and the number of genes sampled for each species, calculates the probability that the gene tree topology will be concordant with the species tree. Moreover, we provide an algorithm that computes the probability of any specific gene tree topology concordant with the species tree. Both algorithms run in polynomial time and have been implemented in Python. Experiments show that they are able to analyse data sets where thousands of genes are sampled, in a matter of minutes to hours.
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