| Literature DB >> 33005955 |
Marnus Stoltz1, Boris Baeumer1, Remco Bouckaert2, Colin Fox3, Gordon Hiscott1, David Bryant1.
Abstract
We describe a new and computationally efficient Bayesian methodology for inferring species trees and demographics from unlinked binary markers. Likelihood calculations are carried out using diffusion models of allele frequency dynamics combined with novel numerical algorithms. The diffusion approach allows for analysis of data sets containing hundreds or thousands of individuals. The method, which we call Snapper, has been implemented as part of the BEAST2 package. We conducted simulation experiments to assess numerical error, computational requirements, and accuracy recovering known model parameters. A reanalysis of soybean SNP data demonstrates that the models implemented in Snapp and Snapper can be difficult to distinguish in practice, a characteristic which we tested with further simulations. We demonstrate the scale of analysis possible using a SNP data set sampled from 399 fresh water turtles in 41 populations. [Bayesian inference; diffusion models; multi-species coalescent; SNP data; species trees; spectral methods.].Entities:
Year: 2021 PMID: 33005955 DOI: 10.1093/sysbio/syaa051
Source DB: PubMed Journal: Syst Biol ISSN: 1063-5157 Impact factor: 15.683