Authors
Sandra Álvarez-Carretero, Anjali Goswami, Ziheng Yang, Mario Dos Reis
Publication date
2019/2/28
Journal
Systematic biology
Volume
68
Issue
6
Pages
967-986
Publisher
Oxford University Press
Description
Discrete morphological data have been widely used to study species evolution, but the use of quantitative (or continuous) morphological characters is less common. Here, we implement a Bayesian method to estimate species divergence times using quantitative characters. Quantitative character evolution is modeled using Brownian diffusion with character correlation and character variation within populations. Through simulations, we demonstrate that ignoring the population variation (or population “noise”) and the correlation among characters leads to biased estimates of divergence times and rate, especially if the correlation and population noise are high. We apply our new method to the analysis of quantitative characters (cranium landmarks) and molecular data from carnivoran mammals. Our results show that time estimates are affected by whether the correlations and population noise are accounted for or …
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