Heled Joseph, Drummond Alexei J
Allan Wilson Centre for Molecular Ecology and Evolution, New Zealand; Department of Computer Science, The University of Auckland, Auckland, New Zealand
Allan Wilson Centre for Molecular Ecology and Evolution, New Zealand; Department of Computer Science, The University of Auckland, Auckland, New Zealand Allan Wilson Centre for Molecular Ecology and Evolution, New Zealand; Department of Computer Science, The University of Auckland, Auckland, New Zealand.
Syst Biol. 2015 May;64(3):369-83. doi: 10.1093/sysbio/syu089. Epub 2014 Nov 14.
Here we introduce a general class of multiple calibration birth-death tree priors for use in Bayesian phylogenetic inference. All tree priors in this class separate ancestral node heights into a set of "calibrated nodes" and "uncalibrated nodes" such that the marginal distribution of the calibrated nodes is user-specified whereas the density ratio of the birth-death prior is retained for trees with equal values for the calibrated nodes. We describe two formulations, one in which the calibration information informs the prior on ranked tree topologies, through the (conditional) prior, and the other which factorizes the prior on divergence times and ranked topologies, thus allowing uniform, or any arbitrary prior distribution on ranked topologies. Although the first of these formulations has some attractive properties, the algorithm we present for computing its prior density is computationally intensive. However, the second formulation is always faster and computationally efficient for up to six calibrations. We demonstrate the utility of the new class of multiple-calibration tree priors using both small simulations and a real-world analysis and compare the results to existing schemes. The two new calibrated tree priors described in this article offer greater flexibility and control of prior specification in calibrated time-tree inference and divergence time dating, and will remove the need for indirect approaches to the assessment of the combined effect of calibration densities and tree priors in Bayesian phylogenetic inference.
在此,我们介绍一类用于贝叶斯系统发育推断的多重校准生死树先验。该类中的所有树先验将祖先节点高度分为一组“校准节点”和“未校准节点”,使得校准节点的边际分布由用户指定,而对于校准节点具有相同值的树,生死先验的密度比得以保留。我们描述了两种形式,一种是校准信息通过(条件)先验影响树拓扑排序上的先验,另一种是将先验分解为分歧时间和树拓扑排序,从而允许在树拓扑排序上有均匀的或任何任意的先验分布。尽管这些形式中的第一种有一些吸引人的特性,但我们给出的用于计算其先验密度的算法计算量很大。然而,对于多达六个校准,第二种形式总是更快且计算效率更高。我们通过小型模拟和实际分析展示了新的多重校准树先验类的实用性,并将结果与现有方案进行比较。本文中描述的两种新的校准树先验在校准时间树推断和分歧时间定年中提供了更大的灵活性和对先验规范的控制,并且将不再需要在贝叶斯系统发育推断中采用间接方法来评估校准密度和树先验的综合效应。