Huelsenbeck J P, Bollback J P
Department of Biology, University of Rochester, Rochester, New York 14627, USA.
Syst Biol. 2001 Jun;50(3):351-66.
Several methods have been proposed to infer the states at the ancestral nodes on a phylogeny. These methods assume a specific tree and set of branch lengths when estimating the ancestral character state. Inferences of the ancestral states, then, are conditioned on the tree and branch lengths being true. We develop a hierarchical Bayes method for inferring the ancestral states on a tree. The method integrates over uncertainty in the tree, branch lengths, and substitution model parameters by using Markov chain Monte Carlo. We compare the hierarchical Bayes inferences of ancestral states with inferences of ancestral states made under the assumption that a specific tree is correct. We find that the methods are correlated, but that accommodating uncertainty in parameters of the phylogenetic model can make inferences of ancestral states even more uncertain than they would be in an empirical Bayes analysis.
已经提出了几种方法来推断系统发育树上祖先节点的状态。这些方法在估计祖先特征状态时假定了特定的树和一组分支长度。那么,祖先状态的推断是以树和分支长度为真为条件的。我们开发了一种用于推断树上祖先状态的分层贝叶斯方法。该方法通过使用马尔可夫链蒙特卡罗方法对树、分支长度和替换模型参数中的不确定性进行整合。我们将祖先状态的分层贝叶斯推断与在特定树正确的假设下进行的祖先状态推断进行了比较。我们发现这些方法是相关的,但考虑系统发育模型参数中的不确定性会使祖先状态的推断比经验贝叶斯分析中的推断更加不确定。